000 14372nam a2201117 i 4500
001 5769523
003 IEEE
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006 m o d
007 cr |n|||||||||
008 110621t20152006njua ob ||| 0 eng d
020 _a9780470043387
_qelectronic
020 _z9780471741091
_qpaper
020 _z0470043385
_qelectronic
024 7 _a10.1109/9780470043387
_2doi
035 _a(CaBNVSL)mat05769523
035 _a(IDAMS)0b0000648154001b
040 _aCaBNVSL
_beng
_erda
_cCaBNVSL
_dCaBNVSL
050 4 _aQP461
_b.C645 2006eb
050 4 _aTK7895.S65
_bC66 2006eb
245 0 0 _aComputational auditory scene analysis :
_bprinciples, algorithms, and applications /
_cedited by DeLiang Wang, Guy J. Brown.
264 1 _aHoboken, New Jersey :
_bWiley interscience : $cc2006
300 _a1 PDF (1 PDF (xxiii, 395 pages)) :
_billustrations.
336 _atext
_2rdacontent
337 _aelectronic
_2isbdmedia
338 _aonline resource
_2rdacarrier
504 _aIncludes bibliographical references.
505 0 _aForeword. -- Preface. -- Contributors. -- Acronyms. -- 1. Fundamentals of Computational Auditory Scene Analysis (DeLiang Wang and Guy J. Brown). -- 1.1 Human Auditory Scene Analysis. -- 1.1.1 Structure and Function of the Auditory System. -- 1.1.2 Perceptual Organization of Simple Stimuli. -- 1.1.3 Perceptual Segregation of Speech from Other Sounds. -- 1.1.4 Perceptual Mechanisms. -- 1.2 Computational Auditory Scene Analysis (CASA). -- 1.2.1 What Is CASA? -- 1.2.2 What Is the Goal of CASA? -- 1.2.3 Why CASA? -- 1.3 Basics of CASA Systems. -- 1.3.1 System Architecture. -- 1.3.2 Cochleagram. -- 1.3.3 Correlogram. -- 1.3.4 Cross-Correlogram. -- 1.3.5 Time-Frequency Masks. -- 1.3.6 Resynthesis. -- 1.4 CASA Evaluation. -- 1.4.1 Evaluation Criteria. -- 1.4.2 Corpora. -- 1.5 Other Sound Separation Approaches. -- 1.6 A Brief History of CASA (Prior to 2000). -- 1.6.1 Monaural CASA Systems. -- 1.6.2 Binaural CASA Systems. -- 1.6.3 Neural CASA Models. -- 1.7 Conclusions 36 -- Acknowledgments. -- References. -- 2. Multiple F0 Estimation (Alain de Cheveign A A). -- 2.1 Introduction. -- 2.2 Signal Models. -- 2.3 Single-Voice F0 Estimation. -- 2.3.1 Spectral Approach. -- 2.3.2 Temporal Approach. -- 2.3.3 Spectrotemporal Approach. -- 2.4 Multiple-Voice F0 Estimation. -- 2.4.1 Spectral Approach. -- 2.4.2 Temporal Approach. -- 2.4.3 Spectrotemporal Approach. -- 2.5 Issues. -- 2.5.1 Spectral Resolution. -- 2.5.2 Temporal Resolution. -- 2.5.3 Spectrotemporal Resolution. -- 2.6 Other Sources of Information. -- 2.6.1 Temporal and Spectral Continuity. -- 2.6.2 Instrument Models. -- 2.6.3 Learning-Based Techniques. -- 2.7 Estimating the Number of Sources. -- 2.8 Evaluation. -- 2.9 Application Scenarios. -- 2.10 Conclusion. -- Acknowledgments. -- References. -- 3. Feature-Based Speech Segregation (DeLiang Wang). -- 3.1 Introduction. -- 3.2 Feature Extraction. -- 3.2.1 Pitch Detection. -- 3.2.2 Onset and Offset Detection. -- 3.2.3 Amplitude Modulation Extraction. -- 3.2.4 Frequency Modulation Detection.
505 0 _a3.3 Auditory Segmentation. -- 3.3.1 What Is the Goal of Auditory Segmentation? -- 3.3.2 Segmentation Based on Cross-Channel Correlation and Temporal Continuity. -- 3.3.3 Segmentation Based on Onset and Offset Analysis. -- 3.4 Simultaneous Grouping. -- 3.4.1 Voiced Speech Segregation. -- 3.4.2 Unvoiced Speech Segregation. -- 3.5 Sequential Grouping. -- 3.5.1 Spectrum-Based Sequential Grouping. -- 3.5.2 Pitch-Based Sequential Grouping. -- 3.5.3 Model-Based Sequential Grouping. -- 3.6 Discussion. -- Acknowledgments. -- References. -- 4. Model-Based Scene Analysis (Daniel P. W. Ellis). -- 4.1 Introduction. -- 4.2 Source Separation as Inference. -- 4.3 Hidden Markov Models. -- 4.4 Aspects of Model-Based Systems. -- 4.4.1 Constraints: Types and Representations. -- 4.4.2 Fitting Models. -- 4.4.3 Generating Output. -- 4.5 Discussion. -- 4.5.1 Unknown Interference. -- 4.5.2 Ambiguity and Adaptation. -- 4.5.3 Relations to Other Separation Approaches. -- 4.6 Conclusions. -- References. -- 5. Binaural Sound Localization (Richard M. Stern, Guy J. Brown, and DeLiang Wang). -- 5.1 Introduction. -- 5.2 Physical and Physiological Mechanisms Underlying Auditory Localization. -- 5.2.1 Physical Cues. -- 5.2.2 Physiological Estimation of ITD and IID. -- 5.3 Spatial Perception of Single Sources. -- 5.3.1 Sensitivity to Differences in Interaural Time and Intensity. -- 5.3.2 Lateralization of Single Sources. -- 5.3.3 Localization of Single Sources. -- 5.3.4 The Precedence Effect. -- 5.4 Spatial Perception of Multiple Sources. -- 5.4.1 Localization of Multiple Sources. -- 5.4.2 Binaural Signal Detection. -- 5.5 Models of Binaural Perception. -- 5.5.1 Classical Models of Binaural Hearing. -- 5.5.2 Cross-Correlation-Based Models of Binaural Interaction. -- 5.5.3 Some Extensions to Cross-Correlation-Based Binaural Models. -- 5.6 Multisource Sound Localization. -- 5.6.1 Estimating Source Azimuth from Interaural Cross-Correlation. -- 5.6.2 Methods for Resolving Azimuth Ambiguity. -- 5.6.3 Localization of Moving Sources.
505 0 _a5.7 General Discussion. -- Acknowledgments. -- References. -- 6. Localization-Based Grouping (Albert S. Feng and Douglas L. Jones). -- 6.1 Introduction. -- 6.2 Classical Beamforming Techniques. -- 6.2.1 Fixed Beamforming Techniques. -- 6.2.2 Adaptive Beamforming Techniques. -- 6.2.3 Independent Component Analysis Techniques. -- 6.2.4 Other Localization-Based Techniques. -- 6.3 Location-Based Grouping Using Interaural Time Difference Cue. -- 6.4 Location-Based Grouping Using Interaural Intensity Difference Cue. -- 6.5 Location-Based Grouping Using Multiple Binaural Cues. -- 6.6 Discussion and Conclusions. -- Acknowledgments. -- References. -- 7. Reverberation (Guy J. Brown and Kalle J. Palom A ki). -- 7.1 Introduction. -- 7.2 Effects of Reverberation on Listeners. -- 7.2.1 Speech Perception. -- 7.2.2 Sound Localization. -- 7.2.3 Source Separation and Signal Detection. -- 7.2.4 Distance Perception. -- 7.2.5 Auditory Spatial Impression. -- 7.3 Effects of Reverberation on Machines. -- 7.4 Mechanisms Underlying Robustness to Reverberation in Human Listeners. -- 7.4.1 The Role of Slow Temporal Modulations in Speech Perception. -- 7.4.2 The Binaural Advantage. -- 7.4.3 The Precedence Effect. -- 7.4.4 Perceptual Compensation for Spectral Envelope Distortion. -- 7.5 Reverberation-Robust Acoustic Processing. -- 7.5.1 Dereverberation. -- 7.5.2 Reverberation-Robust Acoustic Features. -- 7.5.3 Reverberation Masking. -- 7.6 CASA and Reverberation. -- 7.6.1 Systems Based on Directional Filtering. -- 7.6.2 CASA for Robust ASR in Reverberant Conditions. -- 7.6.3 Systems that Use Multiple Cues. -- 7.7 Discussion and Conclusions. -- Acknowledgments. -- References. -- 8. Analysis of Musical Audio Signals (Masataka Goto). -- 8.1 Introduction. -- 8.2 Music Scene Description. -- 8.2.1 Music Scene Descriptions. -- 8.2.2 Difficulties Associated with Musical Audio Signals. -- 8.3 Estimating Melody and Bass Lines. -- 8.3.1 PreFEst-front-end: Forming the Observed Probability Density Functions.
505 0 _a8.3.2 PreFEst-core: Estimating the F0's Probability Density Function. -- 8.3.3 PreFEst-back-end: Sequential F0 Tracking by Multiple-Agent Architecture. -- 8.3.4 Other Methods. -- 8.4 Estimating Beat Structure. -- 8.4.1 Estimating Period and Phase. -- 8.4.2 Dealing with Ambiguity. -- 8.4.3 Using Musical Knowledge. -- 8.5 Estimating Chorus Sections and Repeated Sections. -- 8.5.1 Extracting Acoustic Features and Calculating Their Similarity. -- 8.5.2 Finding Repeated Sections. -- 8.5.3 Grouping Repeated Sections. -- 8.5.4 Detecting Modulated Repetition. -- 8.5.5 Selecting Chorus Sections. -- 8.5.6 Other Methods. -- 8.6 Discussion and Conclusions. -- 8.6.1 Importance. -- 8.6.2 Evaluation Issues. -- 8.6.3 Future Directions. -- References. -- 9. Robust Automatic Speech Recognition (Jon Barker). -- 9.1 Introduction. -- 9.2 ASA and Speech Perception in Humans. -- 9.2.1 Speech Perception and Simultaneous Grouping. -- 9.2.2 Speech Perception and Sequential Grouping. -- 9.2.3 Speech Schemes. -- 9.2.4 Challenges to the ASA Account of Speech Perception. -- 9.2.5 Interim Summary. -- 9.3 Speech Recognition by Machine. -- 9.3.1 The Statistical Basis of ASR. -- 9.3.2 Traditional Approaches to Robust ASR. -- 9.3.3 CASA-Driven Approaches to ASR. -- 9.4 Primitive CASA and ASR. -- 9.4.1 Speech and Time-Frequency Masking. -- 9.4.2 The Missing-Data Approach to ASR. -- 9.4.3 Marginalization-Based Missing-Data ASR Systems. -- 9.4.4 Imputation-Based Missing-Data Solutions. -- 9.4.5 Estimating the Missing-Data Mask. -- 9.4.6 Difficulties with the Missing-Data Approach. -- 9.5 Model-Based CASA and ASR. -- 9.5.1 The Speech Fragment Decoding Framework. -- 9.5.2 Coupling Source Segregation and Recognition. -- 9.6 Discussion and Conclusions. -- 9.7 Concluding Remarks. -- References. -- 10. Neural and Perceptual Modeling (Guy J. Brown and DeLiang Wang). -- 10.1 Introduction. -- 10.2 The Neural Basis of Auditory Grouping. -- 10.2.1 Theoretical Solutions to the Binding Problem. -- 10.2.2 Empirical Results on Binding and ASA.
505 0 _a10.3 Models of Individual Neurons. -- 10.3.1 Relaxation Oscillators. -- 10.3.2 Spike Oscillators. -- 10.3.3 A Model of a Specific Auditory Neuron. -- 10.4 Models of Specific Perceptual Phenomena. -- 10.4.1 Perceptual Streaming of Tone Sequences. -- 10.4.2 Perceptual Segregation of Concurrent Vowels with Different F0s. -- 10.5 The Oscillatory Correlation Framework for CASA. -- 10.5.1 Speech Segregation Based on Oscillatory Correlation. -- 10.6 Schema-Driven Grouping. -- 10.7 Discussion. -- 10.7.1 Temporal or Spatial Coding of Auditory Grouping. -- 10.7.2 Physiological Support for Neural Time Delays. -- 10.7.3 Convergence of Psychological, Physiological, and Computational Approaches. -- 10.7.4 Neural Models as a Framework for CASA. -- 10.7.5 The Role of Attention. -- 10.7.6 Schema-Based Organization. -- Acknowledgments. -- References. -- Index.
506 1 _aRestricted to subscribers or individual electronic text purchasers.
520 _aHow can we engineer systems capable of "cocktail party" listening?Human listeners are able to perceptually segregate one sound source from an acoustic mixture, such as a single voice from a mixture of other voices and music at a busy cocktail party. How can we engineer "machine listening" systems that achieve this perceptual feat?Albert Bregman's book Auditory Scene Analysis, published in 1990, drew an analogy between the perception of auditory scenes and visual scenes, and described a coherent framework for understanding the perceptual organization of sound. His account has stimulated much interest in computational studies of hearing. Such studies are motivated in part by the demand for practical sound separation systems, which have many applications including noise-robust automatic speech recognition, hearing prostheses, and automatic music transcription. This emerging field has become known as computational auditory scene analysis (CASA).Computational Auditory Scene Analysis: Principles, Algorithms, and Applications provides a comprehensive and coherent account of the state of the art in CASA, in terms of the underlying principles, the algorithms and system architectures that are employed, and the potential applications of this exciting new technology. With a Foreword by Bregman, its chapters are written by leading researchers and cover a wide range of topics including:. Estimation of multiple fundamental frequencies. Feature-based and model-based approaches to CASA. Sound separation based on spatial location. Processing for reverberant environments. Segregation of speech and musical signals. Automatic speech recognition in noisy environments. Neural and perceptual modeling of auditory organizationThe text is written at a level that will be accessible to graduate students and researchers from related science and engineering disciplines. The extensive bibliography accompanying each chapter will also make this book a valuable reference source. A web site accompanying the text (www.casabook.org) features software tools and sound demonstrations.
533 _aReproduction en format �electronique.
538 _aMode of access: World Wide Web.
588 _aDescription based on PDF viewed 12/18/2015.
650 0 _aPerception auditive.
_927656
650 0 _aPerception auditive
_xSimulation par ordinateur.
_927657
655 0 _aElectronic books.
_93294
695 _aAcoustics
695 _aArray signal processing
695 _aArrays
695 _aAuditory displays
695 _aAuditory system
695 _aBiographies
695 _aBiological system modeling
695 _aComputational modeling
695 _aDelay
695 _aDelay effects
695 _aEar
695 _aEncoding
695 _aEquations
695 _aEstimation
695 _aFeature extraction
695 _aFrequency measurement
695 _aFrequency modulation
695 _aHarmonic analysis
695 _aHidden Markov models
695 _aHistograms
695 _aHumans
695 _aImage analysis
695 _aIndexes
695 _aInstruments
695 _aInterference
695 _aLinear systems
695 _aMathematical model
695 _aMicrophones
695 _aMultiple signal classification
695 _aMusic
695 _aNeurons
695 _aNoise
695 _aNoise measurement
695 _aOscillators
695 _aPower harmonic filters
695 _aPsychoacoustic models
695 _aReflection
695 _aResonant frequency
695 _aReverberation
695 _aRobustness
695 _aSections
695 _aSensors
695 _aSilicon
695 _aSource separation
695 _aSpeech
695 _aSpeech recognition
695 _aTerminology
700 1 _aBrown, Guy J.
_927658
700 1 _aWang, DeLiang,
_d1963-
_927659
710 2 _aIEEE Xplore (Online Service),
_edistributor.
_927660
710 2 _aWiley,
_epublisher.
_927661
730 0 _aIEEE Xplore (Livres)
_926022
776 0 8 _iPrint version:
_z9780471741091
856 _3Abstract with links to resource
_uhttps://ieeexplore.ieee.org/xpl/bkabstractplus.jsp?bkn=5769523
942 _cEBK
999 _c74133
_d74133