Workshop Report: Detection and Classification in Marine Bioacoustics
with Deep Learning
- URL: http://arxiv.org/abs/2002.08249v1
- Date: Tue, 18 Feb 2020 15:33:06 GMT
- Title: Workshop Report: Detection and Classification in Marine Bioacoustics
with Deep Learning
- Authors: Fabio Frazao, Bruno Padovese, Oliver S. Kirsebom
- Abstract summary: About 30 researchers gathered in Victoria, BC, Canada, for the workshop "Detection and Classification in Marine Bioacoustics with Deep Learning"
The workshop was attended by marine biologists, data scientists, and computer scientists coming from both Canadian coasts and the U.S.
- Score: 0.618778092044887
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: On 21-22 November 2019, about 30 researchers gathered in Victoria, BC,
Canada, for the workshop "Detection and Classification in Marine Bioacoustics
with Deep Learning" organized by MERIDIAN and hosted by Ocean Networks Canada.
The workshop was attended by marine biologists, data scientists, and computer
scientists coming from both Canadian coasts and the US and representing a wide
spectrum of research organizations including universities, government
(Fisheries and Oceans Canada, National Oceanic and Atmospheric Administration),
industry (JASCO Applied Sciences, Google, Axiom Data Science), and
non-for-profits (Orcasound, OrcaLab). Consisting of a mix of oral
presentations, open discussion sessions, and hands-on tutorials, the workshop
program offered a rare opportunity for specialists from distinctly different
domains to engage in conversation about deep learning and its promising
potential for the development of detection and classification algorithms in
underwater acoustics. In this workshop report, we summarize key points from the
presentations and discussion sessions.
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