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Robust Tracking Using Particle Filter with a Hybrid Feature

机译:使用具有混合功能的粒子滤波器进行稳健跟踪

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This paper presents a novel method for robust object tracking in video sequences using a hybrid feature-based observation model in a particle filtering framework. An ideal observation model should have both high ability to accurately distinguish objects from the background and high reliability to identify the detected objects. Traditional features are better at solving the former problem but weak in solving the latter one. To overcome that, we adopt a robust and dynamic feature called Grayscale Arranging Pairs (GAP), which has high discriminative ability even under conditions of severe illumination variation and dynamic background elements. Together with the GAP feature, we also adopt the color histogram feature in order to take advantage of traditional features in resolving the first problem. At the same time, an efficient and simple integration method is used to combine the GAP feature with color information. Comparative experiments demonstrate that object tracking with our integrated features performs well even when objects go across complex backgrounds.
机译:本文提出了一种在粒子滤波框架中使用基于混合特征的观察模型对视频序列进行鲁棒目标跟踪的新方法。理想的观察模型应该既具有从背景中准确区分物体的高能力,又具有识别被检测物体的高可靠性。传统功能在解决前一个问题上比较好,但在解决后一个问题上比较弱。为了克服这个问题,我们采用了一种强大的动态功能,称为灰度排列对(GAP),即使在严重的光照变化和动态背景元素的条件下,它也具有很高的判别能力。与GAP功能一起,我们还采用了颜色直方图功能,以利用传统功能来解决第一个问题。同时,一种有效且简单的集成方法用于将GAP功能与颜色信息进行组合。比较实验表明,即使对象经过复杂的背景,具有我们集成功能的对象跟踪也能很好地进行跟踪。

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