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Deep Learning Localization with 2D Range Scanner

机译:使用2D范围扫描仪深入学习本地化

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摘要

In recent years, the use of 2D laser range scanners is increasing in industrial products, thanks to decreasing cost of this kind of devices and increasing accuracy. Nevertheless, the localization estimation of the moving objects (vehicles, robots, drones and so on) between consecutive laser range scans is still a challenging problem. In this paper, we explore different neural network approaches, using only a 2D laser scanner to address this problem. The proposed neural network shows promising results in terms of average accuracy (about 1cm in translation and 1° in rotation of Mean Absolute Error (MAE)) and in terms of overall used parameters (less than one hundred thousand), being an interesting method that could complement or integrate traditional localization approaches. The proposed neural network processes about 8000 pairs of compacted scans per second on Nvidia Titan X (Pascal) GPU.
机译:近年来,由于这种装置的成本降低和提高准确性,使用2D激光范围扫描仪的使用正在增加。然而,连续激光范围扫描之间的移动物体(车辆,机器人,无人机等)的定位估计仍然是一个具有挑战性的问题。在本文中,我们探索了不同的神经网络方法,仅使用2D激光扫描仪来解决这个问题。所提出的神经网络在平均准确性方面(平均绝对误差(MAE)的转换为1厘米和1°的大约1厘米),并且在整体使用的参数(小于十一十万)方面,这是一个有趣的方法可以补充或整合传统的本地化方法。所提出的神经网络在NVIDIA Titan X(Pascal)GPU上每秒大约8000对压实扫描。

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