Thanks to the development of deep learning, research on machine anomalous sound detection based on self-supervised learning has made remarkable achievements. However, there are differences in the acoustic characteristics of the test set and the training set under different operating conditions of the same machine (domain shifts). It is challenging for the existing detection methods to learn the domain shifts features stably with low computation overhead. To address these problems, we propose a domain shift-oriented machine anomalous sound detection model based on self-supervised learning (TranSelf-DyGCN) in this paper. Firstly, we design a time-frequency domain feature modeling network to capture global and local spatial and time-domain features, thus improving the stability of machine anomalous sound detection stability under domain shifts. Then, we adopt a Dynamic Graph Convolutional Network (DyGCN) to model the inter-dependence relationship between domain shifts features, enabling the model to perceive domain shifts features efficiently. Finally, we use a Domain Adaptive Network (DAN) to compensate for the performance decrease caused by domain shifts, making the model adapt to anomalous sound better in the self-supervised environment. The performance of the suggested model is validated on DCASE 2020 task 2 and DCASE 2022 task 2.
翻译:由于深层学习的发展,基于自我监督学习的机器异常健康检测研究取得了显著成就,然而,测试集的声学特点和在同一机器不同操作条件下的培训(地旋变换)存在差异,对于现有探测方法来说,以低计算间接费用逐步学习域变换特征具有挑战性;为了解决这些问题,我们提议在本文中建立一个基于自监督学习的域变换导向机器异常健康检测模型。首先,我们设计了一个时间-频率域域特征模型网络,以捕捉全球和地方空间和时间常态特征,从而改善机器异常变换状态下机器变异声音检测稳定性。然后,我们采用动态图表变迁网络(DyGCN)来模拟域变换特征之间的相互依存关系,使模型能够高效地观察域变换特征。最后,我们使用一个长期适应网络来弥补域变换导致的性能下降,使模型在2020年2月自我监督的DCASASAS任务中,使模型适应到2020年2年的模型运行环境更加完善。