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煤矿井下障碍物可靠检测方法研究

Research on obstacle reliable detection methods in underground coal mines

  • 摘要: 矿用无轨胶轮车、防冲钻孔机器人等井下自主移动作业装备智能化技术是当前智能矿山建设的重要组成部分,井下自主移动作业装备对所处环境的可靠感知与障碍物高效检测是其自主移动实现的基点。针对煤矿井下复杂环境下自主移动装备环境感知能力不足、多模态数据融合效率低等问题,以提升井下移动装备运行空间障碍物识别精度与可靠性为目标,在分析现有识别方法的特点和缺陷的基础上,提出了一种基于红外/激光双模点融合的煤矿井下障碍物目标检测方法。首先,设计了一种基于特征点保留的巷道点云数据简化方法,在以保留丰富巷道结构特征信息的同时消除离群点并确定井下空间平面内点。然后,通过引入混沌映射与反向学习策略,提出了一种改进的蜣螂优化算法,可有效提升蜣螂优化算法的种群多样性和搜索效率,避免陷入局部最优。进而提出一种基于改进蜣螂优化算法的红外图像增强方法,可有效降低煤矿井下复杂场景噪声对红外图像特征提取的负面影响。最后,建立了基于改进AVOD架构的煤矿井下障碍物目标检测模型,针对性改造了AVOD架构数据输入端以适配红外图像特征,并通过建立煤矿井下障碍物目标感知数据集,验证了所提算法的有效性和适用性,实验结果表明:所提方法在低照度煤矿井下巷道场景工况下,井下巷道障碍物目标识别准确率大于90%。

     

    Abstract: Intelligent technology for underground autonomous mobile operation equipment, such as mine trackless rubber-tyred vehicles and rockburst prevention drilling robots, constitutes a crucial component of current intelligent mine construction. Reliable perception of the environment and efficient detection of obstacles by underground autonomous mobile operation equipment are the basis for achieving autonomous movement. Aiming to address the insufficient environmental perception capabilities of autonomous mobile equipment and the low efficiency of multimodal data fusion in complex underground coal mine environments, this paper aims to enhance the accuracy and reliability of obstacle recognition in the operational space of underground mobile equipment. By analyzing the characteristics and limitations of existing identification methods, a coal mine obstacle detection method based on infrared/laser dual-mode point fusion is proposed. Firstly, a simplification method for tunnel point cloud data based on feature point retention is designed. This method preserves rich structural feature information while eliminating outliers and identifying inlier points within the underground spatial plane. Secondly, by incorporating chaotic mapping and opposition-based learning strategies, an Improved Dung Beetle Optimizer algorithm is proposed. This effectively enhances population diversity and search efficiency of the original algorithm, preventing it from becoming trapped in local optima. Subsequently, an infrared image enhancement method based on the Improved Dung Beetle Optimizer is introduced, which effectively mitigates the negative impact of complex scene noise in coal mines on infrared image feature extraction. Finally, an obstacle detection model for coal mine environments is established based on an improved Aggregate View Object Detection (AVOD) architecture. The data input layer of the AVOD architecture was specifically modified to adapt to infrared image features. The effectiveness and applicability of the proposed algorithms were validated through the creation of a dedicated coal mine obstacle perception dataset. Experimental results demonstrate that the proposed method achieves an obstacle identification accuracy exceeding 90% under low-illumination conditions typical of underground coal mine tunnels.

     

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