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OBJECT TRACKING BY APPLYING MEAN-SHIFT ALGORITHM INTO PARTICLE FILTERING

机译:通过在粒子滤波中应用均值漂移算法进行对象跟踪

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摘要

In the pursuit of robust object tracking , both particle filter and mean-shift algorithm have proven successful approaches. Also both of them have weaknesses. The article presents the integration of mean-shift algorithm with particle filtering during the moving object tracking. In our method Meanshift algorithm is used in the sampling steps of particle filtering, which efficiently reduces the number of sampled particles. That integrates the advantages of mean-shift algorithm and particle filtering. When applied in the moving object tracking, our method proved to be more robust and time saving compared with the conventional particle filtering and mean shift algorithm.
机译:在追求鲁棒的目标跟踪中,粒子滤波和均值漂移算法均被证明是成功的方法。他们俩也都有弱点。本文介绍了在运动目标跟踪过程中均值漂移算法与粒子滤波的集成。在我们的方法中,Meanshift算法用于粒子滤波的采样步骤,可有效减少采样粒子的数量。整合了均值漂移算法和粒子滤波的优点。与传统的粒子滤波和均值漂移算法相比,该方法在运动目标跟踪中具有更强的鲁棒性和省时性。

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