Data Association Based Tracking Traffic Objects

Tao Gao
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引用次数: 1

Abstract

For the widely demanding of adaptive multiple moving objects tracking in intelligent transportation field, a new type of traffic video based multi-object tracking method is presented. Background is modeled by difference of Gaussians (DOG) probability kernel and background subtraction is used to detect multiple moving objects. After obtaining the foreground, shadow is eliminated by an edge detection method. A type of particle filtering combined with SIFT method is used for motion tracking. A queue chain method is used to record data association among different objects, which could improve the detection accuracy and reduce the complexity. By actual road tests, the system tracks multi-object with a better performance of real time and mutual occlusion robustness, indicating that it is effective for intelligent transportation system.
基于数据关联的交通对象跟踪
针对智能交通领域对多目标自适应跟踪的广泛需求,提出了一种基于交通视频的多目标跟踪方法。背景建模采用差分高斯(DOG)概率核,背景减法检测多个运动目标。在获得前景后,通过边缘检测方法消除阴影。采用一种粒子滤波与SIFT相结合的方法进行运动跟踪。采用队列链的方法记录不同对象之间的数据关联,提高了检测精度,降低了检测复杂度。通过实际道路测试,该系统具有较好的实时性和互遮挡鲁棒性,可用于智能交通系统。
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