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Visual Tracking Algorithm Based on CAMSHIFT and Multi-cue Fusion for Human Motion Analysis

机译:基于CAMShift和Mule-Cue Fusion进行人体运动分析的视觉跟踪算法

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摘要

It is still a challenging problem for tracking objects in complex visual situations, such as an object is occluded or the object's color features are very similar to its background. Therefore, a novel visual tracking algorithm is proposed for multiple cues fusion based on three common cues: color, target position prediction and motion continuity in this paper. Color feature is free of translation and rotation and robust to partial occlusions and pose variations. Features of target position prediction and motion continuity can handle the condition that the color difference between the foreground and the background is similar. Combining with CAMSHIFT (Continuously Adaptive Mean Shift) technique, experimental results show that the proposed visual tracking algorithm is more robust than traditional single cue and gets better tracking effect than CMST (Collaborative Mean Shift Tracking). Successful rates of the proposed algorithm are 70% to 100% in 4 different complex conditions.
机译:对于在复杂的视觉情况下跟踪对象仍然是一个具有挑战性的问题,例如对象被遮挡,或者对象的颜色功能与其背景非常相似。因此,提出了一种基于三个常见线索的多个提示融合的新型视觉跟踪算法:本文中的颜色,目标位置预测和运动连续性。颜色特征是没有翻译和旋转的,并且可以部分闭塞和姿势变化。目标位置预测和运动连续性的特征可以处理前景和背景之间的色差的条件。与CAMSHIFT(连续自适应均值换档)技术相结合,实验结果表明,所提出的视觉跟踪算法比传统单个提示更强大,并且比CMST获得更好的跟踪效果(协作平均移位)。在4种不同的复杂条件下,所提出的算法的成功率为70%至100%。

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