论文标题

基于插值深神经网络异常检测

Anomalous sound detection based on interpolation deep neural network

论文作者

Suefusa, Kaori, Nishida, Tomoya, Purohit, Harsh, Tanabe, Ryo, Endo, Takashi, Kawaguchi, Yohei

论文摘要

随着劳动力的减少,对维护工业设备进行维护的自动避免劳动异常检测技术的需求已经增长。常规方法根据自动编码器的重建错误检测异常。但是,当目标机声音是非平稳的时,重建误差往往很大,而与异常无关,并且由于难以预测边缘帧的困难,其变化会增加。为了解决问题,我们提出了一种异常检测方法,其中模型利用了频谱图的多个帧图作为输入,并预测了去除框架作为输出的插值。所提出的方法没有预测边缘帧,而是使重建误差与异常一致。实验结果表明,根据标准AUC分数,尤其是针对非平稳机械声音,提出的方法取得了27%的提高。

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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