对可本地解释的异常检测的引导注意

IF 4.2 3区 计算机科学 Q2 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
Pasquale Coscia, Angelo Genovese, Vincenzo Piuri, Fabio Scotti
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引用次数: 0

摘要

在工业计算机视觉应用中,异常检测(AD)是保证产品质量和系统可靠性的关键任务。然而,许多现有的AD系统采用模块化设计,将分类与检测和定位任务分离开来。尽管这种分离简化了模型开发,但它通常限制了通用性,并降低了实际场景中的实际有效性。深度神经网络为统一解决方案提供了强大的潜力。尽管如此,目前大多数方法仍然将检测、定位和分类视为独立的组件,阻碍了更集成和高效的AD管道的发展。为了弥补这一差距,我们提出了OneN(一个网络),这是一个在单一框架内执行检测、定位和分类的统一架构。我们的方法将高容量卷积神经网络(CNN)的知识提炼成在不同监督水平下训练的基于注意力的体系结构。由此产生的注意图充当可解释的伪分割掩码,使异常区域的精确定位成为可能。为了进一步提高定位质量,我们引入了渐进式焦点丢失,引导每一层的注意力图集中在关键特征上。我们通过在标准化和定制的工业基准上进行大量实验来验证我们的方法。即使在弱监督下,它也可以提高性能,减少注释工作,并促进工业环境中的可伸缩部署。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
OneN: Guided attention for natively-explainable anomaly detection
In industrial computer vision applications, anomaly detection (AD) is a critical task for ensuring product quality and system reliability. However, many existing AD systems follow a modular design that decouples classification from detection and localization tasks. Although this separation simplifies model development, it often limits generalizability and reduces practical effectiveness in real-world scenarios. Deep neural networks offer strong potential for unified solutions. Nonetheless, most current approaches still treat detection, localization and classification as separate components, hindering the development of more integrated and efficient AD pipelines. To bridge this gap, we propose OneN (One Network), a unified architecture that performs detection, localization, and classification within a single framework. Our approach distills knowledge from a high-capacity convolutional neural network (CNN) into an attention-based architecture trained under varying levels of supervision. The resulting attention maps act as interpretable pseudo-segmentation masks, enabling accurate localization of anomalous regions. To further enhance localization quality, we introduce a progressive focal loss that guides attention maps at each layer to focus on critical features. We validate our method through extensive experiments on both standardized and custom-defined industrial benchmarks. Even under weak supervision, it improves performance, reduces annotation effort, and facilitates scalable deployment in industrial environments.
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来源期刊
Image and Vision Computing
Image and Vision Computing 工程技术-工程:电子与电气
CiteScore
8.50
自引率
8.50%
发文量
143
审稿时长
7.8 months
期刊介绍: Image and Vision Computing has as a primary aim the provision of an effective medium of interchange for the results of high quality theoretical and applied research fundamental to all aspects of image interpretation and computer vision. The journal publishes work that proposes new image interpretation and computer vision methodology or addresses the application of such methods to real world scenes. It seeks to strengthen a deeper understanding in the discipline by encouraging the quantitative comparison and performance evaluation of the proposed methodology. The coverage includes: image interpretation, scene modelling, object recognition and tracking, shape analysis, monitoring and surveillance, active vision and robotic systems, SLAM, biologically-inspired computer vision, motion analysis, stereo vision, document image understanding, character and handwritten text recognition, face and gesture recognition, biometrics, vision-based human-computer interaction, human activity and behavior understanding, data fusion from multiple sensor inputs, image databases.
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