Reconstruction-based anomaly detection models achieve their purpose by suppressing the generalization ability for anomaly. However, diverse normal patterns are consequently not well reconstructed as well. Although some efforts have been made to alleviate this problem by modeling sample diversity, they suffer from shortcut learning due to undesired transmission of abnormal information. In this paper, to better handle the tradeoff problem, we propose Diversity-Measurable Anomaly Detection (DMAD) framework to enhance reconstruction diversity while avoid the undesired generalization on anomalies. To this end, we design Pyramid Deformation Module (PDM), which models diverse normals and measures the severity of anomaly by estimating multi-scale deformation fields from reconstructed reference to original input. Integrated with an information compression module, PDM essentially decouples deformation from prototypical embedding and makes the final anomaly score more reliable. Experimental results on both surveillance videos and industrial images demonstrate the effectiveness of our method. In addition, DMAD works equally well in front of contaminated data and anomaly-like normal samples.
翻译:以重建为基础的异常现象检测模型通过抑制异常现象的概括性能力而达到其目的,但是,不同的正常模式也没有很好地得到重建。虽然已经作出一些努力,通过模拟样本多样性来缓解这一问题,但是由于不想要的异常信息传输,这些模型受到捷径学习的困扰。在本文中,为了更好地处理权衡问题,我们提议多样性-计量异常现象检测(DMAD)框架,以加强重建多样性,同时避免对异常现象的不理想的概括性。为此,我们设计了金字塔变形模块(PDM),该模块通过估算从重建的原始输入中得出多尺度变形场来模型,衡量异常现象的严重程度。与信息压缩模块相结合,PDM基本上脱离了原型嵌入的畸形,并使最后异常分数更加可靠。关于监视录像和工业图像的实验结果显示了我们的方法的有效性。此外,DMAD在受污染的数据和异常普通样本之前也同样在工作。</s>