We present the task description and discussion on the results of the DCASE 2021 Challenge Task 2. In 2020, we organized an unsupervised anomalous sound detection (ASD) task, identifying whether a given sound was normal or anomalous without anomalous training data. In 2021, we organized an advanced unsupervised ASD task under domain-shift conditions, which focuses on the inevitable problem of the practical use of ASD systems. The main challenge of this task is to detect unknown anomalous sounds where the acoustic characteristics of the training and testing samples are different, i.e., domain-shifted. This problem frequently occurs due to changes in seasons, manufactured products, and/or environmental noise. We received 75 submissions from 26 teams, and several novel approaches have been developed in this challenge. On the basis of the analysis of the evaluation results, we found that there are two types of remarkable approaches that TOP-5 winning teams adopted: 1) ensemble approaches of ``outlier exposure'' (OE)-based detectors and ``inlier modeling'' (IM)-based detectors and 2) approaches based on IM-based detection for features learned in a machine-identification task.
翻译:2. 2020年,我们组织了一项不受监督的异常声音探测(ASD)任务,确定某一声音是否正常或异常,没有异常的培训数据;2021年,我们根据地变条件安排了一项未经监督的高级异常任务,重点是实际使用ASD系统这一不可避免的问题;这项任务的主要挑战是,在培训和测试样品的声学特征不同的地方,即按域变换的,探测出未知的异常声音;这个问题经常发生于季节、制成品和/或环境噪音的变化;我们收到26个小组提交的75份材料,并针对这一挑战制定了若干新办法;根据对评价结果的分析,我们发现托普-5队采用两种引人注目的方法:(1)基于“OE”的检测器和“Inlier 建模”的检测器和2种基于基于IM检测仪的检测特征的“OE”检测器和“Inlier 建模”检测器方法。