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Training a terrain traversability classifier for a planetary rover through simulation

机译:通过仿真训练地形漫步性分类器进行行星漫游者

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摘要

A classifier training methodology is presented for Kapvik, a micro-rover prototype. A simulated light detection and ranging scan is divided into a grid, with each cell having a variety of characteristics (such as number of points, point variance and mean height) which act as inputs to classification algorithms. The training step avoids the need for time-consuming and error-prone manual classification through the use of a simulation that provides training inputs and target outputs. This simulation generates various terrains that could be encountered by a planetary rover, including untraversable ones, in a random fashion. A sensor model for a three-dimensional light detection and ranging is used with ray tracing to generate realistic noisy three-dimensional point clouds where all points that belong to untraversable terrain are labelled explicitly. A neural network classifier and its training algorithm are presented, and the results of its output as well as other popular classifiers show high accuracy on test data sets after training. The network is then tested on outdoor data to confirm it can accurately classify real-world light detection and ranging data. The results show the network is able to identify terrain correctly, falsely classifying just 4.74% of untraversable terrain.
机译:展示了分类器培训方法,适用于KAPVIK,微罗孚原型。模拟光检测和测距扫描被划分为网格,每个电池具有各种特征(例如点数,点方差和平均高度),其充当分类算法的输入。培训步骤通过使用提供培训输入和目标输出的模拟,避免了需要耗时和错误的手动分类。该模拟产生了各种地形,这些地形可以通过行星漫游者(包括无法移动的地形)以随机的方式遇到。用于三维光检测和测距的传感器模型与射线跟踪一起使用,以产生现实的嘈杂三维点云,其中属于无法实现的地形的所有点都明确标记。提出了神经网络分类器及其训练算法,以及其输出的结果以及其他流行的分类器在训练后对测试数据集的高精度显示出高精度。然后在室外数据测试网络以确认它可以准确地分类真实的光检测和测距数据。结果表明,网络能够正确识别地形,错误地分类仅为4.74%的无法传播的地形。

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