基于ID约束的变压器自编码器的无监督异常声检测

IF 2.4 3区 计算机科学
Jian Guan, Youde Liu, Qiuqiang Kong, Feiyang Xiao, Qiaoxi Zhu, Jiantong Tian, Wenwu Wang
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引用次数: 0

摘要

无监督异常声检测(ASD)的目的是在只有正常声音数据的情况下检测设备的未知异常声。自编码器(AE)和基于自监督学习的方法是两种主流方法。然而,基于ae的方法可能会受到限制,因为从正常声音中学习到的特征也可能适合异常声音,从而降低了模型从声音中检测异常的能力。即使是同一类型的机器,自监督方法也不总是稳定的,并且表现不同。此外,异常的声音可能是短暂的,使其更难与正常的声音区分。针对无监督ASD,提出了一种基于id约束变压器的自编码器(IDC-TransAE)结构,该结构具有加权异常评分计算。机器ID通过引入简单的ID分类器来约束基于变压器的自编码器(TransAE)的潜在空间,以学习相同机器类型的分布差异,增强模型识别异常声音的能力。引入加权异常分值计算,突出出现时间较短的异常事件的异常分值。在DCASE 2020 Challenge Task2开发数据集上进行的实验证明了我们提出的方法的有效性和优越性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transformer-based autoencoder with ID constraint for unsupervised anomalous sound detection
Abstract Unsupervised anomalous sound detection (ASD) aims to detect unknown anomalous sounds of devices when only normal sound data is available. The autoencoder (AE) and self-supervised learning based methods are two mainstream methods. However, the AE-based methods could be limited as the feature learned from normal sounds can also fit with anomalous sounds, reducing the ability of the model in detecting anomalies from sound. The self-supervised methods are not always stable and perform differently, even for machines of the same type. In addition, the anomalous sound may be short-lived, making it even harder to distinguish from normal sound. This paper proposes an ID-constrained Transformer-based autoencoder (IDC-TransAE) architecture with weighted anomaly score computation for unsupervised ASD. Machine ID is employed to constrain the latent space of the Transformer-based autoencoder (TransAE) by introducing a simple ID classifier to learn the difference in the distribution for the same machine type and enhance the ability of the model in distinguishing anomalous sound. Moreover, weighted anomaly score computation is introduced to highlight the anomaly scores of anomalous events that only appear for a short time. Experiments performed on DCASE 2020 Challenge Task2 development dataset demonstrate the effectiveness and superiority of our proposed method.
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来源期刊
Journal on Audio Speech and Music Processing
Journal on Audio Speech and Music Processing Engineering-Electrical and Electronic Engineering
CiteScore
4.10
自引率
4.20%
发文量
28
期刊介绍: The aim of “EURASIP Journal on Audio, Speech, and Music Processing” is to bring together researchers, scientists and engineers working on the theory and applications of the processing of various audio signals, with a specific focus on speech and music. EURASIP Journal on Audio, Speech, and Music Processing will be an interdisciplinary journal for the dissemination of all basic and applied aspects of speech communication and audio processes.
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