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Tracking-Based Non-Parametric Background-Foreground Classification in a Chromaticity-Gradient Space

机译:色度-梯度空间中基于跟踪的非参数背景-前景分类

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摘要

This work presents a novel background-foreground classification technique based on adaptive non-parametric kernel estimation in a color-gradient space of components. By combining normalized color components with their gradients, shadows are efficiently suppressed from the results, while the luminance information in the moving objects is preserved. Moreover, a fast multi-region iterative tracking strategy applied over previously detected foreground regions allows to construct a robust foreground modeling, which combined with the background model increases noticeably the quality in the detections. The proposed strategy has been applied to different kind of sequences, obtaining satisfactory results in complex situations such as those given by dynamic backgrounds, illumination changes, shadows and multiple moving objects.
机译:这项工作提出了一种新的基于背景和前景的分类技术,该技术基于组件的颜色渐变空间中的自适应非参数核估计。通过将归一化的颜色分量及其渐变相结合,可以有效地抑制阴影,同时保留运动对象中的亮度信息。此外,在先前检测到的前景区域上应用的快速多区域迭代跟踪策略允许构建健壮的前景建模,将其与背景模型结合可以显着提高检测质量。所提出的策略已应用于不同种类的序列,在复杂的情况下(例如由动态背景,光照变化,阴影和多个运动物体给出的情况)获得令人满意的结果。

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