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Distributed Collaborative Anomalous Sound Detection by Embedding Sharing


Conceitos essenciais
Collaborative method using embeddings improves anomalous sound detection.
Resumo

I. Introduction

  • Shortage of maintenance workers drives research on anomalous sound detection.
  • Unsupervised methods may lack accuracy due to limited anomalous samples.

II. Problem Statement

  • Focus on unsupervised ASD with single server and multiple clients setup.
  • Objective is accurate ASD model for each client while maintaining data privacy.

III. Relation to Prior Work

  • Outlier exposure enhances detection performance with data from various machines or conditions.
  • Proposed method allows outlier exposure even with one machine per client under unique conditions.

IV. Distributed Collaborative ASD with Embedding Sharing

  • Algorithm presented for collaborative learning and anomaly detection using embeddings.
  • Approach enables high accuracy in extreme non-IID cases compared to federated and split learning methods.

V. Experiments

  • Used DCASE 2020 dataset for experiments on different machine types.
  • Results show proposed method using OpenL3 pre-trained model improves AUC by 6.8% on average compared to other models.

VI. Conclusion

  • Proposed method facilitates collaborative learning for accurate ASD while preserving data confidentiality.
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Estatísticas
Experiments showed that our proposed method improves the AUC of anomalous sound detection by an average of 6.8%.
Citações

Principais Insights Extraídos De

by Kota Dohi,Yo... às arxiv.org 03-26-2024

https://arxiv.org/pdf/2403.16610.pdf
Distributed collaborative anomalous sound detection by embedding sharing

Perguntas Mais Profundas

How can the proposed method be adapted for other types of anomaly detection

The proposed method of distributed collaborative anomalous sound detection by embedding sharing can be adapted for other types of anomaly detection by modifying the pre-trained models and the anomaly detection techniques used. For instance, in the context of image anomaly detection, pre-trained models like ResNet or VGG could be employed to extract embeddings from images. These embeddings can then be shared among clients to detect anomalies through outlier exposure using methods such as Isolation Forest or One-Class SVM. By adjusting the input data and the anomaly detection algorithms while maintaining the core concept of sharing embeddings for collaborative learning, this approach can be extended to various domains beyond sound data.

What are the potential drawbacks or limitations of utilizing embeddings for collaborative learning

While utilizing embeddings for collaborative learning offers advantages in terms of privacy preservation and model performance improvement, there are potential drawbacks and limitations to consider. One limitation is that not all information present in raw data may be captured effectively in embeddings, leading to a loss of nuanced details during feature extraction. Additionally, embedding size and dimensionality reduction techniques may result in information compression that could impact anomaly detection accuracy negatively. Moreover, if the pre-trained models used do not align well with the specific task at hand or if they introduce biases into the embeddings, it might hinder overall model performance.

How might advancements in pre-trained models impact the effectiveness of the proposed approach

Advancements in pre-trained models have a significant impact on the effectiveness of the proposed approach for distributed collaborative anomalous sound detection by embedding sharing. As newer pre-trained models are developed with enhanced capabilities for feature extraction and representation learning across different modalities (such as audio, text, or images), they can potentially improve both ID-classification accuracy and subsequent anomaly detection performance based on these learned representations. Furthermore, advancements in self-supervised learning techniques applied during pre-training can lead to more robust embeddings that capture intricate patterns within data distributions accurately. By leveraging state-of-the-art pre-trained models tailored to specific tasks efficiently within this framework, it is possible to enhance anomaly detection outcomes significantly.
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