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Moving object tracking method based on improved lucas-kanade sparse optical flow algorithm

机译:基于改进的lucas-kanade稀疏光流算法的运动目标跟踪方法

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Improved the traditional L-K algorithm by lifting the wavelet multi-resolution algorithm, and the tracking speed of system was greatly enhanced while combined with SURF matching algorithm. On the basis of detecting feature points, reduced the probability of the exterior points. Tracking local feature points by multi resolution wavelet Pyramid optical flow algorithm solved the problems of object deformation, high speed, fog and haze, uneven illumination, partial occlusion in complex environment. The new method can improve the anti noise ability and improve the efficiency and accuracy of the algorithm. In addition, an adaptive template updating strategy is proposed to avoid tracking failures due to long time tracking errors.
机译:通过提升小波多分辨率算法对传统的L-K算法进行改进,结合SURF匹配算法大大提高了系统的跟踪速度。在检测特征点的基础上,降低了外部点的概率。利用多分辨率小波金字塔光流算法跟踪局部特征点,解决了复杂环境下物体变形,高速,雾霾,照明不均匀,局部遮挡等问题。新方法可以提高抗噪能力,提高算法的效率和准确性。另外,提出了一种自适应模板更新策略来避免由于长时间跟踪错误而导致的跟踪失败。

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