In surface defect detection, due to the extreme imbalance in the number of positive and negative samples, positive-samples-based anomaly detection methods have received more and more attention. Specifically, reconstruction-based methods are the most popular. However, exiting methods are either difficult to repair abnormal foregrounds or reconstruct clear backgrounds. Therefore, we propose a clear memory-augmented auto-encoder. At first, we propose a novel clear memory-augmented module, which combines the encoding and memory-encoding in a way of forgetting and inputting, thereby repairing abnormal foregrounds and preservation clear backgrounds. Secondly, a general artificial anomaly generation algorithm is proposed to simulate anomalies that are as realistic and feature-rich as possible. At last, we propose a novel multi scale feature residual detection method for defect segmentation, which makes the defect location more accurate. CMA-AE conducts comparative experiments using 11 state-of-the-art methods on five benchmark datasets, showing an average 18.6% average improvement in F1-measure.
翻译:在地表缺陷检测方面,由于正和负抽样数量极不平衡,正样异常检测方法越来越受到越来越多的关注。具体地说,以重建为基础的方法最为流行。然而,退出的方法要么难以修复异常的前台,要么重建清晰的背景。因此,我们提议一个清晰的内存强化自动编码器。首先,我们提议一个全新的清晰的记忆强化模块,将编码和记忆编码结合起来,从而遗忘和输入,从而修复异常的前台和保存清晰的背景。第二,提出一个通用的人工异常生成算法,模拟尽可能现实和丰富地貌的异常现象。最后,我们提出一个新的多尺度的缺陷分类残余检测方法,使缺陷位置更加准确。 CMA-AE在五个基准数据集上使用11个最先进的方法进行了比较实验,显示F1测量的平均改进率为18.6%。