不规则地形车辆上摄像机控制的鲁棒跟踪

J. Ding, H. Kondou, H. Kimura, Y. Hada, K. Takase
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引用次数: 6

摘要

对于在自然环境中不规则地形上运行的移动机器人来说,通过视觉实现对目标的鲁棒跟踪是非常困难的,因为相机的滚动和俯仰以及目标与相机之间的相对运动引起的图像变形会影响跟踪能力。解决这类问题的一种方法是在跟踪时将目标图像与许多仿射变换的候选图像进行匹配。但是当候选图像的数量越来越大时,由于计算成本的原因,这种方法变得不可行。本文提出了鲁棒性跟踪分析(RAT)来提高跟踪能力。RAT是一种基于目标图像特征的分析,其中定义了三个参数——“可探测性”、“深度鲁棒性(RBD)”和“旋转鲁棒性(RBR)”。在执行跟踪任务之前,通过使用RAT分析对象图像,可以找到更健壮的模板。实验结果验证了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Robust tracking for camera control on an irregular terrain vehicle
Tracking a target robustly by vision is very difficult for a mobile robot running on irregular terrain in a natural environment, because the image deformation caused by rolling and pitching of the camera, as well as relative movement between the target and the camera, affect the tracking ability. One approach to cope with such problems is matching the target image with many affine transformed candidate images while tracking. But when the number of candidate images gets larger, such approach becomes unfeasible because of computational cost. In this paper, we propose Robustness Analysis for Tracking (RAT) to improve the tracking ability. RAT is an analysis based on features of the object image, where three parameters - 'Detectability', 'Robustness for Depth (RBD)' and 'Robustness for Rotation (RBR)' - are defined. Much more robust templates can be found by analyzing the object image using RAT before the tracking task is performed. Experimental results verify the effectiveness of this method.
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