Anomalous sound detection based on interpolation deep neural network
- URL: http://arxiv.org/abs/2005.09234v1
- Date: Tue, 19 May 2020 06:12:41 GMT
- Title: Anomalous sound detection based on interpolation deep neural network
- Authors: Kaori Suefusa, Tomoya Nishida, Harsh Purohit, Ryo Tanabe, Takashi
Endo, and Yohei Kawaguchi
- Abstract summary: We propose an approach to anomalous detection in which the model utilizes multiple frames of a spectrogram.
We show that the proposed approach achieved 27% improvement based on the standard AUC score.
- Score: 9.309962824653033
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: As the labor force decreases, the demand for labor-saving automatic anomalous
sound detection technology that conducts maintenance of industrial equipment
has grown. Conventional approaches detect anomalies based on the reconstruction
errors of an autoencoder. However, when the target machine sound is
non-stationary, a reconstruction error tends to be large independent of an
anomaly, and its variations increased because of the difficulty of predicting
the edge frames. To solve the issue, we propose an approach to anomalous
detection in which the model utilizes multiple frames of a spectrogram whose
center frame is removed as an input, and it predicts an interpolation of the
removed frame as an output. Rather than predicting the edge frames, the
proposed approach makes the reconstruction error consistent with the anomaly.
Experimental results showed that the proposed approach achieved 27% improvement
based on the standard AUC score, especially against non-stationary machinery
sounds.
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