Multi-Scale Patch-Based Representation Learning for Image Anomaly Detection and Segmentation

Chin-Chia Tsai, Tsung-Hsuan Wu, S. Lai
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引用次数: 33

Abstract

Unsupervised representation learning has been proven to be effective for the challenging anomaly detection and segmentation tasks. In this paper, we propose a multi-scale patch-based representation learning method to extract critical and representative information from normal images. By taking the relative feature similarity between patches of different local distances into account, we can achieve better representation learning. Moreover, we propose a refined way to improve the self-supervised learning strategy, thus allowing our model to learn better geometric relationship between neighboring patches. Through sliding patches of different scales all over an image, our model extracts representative features from each patch and compares them with those in the training set of normal images to detect the anomalous regions. Our experimental results on MVTec AD dataset and BTAD dataset demonstrate the proposed method achieves the state-of-the-art accuracy for both anomaly detection and segmentation.
基于多尺度斑块表示学习的图像异常检测与分割
无监督表示学习已被证明是有效的异常检测和分割任务。本文提出了一种基于多尺度斑块的表示学习方法,从正常图像中提取关键信息和代表性信息。通过考虑不同局部距离的patch之间的相对特征相似度,可以实现更好的表示学习。此外,我们提出了一种改进自监督学习策略的改进方法,从而使我们的模型能够更好地学习相邻斑块之间的几何关系。我们的模型通过在图像上滑动不同尺度的小块,从每个小块中提取有代表性的特征,并与正常图像训练集中的特征进行比较,从而检测出异常区域。在MVTec AD数据集和BTAD数据集上的实验结果表明,该方法在异常检测和分割方面都达到了最先进的精度。
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