Anomalies can be defined as any non-random structure which deviates from normality. Anomaly detection methods reported in the literature are numerous and diverse, as what is considered anomalous usually varies depending on particular scenarios and applications. In this work we propose an a contrario framework to detect anomalies in images applying statistical analysis to feature maps obtained via convolutions. We evaluate filters learned from the image under analysis via patch PCA, Gabor filters and the feature maps obtained from a pre-trained deep neural network (Resnet). The proposed method is multi-scale and fully unsupervised and is able to detect anomalies in a wide variety of scenarios. While the end goal of this work is the detection of subtle defects in leather samples for the automotive industry, we show that the same algorithm achieves state of the art results in public anomalies datasets.
翻译:文献中报告的异常检测方法多种多样,因为据认为异常的方法通常因特定情景和应用而异。在这项工作中,我们提出了一个反向框架,用以检测图像中的异常现象,将统计分析应用于通过卷土重来绘制的地貌图。我们通过Pay PCC、Gabor过滤器和从预先训练的深神经网络(Resnet)获得的地貌图来评估从所分析的图像中汲取的过滤器。建议的方法是多尺度的,完全不受监督,能够在多种情况下发现异常现象。这项工作的最终目标是为汽车业检测皮革样品中的细微缺陷。我们表明,同样的算法在公共异常数据集中达到了艺术结果的状态。