A common study area in anomaly identification is industrial images anomaly detection based on texture background. The interference of texture images and the minuteness of texture anomalies are the main reasons why many existing models fail to detect anomalies. We propose a strategy for anomaly detection that combines dictionary learning and normalizing flow based on the aforementioned questions. The two-stage anomaly detection approach already in use is enhanced by our method. In order to improve baseline method, this research add normalizing flow in representation learning and combines deep learning and dictionary learning. Improved algorithms have exceeded 95$\%$ detection accuracy on all MVTec AD texture type data after experimental validation. It shows strong robustness. The baseline method's detection accuracy for the Carpet data was 67.9%. The article was upgraded, raising the detection accuracy to 99.7%.
翻译:异常点识别的一个共同研究领域是基于纹理背景的工业图像异常现象检测。纹理图像的干扰和质体异常的微小度是许多现有模型未能检测异常现象的主要原因。我们提出了一个异常现象检测战略,根据上述问题将字典学习和正常流动结合起来。我们的方法加强了已经使用的两阶段异常现象检测方法。为了改进基线方法,这项研究增加了代表性学习的正常流动,并将深层学习和字典学习结合起来。经过改进的算法在实验验证后,所有MVTec AD质体型数据的检测精确度已超过95美元。它显示出很强的稳健性。地毯数据基准方法的检测准确性为67.9%。这篇文章已经升级,将检测精确度提高到99.7%。