CVAIOct 4, 2025

MonitorVLM:A Vision Language Framework for Safety Violation Detection in Mining Operations

arXiv:2510.03666v14 citationsh-index: 2
Originality Incremental advance
AI Analysis

This addresses the need for automated safety monitoring in high-risk mining environments, though it appears to be an incremental advancement in applying vision-language models to a specific domain.

The paper tackles the problem of detecting safety violations in mining operations from surveillance videos by introducing MonitorVLM, a vision-language framework that achieves improvements of 22.01% in precision, 34.22% in recall, and 28.37% in F1 score over baseline models.

Industrial accidents, particularly in high-risk domains such as surface and underground mining, are frequently caused by unsafe worker behaviors. Traditional manual inspection remains labor-intensive, error-prone, and insufficient for large-scale, dynamic environments, highlighting the urgent need for intelligent and automated safety monitoring. In this paper, we present MonitorVLM, a novel vision--language framework designed to detect safety violations directly from surveillance video streams. MonitorVLM introduces three key innovations: (1) a domain-specific violation dataset comprising 9,000 vision--question--answer (VQA) samples across 40 high-frequency mining regulations, enriched with augmentation and auxiliary detection cues; (2) a clause filter (CF) module that dynamically selects the Top-$K$ most relevant clauses, reducing inference latency by 13.56\% while maintaining accuracy; and (3) a behavior magnifier (BM) module that enhances worker regions to improve fine-grained action recognition, yielding additional gains of 3.45% in precision and 8.62% in recall. Experimental results demonstrate that MonitorVLM significantly outperforms baseline vision--language models, achieving improvements of 22.01% in precision, 34.22\% in recall, and 28.37% in F1 score over the 72B unfine-tuned baseline. A lightweight web-based interface further integrates MonitorVLM into practical workflows, enabling automatic violation reporting with video timestamping. This study highlights the potential of multimodal large models to enhance occupational safety monitoring in mining and beyond.

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