Autonomous Docking Using Learning-Based Scene Segmentation in Underground Mine Environments

Abhinav Rajvanshi, Alex Krasner, Mikhail Sizintsev, Han-Pang Chiu, Joseph Sottile, Z. Agioutantis, S. Schafrik, Jimmy Rose
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Abstract

This paper describes a vision-based autonomous docking solution that moves a coalmine shuttle car to the continuous miner in GPS-denied underground environments. The solution adapts and improves state-of-the-art autonomous docking techniques using a RGBD camera specifically in under-ground mine environments. It includes five processing modules: scene segmentation, segmented point-cloud generation, occupancy grid estimation, path planner, and controller. A two-stage approach is developed to train the scene segmentation network for adapting to the changes from normal environments to dark mines. The resulting network detects both the continuous miner and other objects accurately in mines. Based upon these recognized objects, a path is planned for moving the shuttle car from its initial position to the continuous miner, while avoiding obstacles and other workers. Experiments are conducted using the system in a 1/6th-scale lab environment and data collected in a full-scale realistic mine environment with full-size equipment. The results show the potential of this solution, which can significantly enhance the safety of workers in mining operations.
基于学习的地下矿山场景分割自主对接
本文提出了一种基于视觉的井下自动对接方案,实现了井下无gps环境下煤矿穿梭车与连续矿工之间的自动对接。该解决方案适应并改进了最先进的自主对接技术,使用RGBD相机,特别是在地下矿山环境中。它包括五个处理模块:场景分割、分割点云生成、占用网格估计、路径规划和控制器。提出了一种两阶段的方法来训练场景分割网络以适应从正常环境到暗矿的变化。由此产生的网络既能准确地检测连续矿工,也能准确地检测矿井中的其他物体。根据这些识别的目标,规划一条路径,使穿梭车从初始位置移动到连续矿工,同时避开障碍物和其他工人。该系统在1/6的实验室环境中进行了实验,并在全尺寸设备的全尺寸真实矿山环境中收集了数据。结果显示了该解决方案的潜力,可以显着提高采矿作业中工人的安全性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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