异常检测
计算机科学
特征(语言学)
网格
人工智能
模式识别(心理学)
一般化
特征提取
块(置换群论)
领域(数学分析)
图像(数学)
异常(物理)
代表(政治)
计算机视觉
迭代重建
特征向量
数据挖掘
特征检测(计算机视觉)
任务(项目管理)
目标检测
软件部署
上下文图像分类
领域知识
图像处理
作者
Aimin Feng,Huichuan Huang,Guangyu Wei,Wenlong Sun
标识
DOI:10.1109/tip.2025.3644787
摘要
In the domain of image anomaly detection, significant progress has been made in unsupervised and self-supervised methods with datasets containing only normal samples. Although these methods perform well in general industrial anomaly detection scenarios, they often struggle with over- or under-detection when faced with fine-grained anomalies in products. In this paper, we propose GRAD: Bi-Grid Reconstruction for Image Anomaly Detection, which utilizes two continuous grids to detect anomalies from both normal and abnormal perspectives. In this work: 1) Grids serve as feature repositories to assist in the reconstruction task, achieving stronger generalization compared to discrete storage, while also helping to avoid the Identical Shortcut (IS) problem common in general reconstruction methods. 2) An additional grid storing abnormal features is introduced alongside the normal grid storing normal features, which refines the boundaries of normal features, thereby enhancing GRAD's detection performance for fine-grained defects. 3) The Feature Block Pasting (FBP) module is designed to synthesize a variety of anomalies at the feature level, enabling the rapid deployment of the abnormal grid. Additionally, benefiting from the powerful representation capabilities of grids, GRAD is suitable for a unified task setting, requiring only a single model to be trained for multiple classes. GRAD has been comprehensively tested on classic industrial datasets including MVTecAD, VisA, and the newest GoodsAD dataset, showing significant improvement over current state-of-the-art methods.
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