Although industrial anomaly detection (AD) technology has made significant progress in recent years, generating realistic anomalies and learning priors of normal remain challenging tasks. In this study, we propose an end-to-end industrial anomaly detection method called FractalAD. Training samples are obtained by synthesizing fractal images and patches from normal samples. This fractal anomaly generation method is designed to sample the full morphology of anomalies. Moreover, we designed a backbone knowledge distillation structure to extract prior knowledge contained in normal samples. The differences between a teacher and a student model are converted into anomaly attention using a cosine similarity attention module. The proposed method enables an end-to-end semantic segmentation network to be used for anomaly detection without adding any trainable parameters to the backbone and segmentation head, and has obvious advantages over other methods in training and inference speed.. The results of ablation studies confirmed the effectiveness of fractal anomaly generation and backbone knowledge distillation. The results of performance experiments showed that FractalAD achieved competitive results on the MVTec AD dataset and MVTec 3D-AD dataset compared with other state-of-the-art anomaly detection methods.
翻译:虽然近年来工业异常探测技术取得了显著进展,但产生了现实的异常和学习前期的正常任务。在本研究中,我们提议了一种名为FractalAD的端到端工业异常探测方法。培训样品是通过合成分形图像和正常样品的补丁获得的。这种分形异常生成方法旨在对异常全形态进行取样。此外,我们设计了一个骨干知识蒸馏结构,以提取正常样品中包含的先前知识。教师和学生模型之间的差别被转换成异常注意,使用焦距相似的注意模块。拟议方法使端到端的语义分解网络得以用于异常探测,而无需为骨干和分形头添加任何可训练的参数,在培训和引力速度方面显然比其他方法有优势。烧蚀研究的结果证实了分形异常生成和骨干知识蒸馏的有效性。绩效实验结果表明,FractalAD在MVTec数据元和MVTe-D检测方法中,与其他州数据进行比较。</s>