Multi-feature Visual Tracking Using Adaptive Unscented Kalman Filtering

Jiasheng Song, Guoqing Hu
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引用次数: 2

Abstract

Visual tracking is often confronted with some impediments, such as the target's sudden acceleration and structural deformation, occlusion, lighting changes and so on. To overcome these problems, a tracking approach is proposed, which is based on the unscented Kalman filter (UKF) and the multi-feature fusion. First, the mean and covariance of the target state variable is predicted based on a nearly constant velocity system. And the target's hue histogram and edge orientation histogram are extracted at the corresponding position. Second, the measured position is calculated by Mean-shift algorithm based on the fusion of multi-feature. Finally, according to the measured position the UKF updates the mean and covariance of the state variable and reports the current position of the target. The experiments in 2 different scenes showed that the tracking method could efficiently track the fast moving objects and adapt to the lighting changes, rotation, and partial occlusion and deform. These demonstrated that the method have more tracking accuracy and adaptive robustness.
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基于自适应无气味卡尔曼滤波的多特征视觉跟踪
视觉跟踪经常会遇到一些障碍,如目标的突然加速和结构变形、遮挡、光照变化等。为了克服这些问题,提出了一种基于无气味卡尔曼滤波(UKF)和多特征融合的跟踪方法。首先,基于近等速系统,预测目标状态变量的均值和协方差;在相应位置提取目标的色相直方图和边缘方向直方图。其次,采用基于多特征融合的Mean-shift算法计算测量位置;最后,根据测量到的位置,UKF更新状态变量的均值和协方差,并报告目标的当前位置。在2个不同场景下的实验表明,该跟踪方法可以有效地跟踪快速运动的物体,并适应光照变化、旋转、局部遮挡和变形。结果表明,该方法具有较高的跟踪精度和自适应鲁棒性。
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