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AD-YOLO: You Look Only Once in Training Multiple Sound Event Localization and Detection

AD-YOLO, an adaptation of YOLO for sound event localization and detection, improves performance and robustness in polyphony environments by assigning class responsibility to DOA predictions.

Year
2023
Venue
arXiv 2023
Authors
4
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arxiv.org/abs/2303.15703ARXIV-DEFAULT
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Abstract

Sound event localization and detection (SELD) combines the identification of sound events with the corresponding directions of arrival (DOA). Recently, event-oriented track output formats have been adopted to solve this problem; however, they still have limited generalization toward real-world problems in an unknown polyphony environment. To address the issue, we proposed an angular-distance-based multiple SELD (AD-YOLO), which is an adaptation of the "You Only Look Once" algorithm for SELD. The AD-YOLO format allows the model to learn sound occurrences location-sensitively by assigning class responsibility to DOA predictions. Hence, the format enables the model to handle the polyphony problem, regardless of the number of sound overlaps. We evaluated AD-YOLO on DCASE 2020-2022 challenge Task 3 datasets using four SELD objective metrics. The experimental results show that AD-YOLO achieved outstanding performance overall and also accomplished robustness in class-homogeneous polyphony environments.

Authors

4