ToyADMOS2 dataset: Another dataset of miniature-machine operating sounds for anomalous sound detection under domain shift conditions

N. Harada, Daisuke Niizumi, Daiki Takeuchi, Yasunori Ohishi, Masahiro Yasuda, Shoichiro Saito
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Abstract

This paper proposes a new large-scale dataset called "ToyADMOS2" for anomaly detection in machine operating sounds (ADMOS). As did for our previous ToyADMOS dataset, we collected a large number of operating sounds of miniature machines (toys) under normal and anomaly conditions by deliberately damaging them but extended with providing controlled depth of damages in anomaly samples. Since typical application scenarios of ADMOS often require robust performance under domain-shift conditions, the ToyADMOS2 dataset is designed for evaluating systems under such conditions. The released dataset consists of two sub-datasets for machine-condition inspection: fault diagnosis of machines with geometrically fixed tasks and fault diagnosis of machines with moving tasks. Domain shifts are represented by introducing several differences in operating conditions, such as the use of the same machine type but with different machine models and parts configurations, different operating speeds, microphone arrangements, etc. Each sub-dataset contains over 27 k samples of normal machine-operating sounds and over 8 k samples of anomalous sounds recorded with five to eight microphones. The dataset is freely available for download at this https URL and this https URL.
ToyADMOS2数据集:另一个用于域移位条件下异常声音检测的小型机器操作声音数据集
本文提出了一种新的用于机器操作声音异常检测的大规模数据集“ToyADMOS2”。与之前的ToyADMOS数据集一样,我们收集了大量在正常和异常条件下的微型机器(玩具)的操作声音,通过故意破坏它们,并在异常样本中提供可控的损坏深度来扩展。由于ADMOS的典型应用场景通常需要在域移位条件下的鲁棒性能,ToyADMOS2数据集被设计用于在这种条件下评估系统。发布的数据集包括两个用于机器状态检测的子数据集:具有几何固定任务的机器故障诊断和具有运动任务的机器故障诊断。领域转移是通过引入几种不同的操作条件来表示的,例如使用相同的机器类型,但不同的机器型号和部件配置,不同的操作速度,麦克风安排等。每个子数据集包含超过27k个正常机器操作声音样本和超过8k个用5到8个麦克风记录的异常声音样本。数据集可以在这个https URL和这个https URL上免费下载。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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