On Multitask Loss Function for Audio Event Detection and Localization

H. Phan, L. Pham, P. Koch, N. Q. K. Duong, I. McLoughlin, A. Mertins

Abstract

Audio event localization and detection (SELD) have been commonly tackled using multitask models. Such a model usually consists of a multi-label event classification branch with sigmoid cross-entropy loss for event activity detection and a regression branch with mean squared error loss for direction-of-arrival estimation. In this work, we propose a multitask regression model, in which both (multi-label) event detection and localization are formulated as regression problems and use the mean squared error loss homogeneously for model training. We show that the common combination of heterogeneous loss functions causes the network to underfit the data whereas the homogeneous mean squared error loss leads to better convergence and performance. Experiments on the development and validation sets of the DCASE 2020 SELD task demonstrate that the proposed system also outperforms the DCASE 2020 SELD baseline across all the detection and localization metrics, reducing the overall SELD error (the combined metric) by approximately 10% absolute.
OriginalspracheEnglisch
Seiten160-164
Seitenumfang5
PublikationsstatusVeröffentlicht - 09.2020
Veranstaltung5th Workshop on Detection and Classification of Acoustic Scenes and Events - Virtual, Tokyo, Japan
Dauer: 02.11.202004.11.2020

Tagung, Konferenz, Kongress

Tagung, Konferenz, Kongress5th Workshop on Detection and Classification of Acoustic Scenes and Events
KurztitelDCASE 2020
Land/GebietJapan
OrtTokyo
Zeitraum02.11.2004.11.20

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