Presentation 2022-05-13
A serial anomalous sound detection method using outlier exposure based on two types of binary classification
Ibuki Kuroyanagi, Tomoki Hayashi, Kazuya Takeda, Tomoki Toda,
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Abstract(in Japanese) (See Japanese page)
Abstract(in English) Anomalous sound detection systems use only normal sound data to detect unknown, atypical sounds. Conventional methods use a serial method, a combination of outlier exposure, which classifies normal and pseudo-anomalous data and obtains embedding, and inlier modeling, which models the probability distribution of the embedding. Outlier exposure has a difficulty in training a good classifier when normal data and pseudo-anomalous data are too similar or too different. To explicitly distinguish cases where normal data and pseudo-anomalous data are too similar or too different, the proposed method performs two types of binary classification tasks when training outlier exposure. It allows more anomalous data to be detected. Evaluation results on the DCASE~2021 Task~2 dataset show that the proposed method, with a single model, outperforms the top methods that ensemble multiple models by 2.1,% in the harmonic mean of AUC and pAUC ($p=0.1$).
Keyword(in Japanese) (See Japanese page)
Keyword(in English) anomalous sound detection / outlier exposure / inlier modeling / hypersphere / multi-task learning
Paper # EA2022-8
Date of Issue 2022-05-06 (EA)

Conference Information
Committee EA
Conference Date 2022/5/13(1days)
Place (in Japanese) (See Japanese page)
Place (in English) Online
Topics (in Japanese) (See Japanese page)
Topics (in English)
Chair Yoshinobu Kajikawa(Kansai Univ.)
Vice Chair Kenichi Furuya(Oita Univ.) / Shoichi Koyama(Univ. of Tokyo)
Secretary Kenichi Furuya(NTT) / Shoichi Koyama(RitsumeikanUniv.)
Assistant Yukou Wakabayashi(Tokyo Metropolitan Univ.) / Tatsuya Komatsu(LINE)

Paper Information
Registration To Technical Committee on Engineering Acoustics
Language JPN
Title (in Japanese) (See Japanese page)
Sub Title (in Japanese) (See Japanese page)
Title (in English) A serial anomalous sound detection method using outlier exposure based on two types of binary classification
Sub Title (in English)
Keyword(1) anomalous sound detection
Keyword(2) outlier exposure
Keyword(3) inlier modeling
Keyword(4) hypersphere
Keyword(5) multi-task learning
1st Author's Name Ibuki Kuroyanagi
1st Author's Affiliation Nagoya University(Nagoya Univ.)
2nd Author's Name Tomoki Hayashi
2nd Author's Affiliation Nagoya University/Human Dataware Lab. Co. Ltd.(Nagoya Univ./HDL/)
3rd Author's Name Kazuya Takeda
3rd Author's Affiliation Nagoya University(Nagoya Univ.)
4th Author's Name Tomoki Toda
4th Author's Affiliation Nagoya University(Nagoya Univ.)
Date 2022-05-13
Paper # EA2022-8
Volume (vol) vol.122
Number (no) EA-20
Page pp.pp.35-40(EA),
#Pages 6
Date of Issue 2022-05-06 (EA)