Scale-invariant anomaly detection with multiscale group-sparse models

Diego Carrera, G. Boracchi, A. Foi, B. Wohlberg
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引用次数: 15

Abstract

The automatic detection of anomalies, defined as patterns that are not encountered in representative set of normal images, is an important problem in industrial control and biomedical applications. We have shown that this problem can be successfully addressed by the sparse representation of individual image patches using a dictionary learned from a large set of patches extracted from normal images. Anomalous patches are detected as those for which the sparse representation on this dictionary exceeds sparsity or error tolerances. Unfortunately, this solution is not suitable for many real-world visual inspection-systems since it is not scale invariant: since the dictionary is learned at a single scale, patches in normal images acquired at a different magnification level might be detected as anomalous. We present an anomaly-detection algorithm that learns a dictionary that is invariant to a range of scale changes, and overcomes this limitation by use of an appropriate sparse coding stage. The algorithm was successfully tested in an industrial application by analyzing a dataset of Scanning Electron Microscope (SEM) images, which typically exhibit different magnification levels.
基于多尺度群稀疏模型的尺度不变异常检测
异常的自动检测,定义为在正常图像的代表性集合中没有遇到的模式,是工业控制和生物医学应用中的一个重要问题。我们已经证明,通过使用从正常图像中提取的大量补丁中学习到的字典,单个图像补丁的稀疏表示可以成功地解决这个问题。当字典上的稀疏表示超过稀疏性或错误容忍度时,检测到异常补丁。不幸的是,这种解决方案不适合许多现实世界的视觉检测系统,因为它不是尺度不变的:因为字典是在单一尺度下学习的,在不同放大水平下获得的正常图像中的补丁可能被检测为异常。我们提出了一种异常检测算法,该算法学习一个对尺度变化范围不变的字典,并通过使用适当的稀疏编码阶段克服了这一限制。通过分析扫描电子显微镜(SEM)图像数据集,该算法成功地在工业应用中进行了测试,这些图像通常具有不同的放大水平。
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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