室内移动机器人定位的神经网络方法

Huijun Li, Ying Mao, Wei You, Bin Ye, Xinyi Zhou
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引用次数: 9

摘要

为了提高室内环境下移动机器人定位的实时性和精度,提出了一种神经网络数据融合方法,消除环境或测量误差对定位的影响。该方法首先通过Dead Reckoning (DR)对采集到的编码器数据进行计算得到测程数据,然后将测程数据与激光雷达数据融合到一个三层神经网络中。实验结果表明,该网络提高了机器人的定位性能,定位精度在6cm以内,具有良好的实时性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A neural network approach to indoor mobile robot localization
In order to improve the real-time performance and accuracy of localization for mobile robot in indoor environment, a neural network data fusion approach is proposed to eliminate the affection caused by errors from environment or measurements. In the approach, the odometry data are firstly obtained by calculating the collected encoder data through the Dead Reckoning (DR), then we fuse the odometry data and the lidar data by inputting them into a three-layer neural network. Experimental results show that the trained network improved the robot localization performance and its position accurate is within 6cm with good real time response.
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