Image anomaly detection (IAD) is an emerging and vital computer vision task in industrial manufacturing (IM). Recently many advanced algorithms have been published, but their performance deviates greatly. We realize that the lack of actual IM settings most probably hinders the development and usage of these methods in real-world applications. As far as we know, IAD methods are not evaluated systematically. As a result, this makes it difficult for researchers to analyze them because they are designed for different or special cases. To solve this problem, we first propose a uniform IM setting to assess how well these algorithms perform, which includes several aspects, i.e., various levels of supervision (unsupervised vs. semi-supervised), few-shot learning, continual learning, noisy labels, memory usage, and inference speed. Moreover, we skillfully build a comprehensive image anomaly detection benchmark (IM-IAD) that includes 16 algorithms on 7 mainstream datasets with uniform settings. Our extensive experiments (17,017 in total) provide in-depth insights for IAD algorithm redesign or selection under the IM setting. Next, the proposed benchmark IM-IAD gives challenges as well as directions for the future. To foster reproducibility and accessibility, the source code of IM-IAD is uploaded on the website, https://github.com/M-3LAB/IM-IAD.
翻译:图像异常探测(IAD)是工业制造业中新兴和重要的计算机视觉任务。最近,许多先进的算法已经公布,但其性能却大不相同。我们认识到,缺乏实际的IM设置很可能阻碍在现实世界应用中开发和使用这些方法。据我们所知,IAD方法没有得到系统的评估。因此,研究人员很难分析这些方法,因为他们是为不同或特殊情况设计的。为了解决这个问题,我们首先提议一个统一的IM设置来评估这些算法的运作情况,其中包括不同层面的监督(不受监督的对半监督的)、少发的学习、持续学习、密集的标签、记忆使用和推断速度。此外,我们巧妙地建立了全面的图像异常探测基准(IM-IAD),其中包括7个具有统一环境的主流数据集的16个算法。我们的广泛实验(总共17 017)为IM设置下的 IAD算法的重新设计或选择提供了深入的洞察。接下来,拟议的IM-3 IM-IADM 和IMAD的检索源将挑战作为未来版本。IM/MAD的检索源。