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Temporal Pooling Strategies for Training-Free Anomalous Sound Detection with Self-Supervised Audio Embeddings

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Training-free anomalous sound detection (ASD) based on pre-trained audio embedding models has recently garnered significant attention, as it enables the detection of anomalous sounds using only normal reference data while offering improved robustness under domain shifts. However, existing embedding-based approaches almost exclusively rely on temporal mean pooling, while alternative pooling strategies have so far only been explored for spectrogram-based representations. Consequently, the role of temporal pooling in training-free ASD with pre-trained embeddings remains insufficiently understood. In this paper, we present a systematic evaluation of temporal pooling strategies across multiple state-of-the-art audio embedding models. We propose relative deviation pooling (RDP), an adaptive pooling method that emphasizes informative temporal deviations, and introduce a hybrid pooling strategy that combines RDP with generalized mean pooling. Experiments on five benchmark datasets demonstrate that the proposed methods consistently outperform mean pooling and achieve state-of-the-art performance for training-free ASD, including results that surpass all previously reported trained systems and ensembles on the DCASE2025 ASD dataset.

Kevin Wilkinghoff, Sarthak Yadav, Zheng-Hua Tan• 2026

Related benchmarks

TaskDatasetResultRank
Anomalous Sound DetectionDCASE 2020 (dev)
Official Performance Metric86.8
46
Anomalous Sound DetectionDCASE 2023 (eval)
Official Performance Score70.8
17
Anomalous Sound DetectionDCASE 2023 (dev)
Performance Metric65.7
17
Anomalous Sound DetectionDCASE 2023
Dataset-wise Harmonic Mean68.2
16
Anomalous Sound DetectionDCASE 2020
Dataset-wise Harmonic Mean87.1
16
Anomalous Sound DetectionDCASE 2024 (eval)
Official Performance Metric60.9
16
Anomalous Sound DetectionDCASE 2024
Dataset-wise Harmonic Mean59.9
16
Anomalous Sound DetectionDCASE 2020 (eval)
Official Performance Metric87.4
15
Anomalous Sound DetectionDCASE 2024 (dev)
Performance Score58.9
14
Anomalous Sound DetectionDCASE 2022
Dataset-wise Harmonic Mean65.6
12
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