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Tuesday, December 10 • 7:30am - 6:30pm
Neural Information Processing Scaled for Bioacoustics : NIPS4B

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Bioacoustic data science aims at modeling animal sounds for neuroethology and biodiversity assessment. It has received increasing attention due to its diverse potential benefits. It is steadily required by regulatory agencies for timely monitoring of environmental impacts from human activities. Given the complexity of the collected data along with the numerous species and environmental contexts, bioacoustics requires robust information processing. The features and biological significance of animal sounds, are constrained by the physics of sound production and propagation, and evolved through the processes of natural selection. This yields to new paradigms such as curriculum song learning, predator-prey acoustic loop, etc. NIPS4B solidifies an innovative computational framework by focusing on the principles of information processing, if possible in an inheretly hierarchical manner or with physiological parallels: Deep Belief Networks (DBN), Sparse Auto Encoders (SAE), Convolutional Networks (ConNet), Scattering transforms etc. It encourages interdisciplinary, scientific exchanges and foster collaborations, bringing together experts from machine learning and computational auditory scene analysis, within animal sound and communication systems. One challenge concerns bird classification (on Kaggle): identify 87 species of Provence (recordings Biotope SA). It is the biggest bird song challenge according to our knowledge, more complex than ICML4B (sabiod.org/oncet). A second challenge concerns the representation of a remarkable humpback whale song (Darewin - La Reunion), in order to help its analysis. Other special session concerns (neural)modelisation of the biosonar of bats or dolphins. References: Glotin H, Dugan P, LeCun Y, Clark C, Halkias X, (2013) Proc. of the first workshop on Machine Learning for Bioacoustics, sabiod.org/oncet, ICML4B Glotin H, (2013) Etho-Acoustics: Categorisation & Localisation into Soundscapes, Ed. Intech open book Pace F, Benard F, Glotin H, Adam O, White P, (2010) Subunit definition for humpback whale call classification, J. Applied Acoustics, 11(71) Glotin H, Caudal F, Giraudet P, (2008) Whales cocktail party: a real-time tracking of multiple whales, V.36(1), ISSN 0711-6659, sabiod.org/oncet, J. Canadian Acoustics Benard F, Glotin H, (2010) Automatic indexing and content analysis of whale recordings & XML representation, EURASIP Adv. Signal Proc. for Maritime Applications Farabet C, Couprie C, Najman L, LeCun Y, (2013) Learning Hierarchical Features for Scene Labeling, IEEE PAMI LeCun, Y, Learning Invariant Feature Hierarchies, (2012) Workshop on Biological & Computer Vision Interfaces, LNCS, V7583, ECCV Anden J, Mallat S, (2011) Scattering transform applied to audio signals & musical classification: Multiscale Scattering for Audio Classification, ISMIR Lipkind D, Marcus GF...Tchernichovski O, (2013) Stepwise acquisition of vocal combinatorial capacity in songbirds & human infants, 10.1038/nature12173, Nature Tchernichovski O, Wallman J, (2008) Neurons of imitation, 451(17), Nature Lallemand I, Schwarz D, Artieres T, (2012) A Multiresolution Kernel Distance for SVM Classification of Environmental Sounds, SMC Soullard Y, Artieres T, (2011) Hybrid HMM and HCRF model for sequence classification, ESANN Halkias X, Ellis D, (2008) A Comparison of Pitch Extraction Methodologies for Dolphin Vocalizations, V36(1), J. Canadian Acoustics Halkias X, Ellis D, (2006) Call Detection & Extraction Using Bayesian Inference, Special issue on Marine Mammal Detection, V67(11), J. Applied Acoustics Halkias X, Paris S, Glotin H, (2013) Classification of mysticete sounds using machine learning techniques, 134, 3496, 10.1121/1.4821203, JASA
http://sabiod.org/nips4b

Speakers
YL

Yann LeCun

Yann LeCun is Director of AI Research at Facebook, and Silver Professor of Data Science, Computer Science, Neural Science, and Electrical Engineering at New York University. He received the Electrical Engineer Diploma from ESIEE, Paris in 1983, and a PhD in Computer Science from Universit... Read More →
SM

Stephane Mallat

Stéphane Mallat received the Ph.D. degree in electrical engineering from the University of Pennsylvania, in 1988. He was then Professor at the Courant Institute of Mathematical Sciences. In 1995, he became Professor in Applied Mathematics at Ecole Polytechnique, Paris. From 2001... Read More →


Tuesday December 10, 2013 7:30am - 6:30pm PST
Harrah's Tahoe C
  Workshops
  • Program_Schedule <br>ACCEPTED PAPERS are available in this draft book (20Mo) <br>http://sabiod.org/nips4b/NIPS4B_book_draft.pdf <br> <br>Detailed sched. with papers links : <br>http://sabiod.univ-tln.fr/nips4b/schedule.html <br> <br> <br>07:30 Introduction <br>Glotin - A Bioacoustic Turing test ? <br> <br>07:40 * Natural Neural Bioacoustic Learning <br>07:40 Tchernichovski - Physiological brain processes that underlie song learning <br>08:10 Pollack - Neuroethology of hearing in crickets: embedded neural process to avoid bat <br>08:45 Stathopoulos - Bat call classification <br> <br>09:00 Coffee Break <br> <br>09:25 * Representation for bioacoustics <br>09:25 Glotin & Razik - Sparse coding & whale tracking and song evolution <br>09:45 Halkias - SAE & DBN for whale classif. <br> <br> <br>10:05 * Advanced ANN <br>10:05 LeCun - ConvNets & DNN for Bioacoustics <br>10:40 Kindermann - ANN for sequences interpolation <br> <br> <br>10:55 * Learning to Track by Passive Acoustics <br>10:55 Doh - Inter Spectral Attenuation ANN: Range & Bearing Physeter est. <br>11:03 Paris - Physeter Localization: Sparse coding & Fisher vectors <br>11:20 Mathias - Physeter Multiple Range estim. <br>11:30 Mishchenko - Bat tracking with LM acceleration <br> <br> <br>11:35 * Non Human speech processing <br>11:35 Trone - Speech of Dolphin : transient formant ? <br>11:45 Janvier - Speech of Monkey ? <br>11:50 Shokoohi - Mouse Genome & Biocoustics <br> <br>12:10 Lunch break <br>13:30 Posters (1/2) & Discussion <br> <br>15:30 * Bird song multilabel multi-instance Challenge Kaggle NIPS4B <br>15:30 Dufour - Challenge overview / Baseline <br>15:40 Lasseck - Winner of Kaggle Bird NIPS4B <br>15:48 Stowell - http://vimeo.com/81440385 <br>15:55 Potamitis - Bird syllabic classif. <br> <br>16:00 * Whale song Challenge <br>16:00 Mercado - www.youtube.com/watch?v=YHM18JmC9Eo <br>16:05 Potamitis - Eff. syllabic clustering <br>16:10 Bartcus - Infinite Parcim. GMM <br>16:15 Cazeau - Chaos and whale song <br>16:20 Randall - Gabor Scatnet filtering <br> <br> <br>16:20 Posters (2/2) & Discussion <br>17:00 Coffee break <br> <br>17:30 * Feature learning <br>17:30 Elie - Data driven bearing features <br> <br>17:50 * BIG Bioacoutic DATA <br>17:50 Hoeberechts - Canadian submarine bioacoustic Big Data <br>18:05 Kinderman - Antartic submarine bioacoustic Big Data <br>18:20 Glotin - Mediterranean submarine Big Data <br>18:25 Panel Discussion : IA & Bioacoustics <br> <br>18:45 Closing

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