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SeCoST: Sequential Co-Supervision For Large Scale Weakly Labeled Audio Event Detection
- Citation Author(s):
- Submitted by:
- Anurag Kumar
- Last updated:
- 13 May 2020 - 11:26pm
- Document Type:
- Presentation Slides
- Document Year:
- 2020
- Event:
- Presenters:
- Anurag Kumar
- Paper Code:
- 5986
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Weakly supervised learning algorithms are critical for scaling audio event detection to several hundreds of sound categories. Such learning models should not only disambiguate sound events efficiently with minimal class-specific annotation but also be robust to label noise, which is more apparent with weak labels instead of strong annotations. In this work, we propose a new framework for designing learning models with weak supervision by bridging ideas from sequential learning and knowledge distillation. We refer to the proposed methodology as SeCoST (pronounced Sequest) — Sequential Co-supervision for training generations of Students. SeCoST incrementally builds a cascade of student-teacher pairs via a novel knowledge transfer method. Our evaluations on Audioset (the largest weakly labeled dataset available) show that SeCoST achieves a mean average precision of 0.383 while outperforming prior state of the art by a considerable margin.