基于改进的凸轮移位的移动目标跟踪方法

Qi-Jun Luo Qi-Jun Luo, Zheng Li Qi-Jun Luo, Xin Tian Zheng Li, Hong-Ying Zhang Xin Tian
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引用次数: 0

摘要

针对复杂背景下目标遮挡等干扰会降低移动目标的跟踪精度,甚至导致跟踪失败的问题,本文提出了一种基于改进的Camshift算法的移动目标跟踪算法。首先,利用高斯背景对前景图像进行建模,改进反投影图像,然后去除反投影的干扰,提高复杂背景条件下的跟踪效果。其次,利用卡尔曼滤波预测轨迹,进一步提高了 Camshift 算法在遮挡条件下的跟踪精度。经过大量实验,结果表明所提出的算法能有效提高跟踪精度,满足实时性要求。
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Moving Target Tracking Method Based on Improved Camshift
Aiming at the problem that target occlusion and other disturbances in complex background will reduce the tracking accuracy of moving target, and even lead to tracking failure, this paper proposes a moving target tracking algorithm based on the improved Camshift algorithm. Firstly, Gaussian background is used to model the foreground image to improve the backprojection image, and then the interference of backprojection is removed to improve the tracking effect in complex background conditions. Secondly, Kalman filtering is utilized to predict the trajectory, which further improves the tracking accuracy of Camshift algorithm in occlusion condition. A lot of experiments are processed, and the results show that the proposed algorithm could effectively improve the tracking accuracy and meet the real-time requirements.
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