Publication Type: | Journal Article |
Year of Publication: | 2018 |
Auteurs: | Glotin, Spong, Symonds, Roger, Balestriero, Ferrari, Poupard, Towers, Veirs, Marxer, Giraudet, Pilkinton, Veirs, Wood, Ford, Dakin |
Journal: | The Journal of the Acoustical Society of America |
Volume: | 144 |
Uitgave: | 3 |
Pagination: | 1776 - 1777 |
Date Published: | Jan-09-2018 |
ISSN: | 0001-4966 |
Samenvatting: | During February and March, 2018, a lone sperm whale known as Yukusam was recorded first by Orcalab in Johnstone Strait and subsequently on multiple hydrophones within the Salish Sea [1]. We learn and denoise these multichannel clicks trains with AutoEncoders Convolutional Neural Net (CNN). Then, we build a map of the echolocations to elucidate variations in the acoustic behavior of this unique animal over time, in different environments and distinct levels of boat noise. If CNN approximates an optimal kernel decomposition, it requires large amounts of data. Via spline functionals we offer analytics kernels with learnable coefficients do reduce it. We [1-3] identify the analytical mother wavelet to represent the input signal to directly learn the wavelet support from scratch by gradient descend on the parameters of cubic splines [2]. Supplemental material http://sabiod.org/yukusam [1] Balestriero, Roger, Glotin, Baraniuk, Semi-Supervised Learning via New Deep Network Inversion, arXiv preprint arXiv:1711.04313, 2017 [2] Balestriero, Cosentino, Glotin, Baraniuk, WaveletNet : Spline Filters for End-to-End Deep Learning, Int. Conf. on MachineLearning, ICML, Stockholm, http://sabiod.org/bib, 2018 [3] Spong P., Symonds H., et al., Joint Observatories Following a Single male Cachalot during 12 weeks—The Yukusam story, ASA 2018. |
URL: | http://asa.scitation.org/doi/10.1121/1.5067855 |
DOI: | 10.1121/1.5067855 |
Short Title: | The Journal of the Acoustical Society of America |
Deep learning for ethoacoustical mapping: Application to a single Cachalot long term recording on joint observatories in Vancouver Island
BioAcoustica ID:
53316
Taxonomic name: