|国家预印本平台
首页|EMIT: Enhancing MLLMs for Industrial Anomaly Detection via Difficulty-Aware GRPO

EMIT: Enhancing MLLMs for Industrial Anomaly Detection via Difficulty-Aware GRPO

EMIT: Enhancing MLLMs for Industrial Anomaly Detection via Difficulty-Aware GRPO

来源:Arxiv_logoArxiv
英文摘要

Industrial anomaly detection (IAD) plays a crucial role in maintaining the safety and reliability of manufacturing systems. While multimodal large language models (MLLMs) show strong vision-language reasoning abilities, their effectiveness in IAD remains limited without domain-specific adaptation. In this work, we propose EMIT, a unified framework that enhances MLLMs for IAD via difficulty-aware group relative policy optimization (GRPO). EMIT constructs a multi-task IAD dataset and utilizes GPT-generated object text descriptions to compensate for missing defective images. For few-shot anomaly detection, it integrates a soft prompt and heatmap-guided contrastive embeddings derived from patch-level comparisons. To better handle difficult data samples, i.e., cases where the MLLM struggles to generate correct answers, we propose a difficulty-aware GRPO that extends the original GRPO by incorporating a response resampling strategy to ensure the inclusion of correct answers in the sampled responses, as well as an advantage reweighting mechanism to strengthen learning from such difficult data samples. Extensive experiments on the MMAD benchmark demonstrate that EMIT significantly enhances the IAD performance of MLLMs, achieving an average improvement of 7.77\% over the base model (InternVL3-8B) across seven tasks.

Wei Guan、Jun Lan、Jian Cao、Hao Tan、Huijia Zhu、Weiqiang Wang

计算技术、计算机技术自动化技术、自动化技术设备

Wei Guan,Jun Lan,Jian Cao,Hao Tan,Huijia Zhu,Weiqiang Wang.EMIT: Enhancing MLLMs for Industrial Anomaly Detection via Difficulty-Aware GRPO[EB/OL].(2025-07-29)[2025-08-11].https://arxiv.org/abs/2507.21619.点此复制

评论