A Task-Aware Parameter Decoupling Framework for Continual Anomaly Detection

Zhizhong Zhang, Guchu Zou, Chengwei Chen, Zhenyi Qi, Xiaoyang Yu, Jingwen Qi, Yongke Yao, Xiaofan Li, Yuan Xie, Xin Tan

Published: 01 Jan 2025, Last Modified: 15 Jan 2026IEEE Transactions on Industrial InformaticsEveryoneRevisionsCC BY-SA 4.0
Abstract: Real-world industrial scenarios have become increasingly dynamic, with new product types, defect patterns, and operational modes emerging rapidly. In such a context, the one-for-more paradigm enables the use of a single model to economically and continually adapt to evolving distributions or patterns, positioning it as a key component in modern Industrial AI systems. This article proposes a novel one-for-more anomaly detection framework designed to identify anomalies across expanding product lines. The framework incorporates two model-agnostic techniques: instance-aware prompt tuning (IPT) and gradient-aware parameter decoupling (GPD). Our approach is built upon a reconstruction-based vision transformer (ViT) encoder–decoder architecture. IPT addresses the domain gap between pretrained models and industrial data by leveraging an instance-level prompt and a shared memory mechanism, which helps the pretrained model retain previously learned patterns. GPD selectively updates network parameters based on the gradient’s impact on prior tasks, employing orthogonal gradient projection to further minimize interference. In addition, we introduce a new dataset to simulate the one-for-more industrial scenario. Extensive experiments on MVTec and our proposed dataset demonstrate that our framework achieves the state-of-the-art performance across various continual learning settings, significantly outperforming existing methods, particularly in multistep incremental scenarios.
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