GRD-Net: Generative-Reconstructive-Discriminative Anomaly Detection with Region of Interest Attention Module
Niccol\`o Ferrari, Michele Fraccaroli, Evelina Lamma

TL;DR
GRD-Net is a novel anomaly detection architecture combining generative, reconstructive, and discriminative components with ROI attention, improving defect localization in industrial visual inspection tasks.
Contribution
The paper introduces a new GAN-based architecture with ROI attention for anomaly detection, reducing reliance on traditional post-processing methods and enhancing localization accuracy.
Findings
Effective on MVTec datasets with high accuracy.
Successfully applied to pharmaceutical BFS vial images.
Reduces need for pre-processing algorithms.
Abstract
Anomaly detection is nowadays increasingly used in industrial applications and processes. One of the main fields of the appliance is the visual inspection for surface anomaly detection, which aims to spot regions that deviate from regularity and consequently identify abnormal products. Defect localization is a key task, that usually is achieved using a basic comparison between generated image and the original one, implementing some blob-analysis or image-editing algorithms, in the post-processing step, which is very biased towards the source dataset, and they are unable to generalize. Furthermore, in industrial applications, the totality of the image is not always interesting but could be one or some regions of interest (ROIs), where only in those areas there are relevant anomalies to be spotted. For these reasons, we propose a new architecture composed by two blocks. The first…
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Taxonomy
TopicsIndustrial Vision Systems and Defect Detection · Anomaly Detection Techniques and Applications · Fault Detection and Control Systems
