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📄 Abstract
Abstract: Image anomaly detection plays a vital role in applications such as industrial
quality inspection and medical imaging, where it directly contributes to
improving product quality and system reliability. However, existing methods
often struggle with complex and diverse anomaly patterns. In particular, the
separation between generation and discrimination tasks limits the effective
coordination between anomaly sample generation and anomaly region detection. To
address these challenges, we propose a novel hybrid diffusion model (HDM) that
integrates generation and discrimination into a unified framework. The model
consists of three key modules: the Diffusion Anomaly Generation Module (DAGM),
the Diffusion Discriminative Module (DDM), and the Probability Optimization
Module (POM). DAGM generates realistic and diverse anomaly samples, improving
their representativeness. DDM then applies a reverse diffusion process to
capture the differences between generated and normal samples, enabling precise
anomaly region detection and localization based on probability distributions.
POM refines the probability distributions during both the generation and
discrimination phases, ensuring high-quality samples are used for training.
Extensive experiments on multiple industrial image datasets demonstrate that
our method outperforms state-of-the-art approaches, significantly improving
both image-level and pixel-level anomaly detection performance, as measured by
AUROC.