Parameter Optimization of Cartographer Composition in Fire Rescue Small Apartment Scene

Jijiang Xu, Pengrui Gao, Ruijun Jing, Zhiguo Zhao, Wenhao Zhang
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Abstract

When the small-area apartment fires need to be rescued, the original construction drawings cannot be used as a rescue support because of the multi-point reconstruction of the small-area apartment by the residents and the external damage, which requires the unmanned car to quickly obtain the internal environment information. The experimental hardware adopts TS100 tracked damping tank chassis, single-line lidar adopts RPLidarA1 with high stability, and the composition algorithm adopts the cartographer algorithm in laser SLAM. By reducing the number of processing points and increasing the calculation speed and reducing the amount of calculation, the composition parameters of the cartographer with the maximum efficiency of the scanning composition of the small area apartment are obtained. The final adjustment data of the composition parameters are as follows :When the velocity of the robot is 0.5 M / S, the parameter adjustment scheme-HJ-Cartographer is adopted, that is, the optimal value of the maximum iteration number (max_num_iteration) is 12 ; the optimal value of the maximum range of node scanning (max_range) is 29 ; the optimal value of voxel_filter_size is 0.25 ; the optimal number of background threads (MAP_BUILDER_background_threads) of the map generator is 5 ; the optimal value of global_sampling_ratio is 0.0055. The composition accuracy α = 96.77 %, which is 64.83 % higher than the initial composition accuracy. The composition ambiguity β = 3.23 %, which is 92.18 % lower than the initial ambiguity.
消防救援小户型场景制图员构图参数优化
当小面积公寓火灾需要救援时,由于居民对小面积公寓的多点重建和外部损坏,原始施工图无法作为救援支撑,这就需要无人车快速获取内部环境信息。实验硬件采用TS100履带式阻尼罐底盘,单线激光雷达采用稳定性高的RPLidarA1,组成算法采用激光SLAM中的制图师算法。通过减少处理点数量,提高计算速度,减少计算量,获得小面积公寓扫描构图效率最高的制图员构图参数。组成参数的最终调整数据如下:机器人速度为0.5 M / S时,采用参数调整方案- hj - cartographer,即最大迭代次数(max_num_iteration)的最优值为12;节点扫描最大范围(max_range)的最优值为29;voxel_filter_size的最优值为0.25;地图生成器的最优后台线程数(MAP_BUILDER_background_threads)为5;global_sampling_ratio的最优值为0.0055。合成精度α = 96.77%,比初始合成精度提高64.83%。组成模糊度β = 3.23%,比初始模糊度降低了92.18%。
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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