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A Semantic-Enhanced Method Based On Deep SVDD for Pixel-Wise Anomaly Detection

机译:基于深度SVDD的像素明显异常检测的语义增强方法

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Detecting the anomalous information in multimedia is valuable to many computer vision applications. Recently, many pixel-wise methods modeling by deep learning model have been presented, which can be divided in reconstruction-based and distance-based methods. However, reconstruction-based methods suffer from the low precision of pixel reconstructions. Distance-based methods extract the hierarchical features by a pre-trained model, in order to estimate the anomalies by distances between normal and anomalous features. Nevertheless, multi-level features are ignored in these methods, and semantic information is not considered which is important to enhance the description of anomalies. To over-come the problems, we propose a novel semantic-enhanced anomaly detection method based on deep Support Vector Data Description (SVDD). A new semantic correlation module (SCB) is introduced to enhance the semantic information of the feature representations by cosine similarity. Mean-while, the multi-level architecture is utilized to estimate the final pixel-wise anomaly score. Experimental results demonstrate the proposed method outperforms state-of-the-art methods on MVTec and STC dataset.
机译:检测多媒体中的异常信息对许多计算机视觉应用有价值。最近,已经提出了许多像素设计的深度学习模型的方法,该方法可以分为基于重建的基于距离的方法。然而,基于重建的方法遭受像素重建的低精度。基于距离的方法通过预先训练的模型提取分层特征,以便通过正常和异常功能之间的距离来估计异常。然而,在这些方法中忽略多级别特征,并且不考虑语义信息,这对于增强异常的描述是重要的。过度出现问题,我们提出了一种基于深度支持向量数据描述(SVDD)的新型语义增强的异常检测方法。引入了一种新的语义相关模块(SCB)以通过余弦相似度增强特征表示的语义信息。意思是,多级架构用于估计最终像素的异常分数。实验结果表明,所提出的方法优于MVTEC和STC数据集的最先进方法。

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