基于运动信息的移动机器人实时运动目标跟踪

M. A. Mohamed, Christoph Böddeker, B. Mertsching
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引用次数: 8

摘要

物体运动感知是移动机器人在动态环境中执行任务的关键问题。因此,我们提出了一种实时跟踪多个运动物体的方法。该算法首先检测运动区域,并将密集光流技术专门应用于两个连续帧之间的运动区域。然后,假设独立运动的物体经过纯平移,根据平面视差运动确定各区域内的运动物体。对于后续的帧,根据流场的方向跟踪检测到的运动物体,同时更新新的位置。然后,在跟踪期间对新检测到的对象进行建模。在不同的场景下对该算法进行了测试,实验结果证明了该算法的有效性。可以看出,在一个场景中检测和跟踪多个运动物体的总体处理时间显著减少。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Real-time moving objects tracking for mobile-robots using motion information
The perceptional of the motion of objects is a key problem for a mobile robot to perform tasks in a dynamic environment. Thus, we present a real-time approach for tracking multiple moving objects. The proposed algorithm initially detects moving regions and a dense optical flow technique is exclusively applied to those regions between two consecutive frames. Afterwards, the moving objects in each region are determined based on the planar parallax motion by assuming that independently moving objects undergo pure translation. For subsequent frames, the detected moving objects are tracked based on the orientation of the flow fields, while the new position is updated. In turn, the new detected objects are modeled during a tracking period. The proposed algorithm has been tested with various scenarios and the experimental results demonstrate that the proposed algorithm works properly. It can be shown that there is a significant reduction in the overall processing time for detecting and tracking multiple moving objects in a scene.
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