论文标题
MIAD:无监督异常检测的维护检查数据集
MIAD: A Maintenance Inspection Dataset for Unsupervised Anomaly Detection
论文作者
论文摘要
视觉异常检测在制造过程中不仅在制造过程中查找产品缺陷,而且在制造过程中查找产品缺陷,而且还具有维护检查,以使设备处于最佳工作状态,尤其是在户外。由于有缺陷的样品缺乏,近年来无监督的异常检测引起了人们的关注。但是,现有用于无监督异常检测的数据集偏向制造检查,而不是考虑通常在室外不受控制的环境下进行的维护检查,例如长期工作后的对象的背景和对象表面的降解。我们专注于户外维护检查,并贡献全面的维护检查异常检测(MIAD)数据集,该数据集在各种室外工业场景中包含超过100K高分辨率的颜色图像。该数据集由3D图形软件生成,并涵盖具有Pixel-Procise地面真相的表面和逻辑异常。对无监督异常检测的代表性算法进行了广泛的评估,我们预计MIAD和相应的实验结果会激发户外无监督的异常检测任务中的研究社区。有价值且相关的未来工作可以从我们的新数据集中产生。
Visual anomaly detection plays a crucial role in not only manufacturing inspection to find defects of products during manufacturing processes, but also maintenance inspection to keep equipment in optimum working condition particularly outdoors. Due to the scarcity of the defective samples, unsupervised anomaly detection has attracted great attention in recent years. However, existing datasets for unsupervised anomaly detection are biased towards manufacturing inspection, not considering maintenance inspection which is usually conducted under outdoor uncontrolled environment such as varying camera viewpoints, messy background and degradation of object surface after long-term working. We focus on outdoor maintenance inspection and contribute a comprehensive Maintenance Inspection Anomaly Detection (MIAD) dataset which contains more than 100K high-resolution color images in various outdoor industrial scenarios. This dataset is generated by a 3D graphics software and covers both surface and logical anomalies with pixel-precise ground truth. Extensive evaluations of representative algorithms for unsupervised anomaly detection are conducted, and we expect MIAD and corresponding experimental results can inspire research community in outdoor unsupervised anomaly detection tasks. Worthwhile and related future work can be spawned from our new dataset.