Digital audio and computer music. COS 116, Spring 2012 Guest lecture: Rebecca Fiebrink

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Transcription:

Digital audio and computer music COS 116, Spring 2012 Guest lecture: Rebecca Fiebrink

Overview 1. Physics & perception of sound & music 2. Representations of music 3. Analyzing music with computers 4. Creating music with computers

1. Sound and music

Discussion Time What is sound? Pressure wave

What do we hear? http://www.youtube.com/watch?v=evxs_bj0you http://www.youtube.com/watch?v=wy1emwdeabw http://www.youtube.com/watch?v=nit9qf_5c_w Pitch Loudness Timbre Location Meter, rhythm, harmony, melody, structure etc...

Psychoacoustics Psychoacoustics: relationships between physical phenomenon and our perception Frequency: pitch (20-20,000Hz) Amplitude: loudness Timbre: Identities and strengths of frequencies present + =

Discussion Time What is music? Organized sound Psychoacoustics play an important role Also dependence upon history, culture, experience Engages listeners psychological mechanisms for expectation/reward

2. Representations of sound and music

How do you represent music? Score: Digital waveform Spectrogram

Digital representation of music

Compression A better representation with fewer bits Why? Security, transmission, storage How? Psychoacoustic principles MP3: Masking Physical principles of sound production (uses models of sound source)

Choosing a representation Representations make compromises Standard representations are somewhat arbitrary Appropriate choice is task-dependent

3. Using technology to analyze sound and music

Analyzing speech Real-life apps: Customer service phone routing Voice recognition software

Auditory Scene Analysis Applications: Archival and retrieval, forensics, AI

Music information retrieval Analyzing musical data Query, recommend, visualize, transcribe, detect plagiarism, follow along score Sites/apps you can try midomi Themefinder.com Pandora.com (includes human-powered algorithms) Shazaam

Machine learning for analysis

4. Using technology to create music and sound

Creating music: Synthesis

Four approaches to synthesis 1. Additive synthesis 1. Figure out proportions of various frequencies 2. Synthesize waves and superimpose them + + = 3. Modify amplitude using an envelope :

2. FM Synthesis Modulate the frequency of one sine oscillator using the output of another oscillator

3. Physical Models 1. Start with knowledge of physical systems 2. Simulate oscillation (Recall Lecture 4)

4. Cross-synthesis Choose filter for speech (vowel) Choose source to be another sound

How can computers be used in making music? Synthesizing new sounds Processing and transforming sound Demo: T-Pain Accompanying human performers Demo: Raphael Composing new music Demo: Copin As new musical instruments And many other ways, too

Computer as Instrument Demo: SMELT keyboard, motion Video: Clix Demo: Wekinator Video: CMMV, Blinky Demo: Live coding

Questions: How can we. develop new ways to synthesize sound? give a user control over synthesis parameters? make machines interactive in a musical way? augment human capabilities? design new instruments that are easy to play? allow expert musicality? create music that is emotionally and aesthetically compelling?

Final remarks Distinctions in this presentation are superficial Analysis, representation, and creation interact Technology draws on and contributes to our understanding of the physics and psychophysics of sound Computer music is interdisciplinary HCI, AI, programming languages, algorithms, systems building Also psychology, music theory, acoustics, signal processing, engineering, physics, performance practice, library science, applied math & statistics, Technology is constantly complicating and changing the landscape of our musical experiences as creators, participants, listeners, and consumers.

http://soundlab.cs.princeton.edu/