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A Monocular Vision Sensor-Based Obstacle Detection Algorithm for Autonomous Robots

机译:基于单目视觉传感器的自主机器人障碍物检测算法

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摘要

This paper presents a monocular vision sensor-based obstacle detection algorithm for autonomous robots. Each individual image pixel at the bottom region of interest is labeled as belonging either to an obstacle or the floor. While conventional methods depend on point tracking for geometric cues for obstacle detection, the proposed algorithm uses the inverse perspective mapping (IPM) method. This method is much more advantageous when the camera is not high off the floor, which makes point tracking near the floor difficult. Markov random field-based obstacle segmentation is then performed using the IPM results and a floor appearance model. Next, the shortest distance between the robot and the obstacle is calculated. The algorithm is tested by applying it to 70 datasets, 20 of which include nonobstacle images where considerable changes in floor appearance occur. The obstacle segmentation accuracies and the distance estimation error are quantitatively analyzed. For obstacle datasets, the segmentation precision and the average distance estimation error of the proposed method are 81.4% and 1.6 cm, respectively, whereas those for a conventional method are 57.5% and 9.9 cm, respectively. For nonobstacle datasets, the proposed method gives 0.0% false positive rates, while the conventional method gives 17.6%.
机译:本文提出了一种基于单眼视觉传感器的自主机器人障碍物检测算法。在感兴趣的底部区域的每个单独的图像像素都被标记为属于障碍物或地面。虽然常规方法依赖点跟踪来获取用于障碍物检测的几何线索,但所提出的算法使用了反向透视映射(IPM)方法。当摄像头不在地板上时,此方法会更加有利,这将使地板附近的点跟踪变得困难。然后使用IPM结果和地板外观模型执行基于Markov随机场的障碍物分割。接下来,计算机器人与障碍物之间的最短距离。通过将该算法应用于70个数据集进行了测试,其中20个包括地板外观发生较大变化的非障碍图像。定量分析了障碍物的分割精度和距离估计误差。对于障碍物数据集,该方法的分割精度和平均距离估计误差分别为81.4%和1.6 cm,而传统方法的分割精度和平均距离估计误差分别为57.5%和9.9 cm。对于非障碍数据集,提出的方法给出0.0%的假阳性率,而传统方法给出17.6%。

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