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Improvements of Discriminative Feature Space Training for Anomalous Sound Detection in Unlabeled Conditions

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In anomalous sound detection, the discriminative method has demonstrated superior performance. This approach constructs a discriminative feature space through the classification of the meta-information labels for normal sounds. This feature space reflects the differences in machine sounds and effectively captures anomalous sounds. However, its performance significantly degrades when the meta-information labels are missing. In this paper, we improve the performance of a discriminative method under unlabeled conditions by two approaches. First, we enhance the feature extractor to perform better under unlabeled conditions. Our enhanced feature extractor utilizes multi-resolution spectrograms with a new training strategy. Second, we propose various pseudo-labeling methods to effectively train the feature extractor. The experimental evaluations show that the proposed feature extractor and pseudo-labeling methods significantly improve performance under unlabeled conditions.

Takuya Fujimura, Ibuki Kuroyanagi, Tomoki Toda• 2024

Related benchmarks

TaskDatasetResultRank
Anomalous Sound DetectionDCASE 2020 (dev)
Official Performance Metric90.4
46
Anomalous Sound DetectionDCASE T2 DG sec-eval 2023
HMean65.5
27
Anomalous Sound DetectionDCASE T2 DG 2023 (sec dev)
HMean63.5
26
Anomalous Sound DetectionDCASE 2023 (eval)
Official Performance Score72
17
Anomalous Sound DetectionDCASE 2023 (dev)
Performance Metric67.2
17
Anomalous Sound DetectionDCASE 2020
Dataset-wise Harmonic Mean91.9
16
Anomalous Sound DetectionDCASE 2023
Dataset-wise Harmonic Mean68
16
Anomalous Sound DetectionDCASE 2024
Dataset-wise Harmonic Mean64.7
16
Anomalous Sound DetectionDCASE 2024 (eval)
Official Performance Metric62
16
Anomalous Sound DetectionDCASE 2020 (eval)
Official Performance Metric93.5
15
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