Improvements of Discriminative Feature Space Training for Anomalous Sound Detection in Unlabeled Conditions
About
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.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Anomalous Sound Detection | DCASE 2020 (dev) | Official Performance Metric90.4 | 46 | |
| Anomalous Sound Detection | DCASE T2 DG sec-eval 2023 | HMean65.5 | 27 | |
| Anomalous Sound Detection | DCASE T2 DG 2023 (sec dev) | HMean63.5 | 26 | |
| Anomalous Sound Detection | DCASE 2023 (eval) | Official Performance Score72 | 17 | |
| Anomalous Sound Detection | DCASE 2023 (dev) | Performance Metric67.2 | 17 | |
| Anomalous Sound Detection | DCASE 2020 | Dataset-wise Harmonic Mean91.9 | 16 | |
| Anomalous Sound Detection | DCASE 2023 | Dataset-wise Harmonic Mean68 | 16 | |
| Anomalous Sound Detection | DCASE 2024 | Dataset-wise Harmonic Mean64.7 | 16 | |
| Anomalous Sound Detection | DCASE 2024 (eval) | Official Performance Metric62 | 16 | |
| Anomalous Sound Detection | DCASE 2020 (eval) | Official Performance Metric93.5 | 15 |