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Anomaly Detection Based on an Ensemble of Dereverberation and Anomalous Sound Extraction

机译:基于DERE失去的集合和异常声音提取的异常检测

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To develop a sound-monitoring system for checking machine health, a method for detecting anomalous sounds is proposed. In real environments such as factories, reverberation and background noise are mixed in an observed signal, so detection performance is degraded. It can be expected that detection performance will be improved by using a front-end algorithm for acoustic signal processing such as dereverberation and denoising. However, any algorithm has pros and cons, so it is not possible to choose the best front-end algorithm only. To solve this problem, the proposed method is based on a front-end ensemble consisting of a blind-dereverberation algorithm and multiple anomalous-sound-extraction algorithms. Experimental results indicate that the proposed method improves detection performance significantly.
机译:为了开发用于检查机器健康的声音监控系统,提出了一种检测异常声音的方法。在诸如工厂的实际环境中,混响和背景噪声在观察到的信号中混合,因此检测性能降低。可以预期通过使用诸如DERE失去和去噪的声信号处理的前端算法来改善检测性能。但是,任何算法都有优点和缺点,因此无法选择最佳前端算法。为了解决这个问题,所提出的方法基于由盲 - DERERATION算法和多个异常声抽毒算法组成的前端组合。实验结果表明,该方法显着提高了检测性能。

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