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Sequential Monte Carlo tracking by fusing multiple cues in video sequences

机译:通过融合视频序列中的多个线索来进行顺序蒙特卡洛跟踪

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摘要

This paper presents visual cues for object tracking in video sequences using particle filtering. A consistent histogram-based framework is developed for the analysis of colour, edge and texture cues. The visual models for the cues are learnt from the first frame and the tracking can be carried out using one or more of the cues. A method for online estimation of the noise parameters of the visual models is presented along with a method for adaptively weighting the cues when multiple models are used. A particle filter (PF) is designed for object tracking based on multiple cues with adaptive parameters. Its performance is investigated and evaluated with synthetic and natural sequences and compared with the mean-shift tracker. We show that tracking with multiple weighted cues provides more reliable performance than single cue tracking.
机译:本文提出了使用粒子滤波对视频序列中的对象进行跟踪的视觉提示。开发了一个基于直方图的一致框架,用于分析颜色,边缘和纹理提示。从第一帧学习提示的视觉模型,并可以使用一个或多个提示进行跟踪。提出了一种在线估计视觉模型的噪声参数的方法,以及一种在使用多个模型时自适应加权提示的方法。粒子滤波器(PF)设计用于基于具有自适应参数的多个线索进行对象跟踪。使用合成和自然序列对它的性能进行了研究和评估,并与平均漂移跟踪器进行了比较。我们显示,具有多个加权提示的跟踪比单个提示跟踪提供了更可靠的性能。

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