Novelty detection in images by sparse representations

G. Boracchi, Diego Carrera, B. Wohlberg
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引用次数: 34

Abstract

We address the problem of automatically detecting anomalies in images, i.e., patterns that do not conform to those appearing in a reference training set. This is a very important feature for enabling an intelligent system to autonomously check the validity of acquired data, thus performing a preliminary, automatic, diagnosis. We approach this problem in a patch-wise manner, by learning a model to represent patches belonging to a training set of normal images. Here, we consider a model based on sparse representations, and we show that jointly monitoring the sparsity and the reconstruction error of such representation substantially improves the detection performance with respect to other approaches leveraging sparse models. As an illustrative application, we consider the detection of anomalies in scanning electron microscope (SEM) images, which is essential for supervising the production of nanofibrous materials.
基于稀疏表示的图像新颖性检测
我们解决了自动检测图像异常的问题,即不符合参考训练集中出现的模式。这是一个非常重要的功能,使智能系统能够自主检查所获取数据的有效性,从而进行初步的自动诊断。我们通过学习一个模型来表示属于正常图像训练集的补丁,以一种基于补丁的方式来解决这个问题。在这里,我们考虑了一个基于稀疏表示的模型,并且我们表明,与利用稀疏模型的其他方法相比,联合监测这种表示的稀疏性和重建误差大大提高了检测性能。作为一个示例性应用,我们考虑了扫描电子显微镜(SEM)图像中的异常检测,这对于监督纳米纤维材料的生产至关重要。
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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