Unsupervised anomaly detection is a challenging task in industrial applications since it is impracticable to collect sufficient anomalous samples. In this paper, a novel Self-Supervised Guided Segmentation Framework (SGSF) is proposed by jointly exploring effective generation method of forged anomalous samples and the normal sample features as the guidance information of segmentation for anomaly detection. Specifically, to ensure that the generated forged anomaly samples are conducive to model training, the Saliency Augmentation Module (SAM) is proposed. SAM introduces a saliency map to generate saliency Perlin noise map, and develops an adaptive segmentation strategy to generate irregular masks in the saliency region. Then, the masks are utilized to generate forged anomalous samples as negative samples for training. Unfortunately, the distribution gap between forged and real anomaly samples makes it difficult for models trained based on forged samples to effectively locate real anomalies. Towards this end, the Self-supervised Guidance Network (SGN) is proposed. It leverages the self-supervised module to extract features that are noise-free and contain normal semantic information as the prior knowledge of the segmentation module. The segmentation module with the knowledge of normal patterns segments out the abnormal regions that are different from the guidance features. To evaluate the effectiveness of SGSF for anomaly detection, extensive experiments are conducted on three anomaly detection datasets. The experimental results show that SGSF achieves state-of-the-art anomaly detection results.
翻译:未经监督的异常点检测是工业应用中一项艰巨的任务,因为收集足够的异常点样本是不切实际的。在本文件中,通过共同探索合成异常点样本的有效生成方法和正常样本特征作为异常点检测的分解指导信息,提出了一个新的自爆导向导分解框架(SGSF ) 。具体地说,为确保生成的伪造异常点样本有利于示范培训,提出了优美增强模块(SAM ) 。SAM 引入了一个突出的显性地图,以生成突出的 Perlin噪音地图,并开发一个适应性分解战略,以生成突出区域的不正常面罩。然后,使用这些面罩生成伪造的异常点样本,作为培训的负面样本。不幸的是,伪造的和真实异常点样本之间的分布差距使得根据伪造样本培训的模型难以有效定位真正的异常点。为此,提出了自强性指导网络(SGN) 。它利用自封的模块提取无噪音特征,并包含正常分解信息,作为SF 常规分解模式之前的正常分解结果。