非结构化场景下基于视觉的概率占用地图自主导航

R. L. Klaser, F. Osório, D. Wolf
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引用次数: 5

摘要

基于视觉的机器人感知由于其普遍可用性和低成本的特点,在建筑系统中一直是人们关注的焦点。在立体相机中,视差计算方法产生的三维数据不准确,并且存在较大的噪声。本文提出了一种利用概率占用图方法处理立体摄像机产生的噪声三维点云,建立导航地图并标记障碍物的方法。目标是基于一定的确定性,连续整合标记占用空间和空闲空间的传感器读数,并随着时间的推移进行积累。输出是我们用来规划轨迹路径的可导航性图。我们主要关注农业领域的应用。我们已经在模拟中对系统进行了全面建模和测试,并在非结构化场景下使用我们的真实车辆平台Carina I进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Vision-Based Autonomous Navigation with a Probabilistic Occupancy Map on Unstructured Scenarios
Vision-based robotics perception still have a great focus of attention on building systems because of its common availability and low cost. The 3D data produced by the disparity calculation methods in stereo cameras are inaccurate and presents substantial noise. We present here our method to deal with the noisy 3D point cloud produced by stereo camera to build a navigation map and mark obstacles with a probabilistic occupancy map approach. The objective is to integrate continuously the sensor readings marking occupied and free space based on some certainty and accumulate it over time. The output is a navigability map we use to plan a trajectory path. Our main focus is applications like agricultural fields. We have modeled and tested the system fully in simulation and validated it with our real vehicle platform Carina I on unstructured scenarios.
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