A new moving object tracking method using particle filter and probability product kernel

Hamd Ait Abdelali, F. Essannouni, Leila Essannouni, D. Aboutajdine
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引用次数: 6

Abstract

Moving object tracking is a tricky job in computer vision problems. In this approach, the object tracking system relies on the deterministic search of target, whose color content matches a reference histogram model. A simple RGB histogram-based color model is used to develop our observation system. Secondly and finally, we describe a new approach for moving object tracking with particle filter by shape information. Particle filtering has been proven very successful for non-Gaussian and non-linear estimation problems. In this approach we combine between particle filter and the probability product kernels as a similarity measure using integral image to compute the histograms of all possible target regions of object tracking in video sequence. The shape similarity between a target and estimated regions in the video sequence is measured by their normalized histogram. Target of object tracking is created instantly by selecting an object from the video sequence by a rectangle. Experimental results have been presented to show the effectiveness of our proposed system.
提出了一种基于粒子滤波和概率积核的运动目标跟踪方法
在计算机视觉问题中,运动目标跟踪是一项棘手的工作。在该方法中,目标跟踪系统依赖于目标的确定性搜索,目标的颜色内容与参考直方图模型匹配。一个简单的基于RGB直方图的颜色模型被用来开发我们的观测系统。最后,提出了一种基于形状信息的粒子滤波运动目标跟踪方法。粒子滤波已被证明是非常成功的非高斯和非线性估计问题。该方法结合粒子滤波和概率积核作为相似性度量,利用积分图像计算视频序列中目标跟踪的所有可能目标区域的直方图。目标和视频序列中估计区域的形状相似度通过它们的归一化直方图来衡量。目标跟踪是通过矩形从视频序列中选择一个目标来实现的。实验结果表明了系统的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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