Active Pedestrian Detection for Excavator Robots based on Multi-Sensor Fusion

Meiyuan Zou, Jiajie Yu, Bo Lu, Wenzheng Chi, Lining Sun
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引用次数: 3

Abstract

As a common multi-functional engineering equipment, excavators are widely used in civil construction, coal mining, power engineering, etc. The excellent performance of the excavator not only greatly improves the work efficiency during the construction process, but also effectively saves labor costs. However, due to the complexity of the working environment of the excavator and the blind area of the excavator itself, the driver cannot make timely judgments on the surrounding environment, which may cause potential threats to pedestrians. In response to such problems, this paper proposes a multi-sensor fusion detection method applied to excavators to provide vision assistance for excavator drivers, thereby reducing the risk of pedestrian casualties. Based on the results of the joint calibration, the transformation relationship between the camera and lidar coordinate systems is determined. Combining the detection results of the pedestrian detection algorithm YOLO-v5 and the segmented image information, the position of the pedestrian in the image can be inversely mapped to the 3D point clouds via the matrix transformation, which can accurately display the position of the pedestrian in the point clouds, consequently making up for the lack of depth information in the image. The experimental results show that our method can effectively extract the location information of pedestrians from the complex background environment and realize timely pedestrian alarm.
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基于多传感器融合的挖掘机机器人主动行人检测
挖掘机作为一种常见的多功能工程设备,广泛应用于民用建筑、煤矿、电力工程等领域。挖掘机的优异性能不仅大大提高了施工过程中的工作效率,而且有效地节省了人工成本。但是,由于挖掘机工作环境的复杂性和挖掘机本身的盲区,驾驶员不能及时对周围环境做出判断,这可能会对行人造成潜在的威胁。针对这些问题,本文提出了一种应用于挖掘机的多传感器融合检测方法,为挖掘机驾驶员提供视觉辅助,从而降低行人伤亡的风险。根据联合标定的结果,确定了相机与激光雷达坐标系之间的转换关系。结合行人检测算法YOLO-v5的检测结果和分割后的图像信息,通过矩阵变换将图像中行人的位置逆映射到三维点云中,可以准确显示行人在点云中的位置,从而弥补图像中深度信息的不足。实验结果表明,该方法能够有效地从复杂的背景环境中提取行人的位置信息,实现行人的及时报警。
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