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A Shadow Detection Method via Online Self-modeling

机译:通过在线自我建模的阴影检测方法

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摘要

In this paper, we propose an accurate shadow detection method via online self-modeling without tuning any feature threshold and manual labeling work. A primary classification is obtained from the fusion of classification results of a weak classifier like a low-value chromatic threshold technique and the online learned shadow generative model. Then object skeleton property and shadow's spatial structure characters are considered to remove the camouflages and output the final classification result, the detected shadow pixels are used as training samples in the learning phase without manually labeling work. Online shadow model is learned by using Gaussian functions to fit the histograms of differential Hue, Saturation, and Intensity between background pixels and corresponding shadow pixels. Experiments indicate that the proposed method achieve both high detective and discriminative rates and outperform the approaches which need tuning thresholds when applied scene changes in accuracy and robustness.
机译:在本文中,我们通过在线自我建模提出了精确的阴影检测方法,而无需调整任何特征阈值和手动标记工作。从弱分类器的分类结果的融合,如低价比阈值技术和在线学习的阴影生成模型,获得了主要分类。然后,对象骨架属性和阴影的空间结构字符被认为是拆除伪装并输出最终分类结果,所以检测到的阴影像素被用作学习阶段的训练样本而不手动标记工作。通过使用高斯函数来学习在线阴影模型,以适应背景像素和相应的阴影像素之间的差分色调,饱和度和强度的直方图。实验表明,该方法实现了高侦探和辨别速率,并且在施加的场景变化准确性和鲁棒性时,占据了需要调谐阈值的方法。

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