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High-Dimensional Statistical Measure for Region-of-Interest Tracking

机译:兴趣区域跟踪的高维统计量

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This paper deals with region-of-interest (ROI) tracking in video sequences. The goal is to determine in successive frames the region which best matches, in terms of a similarity measure, a ROI defined in a reference frame. Some tracking methods define similarity measures which efficiently combine several visual features into a probability density function (PDF) representation, thus building a discriminative model of the ROI. This approach implies dealing with PDFs with domains of definition of high dimension. To overcome this obstacle, a standard solution is to assume independence between the different features in order to bring out low-dimension marginal laws and/or to make some parametric assumptions on the PDFs at the cost of generality. We discard these assumptions by proposing to compute the Kullback–Leibler divergence between high-dimensional PDFs using the $k$ th nearest neighbor framework. In consequence, the divergence is expressed directly from the samples, i.e., without explicit estimation of the underlying PDFs. As an application, we defined 5, 7, and 13-dimensional feature vectors containing color information (including pixel-based, gradient-based and patch-based) and spatial layout. The proposed procedure performs tracking allowing for translation and scaling of the ROI. Experiments show its efficiency on a movie excerpt and standard test sequences selected for the specific conditions they exhibit: partial occlusions, variations of luminance, noise, and complex motion.
机译:本文涉及视频序列中的感兴趣区域(ROI)跟踪。目标是在连续帧中确定根据相似性度量与参考帧中定义的ROI最匹配的区域。一些跟踪方法定义了相似性度量,这些度量将多个视觉特征有效地组合为概率密度函数(PDF)表示形式,从而建立了ROI的判别模型。这种方法意味着处理具有高维定义域的PDF。为了克服这一障碍,一种标准的解决方案是假设不同特征之间的独立性,以便得出低维的边际定律和/或以普遍性为代价对PDF进行一些参数假设。我们建议使用第k个最近邻框架计算高维PDF之间的Kullback-Leibler散度,从而抛弃这些假设。结果,直接从样本表达差异,即,无需显式估计基础PDF。作为应用程序,我们定义了5、7和13维特征向量,其中包含颜色信息(包括基于像素,基于梯度和基于补丁的信息)和空间布局。所提出的过程执行跟踪,以实现ROI的转换和缩放。实验表明,在电影摘录和针对特定条件而选择的标准测试序列中,它的效率很高:部分遮挡,亮度变化,噪声和复杂运动。

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