自主移动机器人视频序列中交通标志的实时检测与跟踪

Zhao Boxin, Jiang Jun, N. Yifeng, Shen Lincheng
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引用次数: 2

摘要

本文讨论了自动驾驶汽车(P3-AT移动机器人)实时交通标志检测与跟踪方法的理论基础和实际实现。连续自适应均值移位(Cam-Shift)算法速度快,对目标的旋转和尺度不敏感,是一种高效的目标跟踪算法,但受背景的影响较大。为了提高跟踪精度,设计了交通标志概率模型,提出了深度优先区域搜索算法去除冗余背景信息,然后采用Cam-Shift方法对交通标志进行跟踪。实验是在高保真的模拟城市环境中进行的。实验结果表明,该算法在交通标志图像背景杂乱、甚至部分遮挡的情况下,能够提高检测精度和跟踪效率。在实现方面,核心代码是基于OpenCV库实现的,结果是实时的。
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Real-Time Detection and Tracking of Traffic Sign in Video Sequences for Autonomous Mobile Robot
In this paper, we discuss theoretical foundations and a practical realization of real-time traffic sign detection and tracking method for a autonomous vehicle (P3-AT mobile robot). Continuous adaptive mean shift (Cam-Shift) algorithm is efficient for object tracking with its high speed and insensitiveness to the rotation and scale of the target, but it is influenced by the background. In order to improve the tracking accuracy, we design a traffic sign probability model, and present a depth-first region search algorithm to remove the redundant background information, and then track the sign by Cam-Shift method. The experiments are conducted in a simulated urban environment with high fidelity. The experimental results show that the algorithm can improve the detection accuracy and tracking efficiency under the condition of traffic sign images with clutter background, or even partial occlusion. On the implementation side, with the core code implemented based on the OpenCV library, the results accomplish in real-time.
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