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Main Authors: Wu, Linchun, Zou, Qin, Qi, Xianbiao, Du, Bo, Wang, Zhongyuan, Li, Qingquan
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2509.12787
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author Wu, Linchun
Zou, Qin
Qi, Xianbiao
Du, Bo
Wang, Zhongyuan
Li, Qingquan
author_facet Wu, Linchun
Zou, Qin
Qi, Xianbiao
Du, Bo
Wang, Zhongyuan
Li, Qingquan
contents Visual anomaly inspection is critical in manufacturing, yet hampered by the scarcity of real anomaly samples for training robust detectors. Synthetic data generation presents a viable strategy for data augmentation; however, current methods remain constrained by two principal limitations: 1) the generation of anomalies that are structurally inconsistent with the normal background, and 2) the presence of undesirable feature entanglement between synthesized images and their corresponding annotation masks, which undermines the perceptual realism of the output. This paper introduces Double Helix Diffusion (DH-Diff), a novel cross-domain generative framework designed to simultaneously synthesize high-fidelity anomaly images and their pixel-level annotation masks, explicitly addressing these challenges. DH-Diff employs a unique architecture inspired by a double helix, cycling through distinct modules for feature separation, connection, and merging. Specifically, a domain-decoupled attention mechanism mitigates feature entanglement by enhancing image and annotation features independently, and meanwhile a semantic score map alignment module ensures structural authenticity by coherently integrating anomaly foregrounds. DH-Diff offers flexible control via text prompts and optional graphical guidance. Extensive experiments demonstrate that DH-Diff significantly outperforms state-of-the-art methods in diversity and authenticity, leading to significant improvements in downstream anomaly detection performance.
format Preprint
id arxiv_https___arxiv_org_abs_2509_12787
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Double Helix Diffusion for Cross-Domain Anomaly Image Generation
Wu, Linchun
Zou, Qin
Qi, Xianbiao
Du, Bo
Wang, Zhongyuan
Li, Qingquan
Computer Vision and Pattern Recognition
Visual anomaly inspection is critical in manufacturing, yet hampered by the scarcity of real anomaly samples for training robust detectors. Synthetic data generation presents a viable strategy for data augmentation; however, current methods remain constrained by two principal limitations: 1) the generation of anomalies that are structurally inconsistent with the normal background, and 2) the presence of undesirable feature entanglement between synthesized images and their corresponding annotation masks, which undermines the perceptual realism of the output. This paper introduces Double Helix Diffusion (DH-Diff), a novel cross-domain generative framework designed to simultaneously synthesize high-fidelity anomaly images and their pixel-level annotation masks, explicitly addressing these challenges. DH-Diff employs a unique architecture inspired by a double helix, cycling through distinct modules for feature separation, connection, and merging. Specifically, a domain-decoupled attention mechanism mitigates feature entanglement by enhancing image and annotation features independently, and meanwhile a semantic score map alignment module ensures structural authenticity by coherently integrating anomaly foregrounds. DH-Diff offers flexible control via text prompts and optional graphical guidance. Extensive experiments demonstrate that DH-Diff significantly outperforms state-of-the-art methods in diversity and authenticity, leading to significant improvements in downstream anomaly detection performance.
title Double Helix Diffusion for Cross-Domain Anomaly Image Generation
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2509.12787