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综采工作面虚拟三维动态电子围栏构建与矿井人员入侵监测预警方法

Research on construction of virtual dynamic electronic fence and monitoring and early warning method of mine personnel intrusion in Fully Mechanized Coal Mining Face

  • 摘要: 煤矿井下综采工作面尘雾复杂、光照多变,导致图像感知性能下降,影响智能监测系统的稳定运行。传统二维电子围栏方法存在空间适应性差、三维深度信息缺失、误检、漏检率高等问题,难以实现对矿井人员入侵的精准识别与预警。为提升图像质量与空间感知能力,研究提出融合暗通道先验与改进限制对比度自适应直方图均衡化(CLAHE)的图像预处理方法,实现环境光照精确估算与尘雾图像增强。针对二维电子围栏识别精度低的问题,通过建立MSS-YOLO(MSEE SCDH SPSC-YOLO)的井下目标关键点检测算法,结合FE-SGBM(Feature-Enhanced Semi-Global Matching)双目立体视觉匹配模型获得拖缆槽关键点检测与空间深度信息感知,实现基于拖缆槽关键特征点的三维动态电子围栏构建。进一步引入基于Unity3D的矿井人员与三维动态电子围栏虚拟碰撞检测方法,搭建综采工作面人员入侵检测预警系统,实现综采工作面矿井人员精准检测与异常预警。实验结果表明,该系统在尘雾、光照变化等复杂环境下人员误检率仅为4.56%,虚拟平台对人员入侵危险区域的碰撞预警帧匹配率为94.4%,处于危险区域内报警帧匹配率为98.5%,具有良好的识别准确性与实时性。该研究为煤矿智能化综采工作面三维安全预警系统的构建提供了可行路径与技术支撑。

     

    Abstract: In fully mechanized underground coal mining faces, the presence of dense dust, suspended fog, and fluctuating illumination severely impairs image perception quality, posing challenges to the reliable operation of intelligent monitoring systems. Traditional 2D electronic fence methods suffer from limited spatial adaptability, the absence of depth information, and high false detection and omission rates, making accurate identification and early warning of personnel intrusion difficult. To enhance image quality and spatial perception capabilities, this study proposes an image preprocessing approach that integrates the dark channel prior with an improved contrast-limited adaptive histogram equalization (CLAHE) algorithm, enabling precise ambient light estimation and effective enhancement of dust-obscured images. Addressing the limitations of 2D fence recognition, an underground object keypoint detection algorithm—MSS-YOLO (MSEE SCDH SPSC-YOLO)—is developed. Combined with the Feature-Enhanced Semi-Global Matching (FE-SGBM) stereo vision model, the algorithm enables detection of keypoints on the trailing cable trough and acquisition of corresponding spatial depth information, thereby supporting the construction of a dynamic 3D electronic fence. Furthermore, a virtual collision detection method based on Unity3D is introduced to simulate interactions between underground personnel and the dynamic 3D fence, forming an intrusion detection and early warning system tailored for fully mechanized mining faces. Experimental results demonstrate that the proposed system achieves a personnel false detection rate of only 4.56% under conditions of dense dust and varying illumination. The virtual platform attains a collision warning frame matching rate of 94.4% for intrusion scenarios and 98.5% for alarms within hazardous regions, indicating excellent detection accuracy and real-time performance. This study provides a feasible technical framework for constructing intelligent 3D safety warning systems in fully mechanized coal mining environments.

     

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