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Sound Event Detection Guided by Semantic Contexts of Scenes

Authors :
Tonami, Noriyuki
Imoto, Keisuke
Nagase, Ryotaro
Okamoto, Yuki
Fukumori, Takahiro
Yamashita, Yoichi
Publication Year :
2021

Abstract

Some studies have revealed that contexts of scenes (e.g., "home," "office," and "cooking") are advantageous for sound event detection (SED). Mobile devices and sensing technologies give useful information on scenes for SED without the use of acoustic signals. However, conventional methods can employ pre-defined contexts in inference stages but not undefined contexts. This is because one-hot representations of pre-defined scenes are exploited as prior contexts for such conventional methods. To alleviate this problem, we propose scene-informed SED where pre-defined scene-agnostic contexts are available for more accurate SED. In the proposed method, pre-trained large-scale language models are utilized, which enables SED models to employ unseen semantic contexts of scenes in inference stages. Moreover, we investigated the extent to which the semantic representation of scene contexts is useful for SED. Experimental results performed with TUT Sound Events 2016/2017 and TUT Acoustic Scenes 2016/2017 datasets show that the proposed method improves micro and macro F-scores by 4.34 and 3.13 percentage points compared with conventional Conformer- and CNN--BiGRU-based SED, respectively.<br />Comment: Accepted to ICASSP 2022

Subjects

Subjects :
Computer Science - Sound

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2110.03243
Document Type :
Working Paper