Automatic Identification of Instrument Type in Music Signal using Wavelet and MFCC

Size: px
Start display at page:

Download "Automatic Identification of Instrument Type in Music Signal using Wavelet and MFCC"

Transcription

1 Automatic Identification of Instrument Type in Music Signal using Wavelet and MFCC Arijit Ghosal, Rudrasis Chakraborty, Bibhas Chandra Dhara +, and Sanjoy Kumar Saha! * CSE Dept., Institute of Technology and Marine Engg. 24 Parganas (South), West Bengal, India ghosal.arijit@yahoo.com - Indian Statistical Institute, Kolkata, India rudrasischa@gmail.com + IT Dept., Jadavpur University, Kolkata, India bcdhara@gmail.com! CSE Dept., Jadavpur University, Kolkata, India sks_ju@yahoo.co.in Abstract. In this work, we have presented a simple but novel scheme for automatic identification of instrument type present in the music signal. A hierarchical approach has been devised by observing the characteristics of different types of instruments. Accordingly, suitable features are deployed at different stages. In the first stage, wavelet based features are used to subdivide the instruments into two groups which are then classified using MFCC based features at second stage. RANSAC has been used to classify the data. Thus, a system has been proposed which unlike the previous system relies on very low dimensional feature. Key words: Audio Classification, Instrument Identification, MFCC, Music Retrieval, RANSAC, Wavelet Feature 1 Introduction An efficient audio classification system can serve as the foundation for various applications like audio indexing, content based audio retrieval, music genre classification. In the context of a music retrieval system, at first level it is necessary to classify them as music without voice i.e. instrumental and music with voice i.e. song. A few works [1, 2] have been reported in this direction. At subsequent stages further sub-classification can be carried out. Automatic recognition of instrument or its type like string, woodwind, keyboard is an important issue in dealing with instrument signals. In several works like [3], isolated musical notes have been considered as input to the system. But, in the signal arising out of a performance, the notes are not separated [4]. On the other hand recognition of musical instruments in a polyphonic, multi-instrumental music is a difficult challenge and a successful recognition system for a single instrument music may help in addressing the case [4].

2 2 Lecture Notes in Computer Science: Ghosal, Chakraborty, Dhara, Saha A comprehensive study made by Deng [5] indicates that a wide variety of features and classification schemes have been reported by the researchers. Mel Frequency Cepstral Coefficient(MFCC) have been used in different manner in number of systems. Brown et al. [7] have relied on MFCC, spectral centroid, auto correlation coefficients and adopted Bayes decision rules for classification. Agostini et al. [8] have dealt with timbre classification based on spectral features. A set of 62-dimensional temporal, spectral, harmonic and perceptual features is used by Livshin et al. [4] and k-nn classification is tried for recognition. Kaminskyj et al. [9] have initially considered 710 features including MFCC, rms, spectral centroid, amplitude envelope and dimensionality is reduced by performing PCA. Finally, k-nn classifier is used. The branch and bound search technique and non negative matrix factorization have been tried by Benetos et al. [6] respectively for feature selection and classification. Past study reveals that different schemes have tried with various combination of the features with high dimensionality and classification techniques. Still the task of instrument recognition system, even for single instrument signal, is an open issue. In this work, we have classified instrumental signal based on the instrument type. The paper is organized as follows. The brief introduction is followed by the description of proposed methodology in section 2. Experimental result and concluding remarks are put in section 3 and 4 respectively. 2 Proposed Methodology The proposed scheme deals with recorded signals of single instrument. A hierarchical framework is presented to classify the signal according to the type of instrument used in generating the music. Instruments are commonly categorized as String (Violin, Guitar etc.), Woodwind (Flute, Saxophone etc.), Percussion (Drum, Tabla etc.) and Keyboard (Piano, Organ etc.). Sound produced by different instruments bear different acoustics. Sound envelopes produced by a note may reflect signature of the instrument. Shape of the envelope is determined by the variation in sound level of the note and represents the timbral characteristics. The envelope includes attack i.e. time from silence to peak, sustain ı.e. time length for which the amplitude level is maintained and decay i.e. time the sound fades to silence. As in a continuous signal, it is difficult to isolate a note, a higher level features are designed that can exploit the underlying characteristics. In our effort, we try to deal with small number of features and rely on the basic perception of the sound generated by the instruments. As we perceive, sound generated by a string or percussion instrument persists longer till it gradually fades away completely and it is not so for a conventional keyboard or woodwind type instrument. This observation has motivated us to classify the signals into two groups at first stage. The first group consists of keyboard and woodwind whereas the second group consists of string and percussion. At subsequent level, we take up the task of classifying the individual groups. In the following subsections we discuss about the features and classification technique that we have used.

3 Lecture Notes in Computer Science: Identification of Instrument Type Extraction of Features At the first level of classification we have opted for features that can reflect the difference in the sound envelope of the two groups of instruments as discussed earlier. Basically, the envelope is formed by the variation in amplitude. It has motivated us to look for wavelet based feature. Audio signal is decomposed Fig. 1. Schematic Diagram for Wavelet Decomposition following Haar Wavelet transform [10]. As it has been shown in Fig. 1, a signal is first decomposed in low (L 1 ) and High (H 1 ) bands. Low band is successively decomposed giving rise to L 2 and H 2 and so on. In general, high band contains the variation details at each level. Wavelet decomposed signals (after 3rd level of decomposition) for different types of instruments have been shown in Fig. 2. Sustain phase of audio envelope is mostly reflected in low band. On the other hand, amplitude variation during attack and decay have substantial impact on the high bands. A fast attack or decay will give rise to sharp change in amplitude in the high band and a steady rise or fall is reflected by uniform amplitude in high bands. As it appears in Fig. 2, the high bands show discriminating characteristics for the two group of instruments. There is a uniform variation of amplitudes for the first group of instruments. On the other hand, for the second group a noticeable phase of uniform amplitude without much variation is reflected. (a) Signal of Keyboard, Woodwind, String and Percussion (b) Signal after wavelet decomposition of corresponding signal shown in (a) Fig. 2. Signal of different instruments and corresponding signal after wavelet decomposition

4 4 Lecture Notes in Computer Science: Ghosal, Chakraborty, Dhara, Saha Features are computed based on short time energy (STE) for the decomposed signals in H 1, H 2, H 3 and L 3 bands. For each band, signal is first divided into frames consisting of 400 samples. For each frame, short time energy (STE) is computed. Finally, the average and standard deviation of STE of all frames in the band are taken to form 8-dimensional feature. (a) (b) (c) (d) Fig. 3. MFCC plots for different instrument signal shown in Fig. 2: (a) Keyboard, (b) Woodwind, (c) String and (d) Percussion For the second stage, in order to discriminate the instrument types within the groups, we have considered Mel Frequency Cepstral Co-efficients (MFCC) as the features. As the instruments within each group differs in terms of distribution of spectral power, we have considered 13-dimensional MFCC features. The steps for computing the features are same as elaborated in [11]. Features are obtained by taking the average of first 13 co-efficients obtained for each frame. The plot of MFCC co-efficients for different signals have been shown in Fig. 3. It clearly shows that the plots for a keyboard and woodwind are quite distinctive and same is also observed for a string and percussion instrument. 2.2 Classification The variety in the audio database under consideration makes the task of classification critical. The variation even within a class poses problem for NN based classification. For SVM, the tuning of parameters for optimal performance is very critical. It has motivated us to look for a robust estimator capable of handling the diversity of data and can model the data satisfactorily. RANdom Sample And Consensus (RANSAC) appears as a suitable alternative to fulfill the requirement. RANSAC [12] is an iterative method to estimate the parameters of a certain model from a set of data contaminated by large number of outliers. The major strength of RANSAC over other estimators lies in the fact that the estimation is made based on inliers i.e. whose distribution can be explained by a set of model parameters. It can produce reasonably good model provided a data set contains a sizable amount of inliers. It may be noted that RANSAC can work satisfactorily even with outliers amounting to 50% of entire data set [13]. Classically, RANSAC is an estimator for the parameters of a model from a given data set. In this work, the evolved model has been used for classification.

5 Lecture Notes in Computer Science: Identification of Instrument Type 5 3 Experimental Result In order to carry out the experiment, we have prepared a database consisting of 334 instrumental files. 86 files corresponds to different keyboard instruments like piano, organ. 82 files corresponds to woodwind instrument like flute, saxophone. String instrument like guitar, violin, sitar contribute 84 files and remaining 82 files represent percussion instruments like drum, tabla. The database thus reflects appreciable variety in each class of instrument. Each file has the audio of around seconds duration. Sampling frequency for the data is Hz. Samples are of 16-bits and of type mono. Table 1. Classification Accuracy (in %) at First Stage Classific. Keyboard String Scheme and and Woodwind Percussion MLP SVM RANSAC Table 2. Classification Accuracy (in %) at Second Stage Classific. Keyboard Woodwind String Percussion Scheme MLP SVM RANSAC Table 1 and 2 show the performance of the proposed scheme at two stages. We have used 50% data of each class as training set and remaining data for testing. Experiment is once again repeated by reversing the training and test set. Average accuracy has been shown in the tables. For MLP, there are 8 and 13 nodes in the input layers at first and second stage respectively. Number of output nodes is 2. we have considered single hidden layer with 6 and 8 internal nodes at first and second stage respectively. For SVM we have considered RBF kernel. Tables clearly show that performance of RANSAC based classification (with default parameter setting) is better.

6 6 Lecture Notes in Computer Science: Ghosal, Chakraborty, Dhara, Saha 4 Conclusion We have presented a hierarchical scheme for automatic identification of instrument type in a music signal. Unlike other systems, proposed system works with features which are simple and of very low dimension. Wavelet based features categorizes the instruments in two groups and finally, MFCC based features classify the individual instrument classes in each group. RANSAC has been utilized as a classification tool which is quite robust in handling the variety of data. Experimental result also indicates the effectiveness of this simple but novel scheme. Acknowledgment The work is partially supported by the facilities created under DST-PURSE program in Computer Science and Engineering Department of Jadavpur University. References 1. Zhang, T., Kuo, C.C.J.: Content-based Audio Classification and Retrieval for Audiovisual Data Parsing. Kluwer Academic (2001) 2. Ghosal, A., Chakraborty, R., Dhara, B.C., Saha, S.K.: Instrumental/song classification of music signal using ransac. In: 3 rd Intl. Conf. on Electronic Computer Technology, India, IEEE CS Press (2011) 3. Herrera, P., Peeters, G., Dubnov, S.: Automatic classification of musical instrument sounds. New Music Research (2000) 4. Livshin, A.A., Rodet, X.: Musical instrument identification in continuous recordings. In: Intl. Conf. Digital Audio Effects. (2004) Deng, J.D., Simmermacher, C., Cranefield, S.: A study on feature analysis for musical instrument classification. IEEE Trans. on System, Man and Cybernatics Part B 38 (2008) Kotti, E.B.M., Kotropoulos, C.: Musical instrument classification using nonnegative matrix factorization algorithms and subset feature selection. In: ICASSP. (2006) 7. Brown, J.C., Houix, O., McAdams, S.: Feature dependence in the automatic identification of musical woodwind instruments. Journal of Acoustic Soc. America 109 (2001) Agostini, G., Longari, M., Poolastri, E.: Musical instrument timbres classification with spectral features. EURASIP Journal Appl. Signal Process. (2003) Kaminskyj, L., Czaszejko, T.: Automatic recognition of isolated monophonic musical instrument using knnc. J. Intell. Inf. Syst. 24 (2005) Gonzalez, C.R., Woods, E.R.: Digital Image Processing (3rd Edition). Prentice- Hall Inc., NJ, USA (2006) 11. Rabiner, L.R., Juang, B.H.: Fundamentals of Speech Recoognition. Prentice-Hall (1993) 12. Fischler, M.A., Bolles, R.C.: Random sample consensus: A paradigm for model for model fitting with applications to image analysis and automated cartography. ACM Communications 24 (1981) Zuliani, M., Kenney, C.S., Manjunath, B.S.: The multiransac algorithm and its application to detect planar homographies. In: IEEE Conf. on Image Processing. (2005)

MUSICAL INSTRUMENT RECOGNITION WITH WAVELET ENVELOPES

MUSICAL INSTRUMENT RECOGNITION WITH WAVELET ENVELOPES MUSICAL INSTRUMENT RECOGNITION WITH WAVELET ENVELOPES PACS: 43.60.Lq Hacihabiboglu, Huseyin 1,2 ; Canagarajah C. Nishan 2 1 Sonic Arts Research Centre (SARC) School of Computer Science Queen s University

More information

Topics in Computer Music Instrument Identification. Ioanna Karydi

Topics in Computer Music Instrument Identification. Ioanna Karydi Topics in Computer Music Instrument Identification Ioanna Karydi Presentation overview What is instrument identification? Sound attributes & Timbre Human performance The ideal algorithm Selected approaches

More information

Instrument Recognition in Polyphonic Mixtures Using Spectral Envelopes

Instrument Recognition in Polyphonic Mixtures Using Spectral Envelopes Instrument Recognition in Polyphonic Mixtures Using Spectral Envelopes hello Jay Biernat Third author University of Rochester University of Rochester Affiliation3 words jbiernat@ur.rochester.edu author3@ismir.edu

More information

MUSICAL INSTRUMENT IDENTIFICATION BASED ON HARMONIC TEMPORAL TIMBRE FEATURES

MUSICAL INSTRUMENT IDENTIFICATION BASED ON HARMONIC TEMPORAL TIMBRE FEATURES MUSICAL INSTRUMENT IDENTIFICATION BASED ON HARMONIC TEMPORAL TIMBRE FEATURES Jun Wu, Yu Kitano, Stanislaw Andrzej Raczynski, Shigeki Miyabe, Takuya Nishimoto, Nobutaka Ono and Shigeki Sagayama The Graduate

More information

A Study on Feature Analysis for Musical Instrument Classification

A Study on Feature Analysis for Musical Instrument Classification A Study on Feature Analysis for Musical Instrument Classification Da Deng Christian Simmermacher Stephen Cranefield The Information Science Discussion Paper Series Number 2007/04 August 2007 ISSN 1177-455X

More information

Musical Instrument Identification Using Principal Component Analysis and Multi-Layered Perceptrons

Musical Instrument Identification Using Principal Component Analysis and Multi-Layered Perceptrons Musical Instrument Identification Using Principal Component Analysis and Multi-Layered Perceptrons Róisín Loughran roisin.loughran@ul.ie Jacqueline Walker jacqueline.walker@ul.ie Michael O Neill University

More information

Classification of Musical Instruments sounds by Using MFCC and Timbral Audio Descriptors

Classification of Musical Instruments sounds by Using MFCC and Timbral Audio Descriptors Classification of Musical Instruments sounds by Using MFCC and Timbral Audio Descriptors Priyanka S. Jadhav M.E. (Computer Engineering) G. H. Raisoni College of Engg. & Mgmt. Wagholi, Pune, India E-mail:

More information

International Journal of Advance Engineering and Research Development MUSICAL INSTRUMENT IDENTIFICATION AND STATUS FINDING WITH MFCC

International Journal of Advance Engineering and Research Development MUSICAL INSTRUMENT IDENTIFICATION AND STATUS FINDING WITH MFCC Scientific Journal of Impact Factor (SJIF): 5.71 International Journal of Advance Engineering and Research Development Volume 5, Issue 04, April -2018 e-issn (O): 2348-4470 p-issn (P): 2348-6406 MUSICAL

More information

MUSICAL NOTE AND INSTRUMENT CLASSIFICATION WITH LIKELIHOOD-FREQUENCY-TIME ANALYSIS AND SUPPORT VECTOR MACHINES

MUSICAL NOTE AND INSTRUMENT CLASSIFICATION WITH LIKELIHOOD-FREQUENCY-TIME ANALYSIS AND SUPPORT VECTOR MACHINES MUSICAL NOTE AND INSTRUMENT CLASSIFICATION WITH LIKELIHOOD-FREQUENCY-TIME ANALYSIS AND SUPPORT VECTOR MACHINES Mehmet Erdal Özbek 1, Claude Delpha 2, and Pierre Duhamel 2 1 Dept. of Electrical and Electronics

More information

MUSICAL INSTRUMENT RECOGNITION USING BIOLOGICALLY INSPIRED FILTERING OF TEMPORAL DICTIONARY ATOMS

MUSICAL INSTRUMENT RECOGNITION USING BIOLOGICALLY INSPIRED FILTERING OF TEMPORAL DICTIONARY ATOMS MUSICAL INSTRUMENT RECOGNITION USING BIOLOGICALLY INSPIRED FILTERING OF TEMPORAL DICTIONARY ATOMS Steven K. Tjoa and K. J. Ray Liu Signals and Information Group, Department of Electrical and Computer Engineering

More information

INTER GENRE SIMILARITY MODELLING FOR AUTOMATIC MUSIC GENRE CLASSIFICATION

INTER GENRE SIMILARITY MODELLING FOR AUTOMATIC MUSIC GENRE CLASSIFICATION INTER GENRE SIMILARITY MODELLING FOR AUTOMATIC MUSIC GENRE CLASSIFICATION ULAŞ BAĞCI AND ENGIN ERZIN arxiv:0907.3220v1 [cs.sd] 18 Jul 2009 ABSTRACT. Music genre classification is an essential tool for

More information

19 th INTERNATIONAL CONGRESS ON ACOUSTICS MADRID, 2-7 SEPTEMBER 2007

19 th INTERNATIONAL CONGRESS ON ACOUSTICS MADRID, 2-7 SEPTEMBER 2007 19 th INTERNATIONAL CONGRESS ON ACOUSTICS MADRID, 2-7 SEPTEMBER 2007 AN HMM BASED INVESTIGATION OF DIFFERENCES BETWEEN MUSICAL INSTRUMENTS OF THE SAME TYPE PACS: 43.75.-z Eichner, Matthias; Wolff, Matthias;

More information

Musical Instrument Identification based on F0-dependent Multivariate Normal Distribution

Musical Instrument Identification based on F0-dependent Multivariate Normal Distribution Musical Instrument Identification based on F0-dependent Multivariate Normal Distribution Tetsuro Kitahara* Masataka Goto** Hiroshi G. Okuno* *Grad. Sch l of Informatics, Kyoto Univ. **PRESTO JST / Nat

More information

Musical instrument identification in continuous recordings

Musical instrument identification in continuous recordings Musical instrument identification in continuous recordings Arie Livshin, Xavier Rodet To cite this version: Arie Livshin, Xavier Rodet. Musical instrument identification in continuous recordings. Digital

More information

Automatic Rhythmic Notation from Single Voice Audio Sources

Automatic Rhythmic Notation from Single Voice Audio Sources Automatic Rhythmic Notation from Single Voice Audio Sources Jack O Reilly, Shashwat Udit Introduction In this project we used machine learning technique to make estimations of rhythmic notation of a sung

More information

Supervised Learning in Genre Classification

Supervised Learning in Genre Classification Supervised Learning in Genre Classification Introduction & Motivation Mohit Rajani and Luke Ekkizogloy {i.mohit,luke.ekkizogloy}@gmail.com Stanford University, CS229: Machine Learning, 2009 Now that music

More information

POLYPHONIC INSTRUMENT RECOGNITION USING SPECTRAL CLUSTERING

POLYPHONIC INSTRUMENT RECOGNITION USING SPECTRAL CLUSTERING POLYPHONIC INSTRUMENT RECOGNITION USING SPECTRAL CLUSTERING Luis Gustavo Martins Telecommunications and Multimedia Unit INESC Porto Porto, Portugal lmartins@inescporto.pt Juan José Burred Communication

More information

A FUNCTIONAL CLASSIFICATION OF ONE INSTRUMENT S TIMBRES

A FUNCTIONAL CLASSIFICATION OF ONE INSTRUMENT S TIMBRES A FUNCTIONAL CLASSIFICATION OF ONE INSTRUMENT S TIMBRES Panayiotis Kokoras School of Music Studies Aristotle University of Thessaloniki email@panayiotiskokoras.com Abstract. This article proposes a theoretical

More information

Neural Network for Music Instrument Identi cation

Neural Network for Music Instrument Identi cation Neural Network for Music Instrument Identi cation Zhiwen Zhang(MSE), Hanze Tu(CCRMA), Yuan Li(CCRMA) SUN ID: zhiwen, hanze, yuanli92 Abstract - In the context of music, instrument identi cation would contribute

More information

Automatic Labelling of tabla signals

Automatic Labelling of tabla signals ISMIR 2003 Oct. 27th 30th 2003 Baltimore (USA) Automatic Labelling of tabla signals Olivier K. GILLET, Gaël RICHARD Introduction Exponential growth of available digital information need for Indexing and

More information

WE ADDRESS the development of a novel computational

WE ADDRESS the development of a novel computational IEEE TRANSACTIONS ON AUDIO, SPEECH, AND LANGUAGE PROCESSING, VOL. 18, NO. 3, MARCH 2010 663 Dynamic Spectral Envelope Modeling for Timbre Analysis of Musical Instrument Sounds Juan José Burred, Member,

More information

Automatic Commercial Monitoring for TV Broadcasting Using Audio Fingerprinting

Automatic Commercial Monitoring for TV Broadcasting Using Audio Fingerprinting Automatic Commercial Monitoring for TV Broadcasting Using Audio Fingerprinting Dalwon Jang 1, Seungjae Lee 2, Jun Seok Lee 2, Minho Jin 1, Jin S. Seo 2, Sunil Lee 1 and Chang D. Yoo 1 1 Korea Advanced

More information

Automatic Extraction of Popular Music Ringtones Based on Music Structure Analysis

Automatic Extraction of Popular Music Ringtones Based on Music Structure Analysis Automatic Extraction of Popular Music Ringtones Based on Music Structure Analysis Fengyan Wu fengyanyy@163.com Shutao Sun stsun@cuc.edu.cn Weiyao Xue Wyxue_std@163.com Abstract Automatic extraction of

More information

LEARNING SPECTRAL FILTERS FOR SINGLE- AND MULTI-LABEL CLASSIFICATION OF MUSICAL INSTRUMENTS. Patrick Joseph Donnelly

LEARNING SPECTRAL FILTERS FOR SINGLE- AND MULTI-LABEL CLASSIFICATION OF MUSICAL INSTRUMENTS. Patrick Joseph Donnelly LEARNING SPECTRAL FILTERS FOR SINGLE- AND MULTI-LABEL CLASSIFICATION OF MUSICAL INSTRUMENTS by Patrick Joseph Donnelly A dissertation submitted in partial fulfillment of the requirements for the degree

More information

Classification of Timbre Similarity

Classification of Timbre Similarity Classification of Timbre Similarity Corey Kereliuk McGill University March 15, 2007 1 / 16 1 Definition of Timbre What Timbre is Not What Timbre is A 2-dimensional Timbre Space 2 3 Considerations Common

More information

Keywords Separation of sound, percussive instruments, non-percussive instruments, flexible audio source separation toolbox

Keywords Separation of sound, percussive instruments, non-percussive instruments, flexible audio source separation toolbox Volume 4, Issue 4, April 2014 ISSN: 2277 128X International Journal of Advanced Research in Computer Science and Software Engineering Research Paper Available online at: www.ijarcsse.com Investigation

More information

Automatic Music Clustering using Audio Attributes

Automatic Music Clustering using Audio Attributes Automatic Music Clustering using Audio Attributes Abhishek Sen BTech (Electronics) Veermata Jijabai Technological Institute (VJTI), Mumbai, India abhishekpsen@gmail.com Abstract Music brings people together,

More information

MUSI-6201 Computational Music Analysis

MUSI-6201 Computational Music Analysis MUSI-6201 Computational Music Analysis Part 9.1: Genre Classification alexander lerch November 4, 2015 temporal analysis overview text book Chapter 8: Musical Genre, Similarity, and Mood (pp. 151 155)

More information

POST-PROCESSING FIDDLE : A REAL-TIME MULTI-PITCH TRACKING TECHNIQUE USING HARMONIC PARTIAL SUBTRACTION FOR USE WITHIN LIVE PERFORMANCE SYSTEMS

POST-PROCESSING FIDDLE : A REAL-TIME MULTI-PITCH TRACKING TECHNIQUE USING HARMONIC PARTIAL SUBTRACTION FOR USE WITHIN LIVE PERFORMANCE SYSTEMS POST-PROCESSING FIDDLE : A REAL-TIME MULTI-PITCH TRACKING TECHNIQUE USING HARMONIC PARTIAL SUBTRACTION FOR USE WITHIN LIVE PERFORMANCE SYSTEMS Andrew N. Robertson, Mark D. Plumbley Centre for Digital Music

More information

Drum Sound Identification for Polyphonic Music Using Template Adaptation and Matching Methods

Drum Sound Identification for Polyphonic Music Using Template Adaptation and Matching Methods Drum Sound Identification for Polyphonic Music Using Template Adaptation and Matching Methods Kazuyoshi Yoshii, Masataka Goto and Hiroshi G. Okuno Department of Intelligence Science and Technology National

More information

Reducing False Positives in Video Shot Detection

Reducing False Positives in Video Shot Detection Reducing False Positives in Video Shot Detection Nithya Manickam Computer Science & Engineering Department Indian Institute of Technology, Bombay Powai, India - 400076 mnitya@cse.iitb.ac.in Sharat Chandran

More information

Composer Identification of Digital Audio Modeling Content Specific Features Through Markov Models

Composer Identification of Digital Audio Modeling Content Specific Features Through Markov Models Composer Identification of Digital Audio Modeling Content Specific Features Through Markov Models Aric Bartle (abartle@stanford.edu) December 14, 2012 1 Background The field of composer recognition has

More information

Music Information Retrieval with Temporal Features and Timbre

Music Information Retrieval with Temporal Features and Timbre Music Information Retrieval with Temporal Features and Timbre Angelina A. Tzacheva and Keith J. Bell University of South Carolina Upstate, Department of Informatics 800 University Way, Spartanburg, SC

More information

Chord Classification of an Audio Signal using Artificial Neural Network

Chord Classification of an Audio Signal using Artificial Neural Network Chord Classification of an Audio Signal using Artificial Neural Network Ronesh Shrestha Student, Department of Electrical and Electronic Engineering, Kathmandu University, Dhulikhel, Nepal ---------------------------------------------------------------------***---------------------------------------------------------------------

More information

LOUDNESS EFFECT OF THE DIFFERENT TONES ON THE TIMBRE SUBJECTIVE PERCEPTION EXPERIMENT OF ERHU

LOUDNESS EFFECT OF THE DIFFERENT TONES ON THE TIMBRE SUBJECTIVE PERCEPTION EXPERIMENT OF ERHU The 21 st International Congress on Sound and Vibration 13-17 July, 2014, Beijing/China LOUDNESS EFFECT OF THE DIFFERENT TONES ON THE TIMBRE SUBJECTIVE PERCEPTION EXPERIMENT OF ERHU Siyu Zhu, Peifeng Ji,

More information

MIRAI: Multi-hierarchical, FS-tree based Music Information Retrieval System

MIRAI: Multi-hierarchical, FS-tree based Music Information Retrieval System MIRAI: Multi-hierarchical, FS-tree based Music Information Retrieval System Zbigniew W. Raś 1,2, Xin Zhang 1, and Rory Lewis 1 1 University of North Carolina, Dept. of Comp. Science, Charlotte, N.C. 28223,

More information

Automatic Construction of Synthetic Musical Instruments and Performers

Automatic Construction of Synthetic Musical Instruments and Performers Ph.D. Thesis Proposal Automatic Construction of Synthetic Musical Instruments and Performers Ning Hu Carnegie Mellon University Thesis Committee Roger B. Dannenberg, Chair Michael S. Lewicki Richard M.

More information

THE importance of music content analysis for musical

THE importance of music content analysis for musical IEEE TRANSACTIONS ON AUDIO, SPEECH, AND LANGUAGE PROCESSING, VOL. 15, NO. 1, JANUARY 2007 333 Drum Sound Recognition for Polyphonic Audio Signals by Adaptation and Matching of Spectrogram Templates With

More information

Music Genre Classification and Variance Comparison on Number of Genres

Music Genre Classification and Variance Comparison on Number of Genres Music Genre Classification and Variance Comparison on Number of Genres Miguel Francisco, miguelf@stanford.edu Dong Myung Kim, dmk8265@stanford.edu 1 Abstract In this project we apply machine learning techniques

More information

AUTOREGRESSIVE MFCC MODELS FOR GENRE CLASSIFICATION IMPROVED BY HARMONIC-PERCUSSION SEPARATION

AUTOREGRESSIVE MFCC MODELS FOR GENRE CLASSIFICATION IMPROVED BY HARMONIC-PERCUSSION SEPARATION AUTOREGRESSIVE MFCC MODELS FOR GENRE CLASSIFICATION IMPROVED BY HARMONIC-PERCUSSION SEPARATION Halfdan Rump, Shigeki Miyabe, Emiru Tsunoo, Nobukata Ono, Shigeki Sagama The University of Tokyo, Graduate

More information

A Survey on: Sound Source Separation Methods

A Survey on: Sound Source Separation Methods Volume 3, Issue 11, November-2016, pp. 580-584 ISSN (O): 2349-7084 International Journal of Computer Engineering In Research Trends Available online at: www.ijcert.org A Survey on: Sound Source Separation

More information

Automatic Piano Music Transcription

Automatic Piano Music Transcription Automatic Piano Music Transcription Jianyu Fan Qiuhan Wang Xin Li Jianyu.Fan.Gr@dartmouth.edu Qiuhan.Wang.Gr@dartmouth.edu Xi.Li.Gr@dartmouth.edu 1. Introduction Writing down the score while listening

More information

Application Of Missing Feature Theory To The Recognition Of Musical Instruments In Polyphonic Audio

Application Of Missing Feature Theory To The Recognition Of Musical Instruments In Polyphonic Audio Application Of Missing Feature Theory To The Recognition Of Musical Instruments In Polyphonic Audio Jana Eggink and Guy J. Brown Department of Computer Science, University of Sheffield Regent Court, 11

More information

AMusical Instrument Sample Database of Isolated Notes

AMusical Instrument Sample Database of Isolated Notes 1046 IEEE TRANSACTIONS ON AUDIO, SPEECH, AND LANGUAGE PROCESSING, VOL. 17, NO. 5, JULY 2009 Purging Musical Instrument Sample Databases Using Automatic Musical Instrument Recognition Methods Arie Livshin

More information

MODAL ANALYSIS AND TRANSCRIPTION OF STROKES OF THE MRIDANGAM USING NON-NEGATIVE MATRIX FACTORIZATION

MODAL ANALYSIS AND TRANSCRIPTION OF STROKES OF THE MRIDANGAM USING NON-NEGATIVE MATRIX FACTORIZATION MODAL ANALYSIS AND TRANSCRIPTION OF STROKES OF THE MRIDANGAM USING NON-NEGATIVE MATRIX FACTORIZATION Akshay Anantapadmanabhan 1, Ashwin Bellur 2 and Hema A Murthy 1 1 Department of Computer Science and

More information

MPEG-7 AUDIO SPECTRUM BASIS AS A SIGNATURE OF VIOLIN SOUND

MPEG-7 AUDIO SPECTRUM BASIS AS A SIGNATURE OF VIOLIN SOUND MPEG-7 AUDIO SPECTRUM BASIS AS A SIGNATURE OF VIOLIN SOUND Aleksander Kaminiarz, Ewa Łukasik Institute of Computing Science, Poznań University of Technology. Piotrowo 2, 60-965 Poznań, Poland e-mail: Ewa.Lukasik@cs.put.poznan.pl

More information

GCT535- Sound Technology for Multimedia Timbre Analysis. Graduate School of Culture Technology KAIST Juhan Nam

GCT535- Sound Technology for Multimedia Timbre Analysis. Graduate School of Culture Technology KAIST Juhan Nam GCT535- Sound Technology for Multimedia Timbre Analysis Graduate School of Culture Technology KAIST Juhan Nam 1 Outlines Timbre Analysis Definition of Timbre Timbre Features Zero-crossing rate Spectral

More information

Recognising Cello Performers using Timbre Models

Recognising Cello Performers using Timbre Models Recognising Cello Performers using Timbre Models Chudy, Magdalena; Dixon, Simon For additional information about this publication click this link. http://qmro.qmul.ac.uk/jspui/handle/123456789/5013 Information

More information

MOTIVATION AGENDA MUSIC, EMOTION, AND TIMBRE CHARACTERIZING THE EMOTION OF INDIVIDUAL PIANO AND OTHER MUSICAL INSTRUMENT SOUNDS

MOTIVATION AGENDA MUSIC, EMOTION, AND TIMBRE CHARACTERIZING THE EMOTION OF INDIVIDUAL PIANO AND OTHER MUSICAL INSTRUMENT SOUNDS MOTIVATION Thank you YouTube! Why do composers spend tremendous effort for the right combination of musical instruments? CHARACTERIZING THE EMOTION OF INDIVIDUAL PIANO AND OTHER MUSICAL INSTRUMENT SOUNDS

More information

TOWARD UNDERSTANDING EXPRESSIVE PERCUSSION THROUGH CONTENT BASED ANALYSIS

TOWARD UNDERSTANDING EXPRESSIVE PERCUSSION THROUGH CONTENT BASED ANALYSIS TOWARD UNDERSTANDING EXPRESSIVE PERCUSSION THROUGH CONTENT BASED ANALYSIS Matthew Prockup, Erik M. Schmidt, Jeffrey Scott, and Youngmoo E. Kim Music and Entertainment Technology Laboratory (MET-lab) Electrical

More information

IEEE TRANSACTIONS ON AUDIO, SPEECH, AND LANGUAGE PROCESSING, VOL. 21, NO. 4, APRIL

IEEE TRANSACTIONS ON AUDIO, SPEECH, AND LANGUAGE PROCESSING, VOL. 21, NO. 4, APRIL IEEE TRANSACTIONS ON AUDIO, SPEECH, AND LANGUAGE PROCESSING, VOL. 21, NO. 4, APRIL 2013 737 Multiscale Fractal Analysis of Musical Instrument Signals With Application to Recognition Athanasia Zlatintsi,

More information

2 2. Melody description The MPEG-7 standard distinguishes three types of attributes related to melody: the fundamental frequency LLD associated to a t

2 2. Melody description The MPEG-7 standard distinguishes three types of attributes related to melody: the fundamental frequency LLD associated to a t MPEG-7 FOR CONTENT-BASED MUSIC PROCESSING Λ Emilia GÓMEZ, Fabien GOUYON, Perfecto HERRERA and Xavier AMATRIAIN Music Technology Group, Universitat Pompeu Fabra, Barcelona, SPAIN http://www.iua.upf.es/mtg

More information

Music Emotion Recognition. Jaesung Lee. Chung-Ang University

Music Emotion Recognition. Jaesung Lee. Chung-Ang University Music Emotion Recognition Jaesung Lee Chung-Ang University Introduction Searching Music in Music Information Retrieval Some information about target music is available Query by Text: Title, Artist, or

More information

MUSICAL INSTRUMENTCLASSIFICATION USING MIRTOOLBOX

MUSICAL INSTRUMENTCLASSIFICATION USING MIRTOOLBOX MUSICAL INSTRUMENTCLASSIFICATION USING MIRTOOLBOX MS. ASHWINI. R. PATIL M.E. (Digital System),JSPM s JSCOE Pune, India, ashu.rpatil3690@gmail.com PROF.V.M. SARDAR Assistant professor, JSPM s, JSCOE, Pune,

More information

An Accurate Timbre Model for Musical Instruments and its Application to Classification

An Accurate Timbre Model for Musical Instruments and its Application to Classification An Accurate Timbre Model for Musical Instruments and its Application to Classification Juan José Burred 1,AxelRöbel 2, and Xavier Rodet 2 1 Communication Systems Group, Technical University of Berlin,

More information

UNDERSTANDING the timbre of musical instruments has

UNDERSTANDING the timbre of musical instruments has 68 IEEE TRANSACTIONS ON AUDIO, SPEECH, AND LANGUAGE PROCESSING, VOL. 14, NO. 1, JANUARY 2006 Instrument Recognition in Polyphonic Music Based on Automatic Taxonomies Slim Essid, Gaël Richard, Member, IEEE,

More information

Recognising Cello Performers Using Timbre Models

Recognising Cello Performers Using Timbre Models Recognising Cello Performers Using Timbre Models Magdalena Chudy and Simon Dixon Abstract In this paper, we compare timbre features of various cello performers playing the same instrument in solo cello

More information

Semi-supervised Musical Instrument Recognition

Semi-supervised Musical Instrument Recognition Semi-supervised Musical Instrument Recognition Master s Thesis Presentation Aleksandr Diment 1 1 Tampere niversity of Technology, Finland Supervisors: Adj.Prof. Tuomas Virtanen, MSc Toni Heittola 17 May

More information

Acoustic Scene Classification

Acoustic Scene Classification Acoustic Scene Classification Marc-Christoph Gerasch Seminar Topics in Computer Music - Acoustic Scene Classification 6/24/2015 1 Outline Acoustic Scene Classification - definition History and state of

More information

WHAT MAKES FOR A HIT POP SONG? WHAT MAKES FOR A POP SONG?

WHAT MAKES FOR A HIT POP SONG? WHAT MAKES FOR A POP SONG? WHAT MAKES FOR A HIT POP SONG? WHAT MAKES FOR A POP SONG? NICHOLAS BORG AND GEORGE HOKKANEN Abstract. The possibility of a hit song prediction algorithm is both academically interesting and industry motivated.

More information

Cross-Dataset Validation of Feature Sets in Musical Instrument Classification

Cross-Dataset Validation of Feature Sets in Musical Instrument Classification Cross-Dataset Validation of Feature Sets in Musical Instrument Classification Patrick J. Donnelly and John W. Sheppard Department of Computer Science Montana State University Bozeman, MT 59715 {patrick.donnelly2,

More information

Interactive Classification of Sound Objects for Polyphonic Electro-Acoustic Music Annotation

Interactive Classification of Sound Objects for Polyphonic Electro-Acoustic Music Annotation for Polyphonic Electro-Acoustic Music Annotation Sebastien Gulluni 2, Slim Essid 2, Olivier Buisson, and Gaël Richard 2 Institut National de l Audiovisuel, 4 avenue de l Europe 94366 Bry-sur-marne Cedex,

More information

Analytic Comparison of Audio Feature Sets using Self-Organising Maps

Analytic Comparison of Audio Feature Sets using Self-Organising Maps Analytic Comparison of Audio Feature Sets using Self-Organising Maps Rudolf Mayer, Jakob Frank, Andreas Rauber Institute of Software Technology and Interactive Systems Vienna University of Technology,

More information

Speech Recognition Combining MFCCs and Image Features

Speech Recognition Combining MFCCs and Image Features Speech Recognition Combining MFCCs and Image Featres S. Karlos from Department of Mathematics N. Fazakis from Department of Electrical and Compter Engineering K. Karanikola from Department of Mathematics

More information

A Categorical Approach for Recognizing Emotional Effects of Music

A Categorical Approach for Recognizing Emotional Effects of Music A Categorical Approach for Recognizing Emotional Effects of Music Mohsen Sahraei Ardakani 1 and Ehsan Arbabi School of Electrical and Computer Engineering, College of Engineering, University of Tehran,

More information

Feature-based Characterization of Violin Timbre

Feature-based Characterization of Violin Timbre 7 th European Signal Processing Conference (EUSIPCO) Feature-based Characterization of Violin Timbre Francesco Setragno, Massimiliano Zanoni, Augusto Sarti and Fabio Antonacci Dipartimento di Elettronica,

More information

Audio classification from time-frequency texture

Audio classification from time-frequency texture Audio classification from time-frequency texture The MIT Faculty has made this article openly available. Please share how this access benefits you. Your story matters. Citation As Published Publisher Guoshen,

More information

Automatic Laughter Detection

Automatic Laughter Detection Automatic Laughter Detection Mary Knox Final Project (EECS 94) knoxm@eecs.berkeley.edu December 1, 006 1 Introduction Laughter is a powerful cue in communication. It communicates to listeners the emotional

More information

A QUERY BY EXAMPLE MUSIC RETRIEVAL ALGORITHM

A QUERY BY EXAMPLE MUSIC RETRIEVAL ALGORITHM A QUER B EAMPLE MUSIC RETRIEVAL ALGORITHM H. HARB AND L. CHEN Maths-Info department, Ecole Centrale de Lyon. 36, av. Guy de Collongue, 69134, Ecully, France, EUROPE E-mail: {hadi.harb, liming.chen}@ec-lyon.fr

More information

Improving Frame Based Automatic Laughter Detection

Improving Frame Based Automatic Laughter Detection Improving Frame Based Automatic Laughter Detection Mary Knox EE225D Class Project knoxm@eecs.berkeley.edu December 13, 2007 Abstract Laughter recognition is an underexplored area of research. My goal for

More information

Multiple classifiers for different features in timbre estimation

Multiple classifiers for different features in timbre estimation Multiple classifiers for different features in timbre estimation Wenxin Jiang 1, Xin Zhang 3, Amanda Cohen 1, Zbigniew W. Ras 1,2 1 Computer Science Department, University of North Carolina, Charlotte,

More information

A NOVEL CEPSTRAL REPRESENTATION FOR TIMBRE MODELING OF SOUND SOURCES IN POLYPHONIC MIXTURES

A NOVEL CEPSTRAL REPRESENTATION FOR TIMBRE MODELING OF SOUND SOURCES IN POLYPHONIC MIXTURES A NOVEL CEPSTRAL REPRESENTATION FOR TIMBRE MODELING OF SOUND SOURCES IN POLYPHONIC MIXTURES Zhiyao Duan 1, Bryan Pardo 2, Laurent Daudet 3 1 Department of Electrical and Computer Engineering, University

More information

Automatic Classification of Instrumental Music & Human Voice Using Formant Analysis

Automatic Classification of Instrumental Music & Human Voice Using Formant Analysis Automatic Classification of Instrumental Music & Human Voice Using Formant Analysis I Diksha Raina, II Sangita Chakraborty, III M.R Velankar I,II Dept. of Information Technology, Cummins College of Engineering,

More information

pitch estimation and instrument identification by joint modeling of sustained and attack sounds.

pitch estimation and instrument identification by joint modeling of sustained and attack sounds. Polyphonic pitch estimation and instrument identification by joint modeling of sustained and attack sounds Jun Wu, Emmanuel Vincent, Stanislaw Raczynski, Takuya Nishimoto, Nobutaka Ono, Shigeki Sagayama

More information

Available online at ScienceDirect. Procedia Computer Science 46 (2015 )

Available online at  ScienceDirect. Procedia Computer Science 46 (2015 ) Available online at www.sciencedirect.com ScienceDirect Procedia Computer Science 46 (2015 ) 381 387 International Conference on Information and Communication Technologies (ICICT 2014) Music Information

More information

A Study of Synchronization of Audio Data with Symbolic Data. Music254 Project Report Spring 2007 SongHui Chon

A Study of Synchronization of Audio Data with Symbolic Data. Music254 Project Report Spring 2007 SongHui Chon A Study of Synchronization of Audio Data with Symbolic Data Music254 Project Report Spring 2007 SongHui Chon Abstract This paper provides an overview of the problem of audio and symbolic synchronization.

More information

The Research of Controlling Loudness in the Timbre Subjective Perception Experiment of Sheng

The Research of Controlling Loudness in the Timbre Subjective Perception Experiment of Sheng The Research of Controlling Loudness in the Timbre Subjective Perception Experiment of Sheng S. Zhu, P. Ji, W. Kuang and J. Yang Institute of Acoustics, CAS, O.21, Bei-Si-huan-Xi Road, 100190 Beijing,

More information

Singer Traits Identification using Deep Neural Network

Singer Traits Identification using Deep Neural Network Singer Traits Identification using Deep Neural Network Zhengshan Shi Center for Computer Research in Music and Acoustics Stanford University kittyshi@stanford.edu Abstract The author investigates automatic

More information

EXPLORING THE USE OF ENF FOR MULTIMEDIA SYNCHRONIZATION

EXPLORING THE USE OF ENF FOR MULTIMEDIA SYNCHRONIZATION EXPLORING THE USE OF ENF FOR MULTIMEDIA SYNCHRONIZATION Hui Su, Adi Hajj-Ahmad, Min Wu, and Douglas W. Oard {hsu, adiha, minwu, oard}@umd.edu University of Maryland, College Park ABSTRACT The electric

More information

Topic 10. Multi-pitch Analysis

Topic 10. Multi-pitch Analysis Topic 10 Multi-pitch Analysis What is pitch? Common elements of music are pitch, rhythm, dynamics, and the sonic qualities of timbre and texture. An auditory perceptual attribute in terms of which sounds

More information

Lecture 9 Source Separation

Lecture 9 Source Separation 10420CS 573100 音樂資訊檢索 Music Information Retrieval Lecture 9 Source Separation Yi-Hsuan Yang Ph.D. http://www.citi.sinica.edu.tw/pages/yang/ yang@citi.sinica.edu.tw Music & Audio Computing Lab, Research

More information

DAY 1. Intelligent Audio Systems: A review of the foundations and applications of semantic audio analysis and music information retrieval

DAY 1. Intelligent Audio Systems: A review of the foundations and applications of semantic audio analysis and music information retrieval DAY 1 Intelligent Audio Systems: A review of the foundations and applications of semantic audio analysis and music information retrieval Jay LeBoeuf Imagine Research jay{at}imagine-research.com Rebecca

More information

A prototype system for rule-based expressive modifications of audio recordings

A prototype system for rule-based expressive modifications of audio recordings International Symposium on Performance Science ISBN 0-00-000000-0 / 000-0-00-000000-0 The Author 2007, Published by the AEC All rights reserved A prototype system for rule-based expressive modifications

More information

OBJECTIVE EVALUATION OF A MELODY EXTRACTOR FOR NORTH INDIAN CLASSICAL VOCAL PERFORMANCES

OBJECTIVE EVALUATION OF A MELODY EXTRACTOR FOR NORTH INDIAN CLASSICAL VOCAL PERFORMANCES OBJECTIVE EVALUATION OF A MELODY EXTRACTOR FOR NORTH INDIAN CLASSICAL VOCAL PERFORMANCES Vishweshwara Rao and Preeti Rao Digital Audio Processing Lab, Electrical Engineering Department, IIT-Bombay, Powai,

More information

Efficient Vocal Melody Extraction from Polyphonic Music Signals

Efficient Vocal Melody Extraction from Polyphonic Music Signals http://dx.doi.org/1.5755/j1.eee.19.6.4575 ELEKTRONIKA IR ELEKTROTECHNIKA, ISSN 1392-1215, VOL. 19, NO. 6, 213 Efficient Vocal Melody Extraction from Polyphonic Music Signals G. Yao 1,2, Y. Zheng 1,2, L.

More information

Normalized Cumulative Spectral Distribution in Music

Normalized Cumulative Spectral Distribution in Music Normalized Cumulative Spectral Distribution in Music Young-Hwan Song, Hyung-Jun Kwon, and Myung-Jin Bae Abstract As the remedy used music becomes active and meditation effect through the music is verified,

More information

Proposal for Application of Speech Techniques to Music Analysis

Proposal for Application of Speech Techniques to Music Analysis Proposal for Application of Speech Techniques to Music Analysis 1. Research on Speech and Music Lin Zhong Dept. of Electronic Engineering Tsinghua University 1. Goal Speech research from the very beginning

More information

Subjective Similarity of Music: Data Collection for Individuality Analysis

Subjective Similarity of Music: Data Collection for Individuality Analysis Subjective Similarity of Music: Data Collection for Individuality Analysis Shota Kawabuchi and Chiyomi Miyajima and Norihide Kitaoka and Kazuya Takeda Nagoya University, Nagoya, Japan E-mail: shota.kawabuchi@g.sp.m.is.nagoya-u.ac.jp

More information

Music Mood Classification - an SVM based approach. Sebastian Napiorkowski

Music Mood Classification - an SVM based approach. Sebastian Napiorkowski Music Mood Classification - an SVM based approach Sebastian Napiorkowski Topics on Computer Music (Seminar Report) HPAC - RWTH - SS2015 Contents 1. Motivation 2. Quantification and Definition of Mood 3.

More information

Research & Development. White Paper WHP 232. A Large Scale Experiment for Mood-based Classification of TV Programmes BRITISH BROADCASTING CORPORATION

Research & Development. White Paper WHP 232. A Large Scale Experiment for Mood-based Classification of TV Programmes BRITISH BROADCASTING CORPORATION Research & Development White Paper WHP 232 September 2012 A Large Scale Experiment for Mood-based Classification of TV Programmes Jana Eggink, Denise Bland BRITISH BROADCASTING CORPORATION White Paper

More information

Automatic Laughter Detection

Automatic Laughter Detection Automatic Laughter Detection Mary Knox 1803707 knoxm@eecs.berkeley.edu December 1, 006 Abstract We built a system to automatically detect laughter from acoustic features of audio. To implement the system,

More information

Proceedings of Meetings on Acoustics

Proceedings of Meetings on Acoustics Proceedings of Meetings on Acoustics Volume 19, 2013 http://acousticalsociety.org/ ICA 2013 Montreal Montreal, Canada 2-7 June 2013 Musical Acoustics Session 3pMU: Perception and Orchestration Practice

More information

Toward Multi-Modal Music Emotion Classification

Toward Multi-Modal Music Emotion Classification Toward Multi-Modal Music Emotion Classification Yi-Hsuan Yang 1, Yu-Ching Lin 1, Heng-Tze Cheng 1, I-Bin Liao 2, Yeh-Chin Ho 2, and Homer H. Chen 1 1 National Taiwan University 2 Telecommunication Laboratories,

More information

Music Mood. Sheng Xu, Albert Peyton, Ryan Bhular

Music Mood. Sheng Xu, Albert Peyton, Ryan Bhular Music Mood Sheng Xu, Albert Peyton, Ryan Bhular What is Music Mood A psychological & musical topic Human emotions conveyed in music can be comprehended from two aspects: Lyrics Music Factors that affect

More information

APPLICATIONS OF A SEMI-AUTOMATIC MELODY EXTRACTION INTERFACE FOR INDIAN MUSIC

APPLICATIONS OF A SEMI-AUTOMATIC MELODY EXTRACTION INTERFACE FOR INDIAN MUSIC APPLICATIONS OF A SEMI-AUTOMATIC MELODY EXTRACTION INTERFACE FOR INDIAN MUSIC Vishweshwara Rao, Sachin Pant, Madhumita Bhaskar and Preeti Rao Department of Electrical Engineering, IIT Bombay {vishu, sachinp,

More information

Towards Music Performer Recognition Using Timbre Features

Towards Music Performer Recognition Using Timbre Features Proceedings of the 3 rd International Conference of Students of Systematic Musicology, Cambridge, UK, September3-5, 00 Towards Music Performer Recognition Using Timbre Features Magdalena Chudy Centre for

More information

Melody Extraction from Generic Audio Clips Thaminda Edirisooriya, Hansohl Kim, Connie Zeng

Melody Extraction from Generic Audio Clips Thaminda Edirisooriya, Hansohl Kim, Connie Zeng Melody Extraction from Generic Audio Clips Thaminda Edirisooriya, Hansohl Kim, Connie Zeng Introduction In this project we were interested in extracting the melody from generic audio files. Due to the

More information

Features for Audio and Music Classification

Features for Audio and Music Classification Features for Audio and Music Classification Martin F. McKinney and Jeroen Breebaart Auditory and Multisensory Perception, Digital Signal Processing Group Philips Research Laboratories Eindhoven, The Netherlands

More information

MOVIES constitute a large sector of the entertainment

MOVIES constitute a large sector of the entertainment 1618 IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS FOR VIDEO TECHNOLOGY, VOL. 18, NO. 11, NOVEMBER 2008 Audio-Assisted Movie Dialogue Detection Margarita Kotti, Dimitrios Ververidis, Georgios Evangelopoulos,

More information

Repeating Pattern Discovery and Structure Analysis from Acoustic Music Data

Repeating Pattern Discovery and Structure Analysis from Acoustic Music Data Repeating Pattern Discovery and Structure Analysis from Acoustic Music Data Lie Lu, Muyuan Wang 2, Hong-Jiang Zhang Microsoft Research Asia Beijing, P.R. China, 8 {llu, hjzhang}@microsoft.com 2 Department

More information