Anomalous sound detection (ASD) is the task of identifying whether the sound emitted from an object is normal or anomalous. In some cases, early detection of this anomaly can prevent several problems. This article presents a Systematic Review (SR) about studies related to Anamolous Sound Detection using Machine Learning (ML) techniques. This SR was conducted through a selection of 31 (accepted studies) studies published in journals and conferences between 2010 and 2020. The state of the art was addressed, collecting data sets, methods for extracting features in audio, ML models, and evaluation methods used for ASD. The results showed that the ToyADMOS, MIMII, and Mivia datasets, the Mel-frequency cepstral coefficients (MFCC) method for extracting features, the Autoencoder (AE) and Convolutional Neural Network (CNN) models of ML, the AUC and F1-score evaluation methods were most cited.
翻译:异常声音探测(ASD)的任务是确定物体发出的声音是否正常或异常,在某些情况下,早期发现这种异常现象可以防止若干问题,文章对利用机器学习(ML)技术进行超声波声音探测的研究进行了系统审查(SR),通过2010年至2020年在期刊和会议上发表的31项(公认的研究)研究报告进行,讨论了最新技术,收集了数据集,提取音频、ML模型和用于ASD的评估方法中的特征的方法,结果显示,最多引用了ToyADMOS、MIMII和Mivia数据集、Mel-频率螺旋系数(MFCC)提取特征方法、Autoencoder(AE)和Convolual Neural(CN)模型(ML)、AUC和F1-核心评价方法。