论文标题
N-PAD:基于相邻像素的工业异常检测
N-pad : Neighboring Pixel-based Industrial Anomaly Detection
论文作者
论文摘要
确定工业产品图像中的缺陷是增强质量控制和降低维护成本的重要任务。在最近的研究中,使用预训练的网络开发了工业异常检测模型,以学习名义表示。要采用每个像素的相对位置信息,我们提出\ textIt {\ textbf {n-pad}},这是一种单级学习环境中异常检测和分割的新方法,其中包括用于模型训练和评估的目标像素的邻域。在模型体系结构中,通过使用与目标像素的相邻像素的特征来估算像素的标称分布,以允许可能的边缘错位。此外,来自名义特征簇的质心被确定为代表性名义集。因此,基于目标像素与估计分布或质心组之间的摩alan虫距离和欧几里得距离来推断异常得分。因此,我们已经在MVTEC-AD中实现了最先进的性能,而异常分割的AUROC为99.37,而异常分割的98.75则达到了98.75,与下一个最佳性能模型相比,误差降低了34 \%。在各种设置中的实验进一步验证了我们的模型。
Identifying defects in the images of industrial products has been an important task to enhance quality control and reduce maintenance costs. In recent studies, industrial anomaly detection models were developed using pre-trained networks to learn nominal representations. To employ the relative positional information of each pixel, we present \textit{\textbf{N-pad}}, a novel method for anomaly detection and segmentation in a one-class learning setting that includes the neighborhood of the target pixel for model training and evaluation. Within the model architecture, pixel-wise nominal distributions are estimated by using the features of neighboring pixels with the target pixel to allow possible marginal misalignment. Moreover, the centroids from clusters of nominal features are identified as a representative nominal set. Accordingly, anomaly scores are inferred based on the Mahalanobis distances and Euclidean distances between the target pixel and the estimated distributions or the centroid set, respectively. Thus, we have achieved state-of-the-art performance in MVTec-AD with AUROC of 99.37 for anomaly detection and 98.75 for anomaly segmentation, reducing the error by 34\% compared to the next best performing model. Experiments in various settings further validate our model.