Deep Autoencoding GMM-based Unsupervised Anomaly Detection in Acoustic
Signals and its Hyper-parameter Optimization
- URL: http://arxiv.org/abs/2009.12042v1
- Date: Fri, 25 Sep 2020 06:14:59 GMT
- Title: Deep Autoencoding GMM-based Unsupervised Anomaly Detection in Acoustic
Signals and its Hyper-parameter Optimization
- Authors: Harsh Purohit, Ryo Tanabe, Takashi Endo, Kaori Suefusa, Yuki Nikaido,
and Yohei Kawaguchi
- Abstract summary: Existing approaches to acoustic signal-based unsupervised anomaly detection have poor anomaly-detection performance.
We propose a new method based on a deep autoencoding Gaussian mixture model with hyper- parameter optimization (DAGMM-HO)
Our evaluation of the proposed method with experimental data of the industrial fans showed that it significantly outperforms previous approaches and achieves up to a 20% improvement based on the standard AUC score.
- Score: 8.226263448238393
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Failures or breakdowns in factory machinery can be costly to companies, so
there is an increasing demand for automatic machine inspection. Existing
approaches to acoustic signal-based unsupervised anomaly detection, such as
those using a deep autoencoder (DA) or Gaussian mixture model (GMM), have poor
anomaly-detection performance. In this work, we propose a new method based on a
deep autoencoding Gaussian mixture model with hyper-parameter optimization
(DAGMM-HO). In our method, the DAGMM-HO applies the conventional DAGMM to the
audio domain for the first time, with the idea that its total optimization on
reduction of dimensions and statistical modelling will improve the
anomaly-detection performance. In addition, the DAGMM-HO solves the
hyper-parameter sensitivity problem of the conventional DAGMM by performing
hyper-parameter optimization based on the gap statistic and the cumulative
eigenvalues. Our evaluation of the proposed method with experimental data of
the industrial fans showed that it significantly outperforms previous
approaches and achieves up to a 20% improvement based on the standard AUC
score.
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