Effective moving cast shadow detection for monocular color image sequences

Gsk Fung, N. Yung, G. Pang, A. Lai
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引用次数: 40

Abstract

For an accurate scene analysis in monocular image sequences, a robust segmentation of a moving object from the static background is generally required. However, the existence of moving cast shadow may lead to an inaccurate object segmentation, and as a result, lead to further erroneous scene analysis. An effective detection of moving cast shadow in monocular color image sequences is developed. Firstly, by realizing the various characteristics of shadow in luminance, chrominance, and gradient density, an indicator, called shadow confidence score, of the probability of the region classified as cast shadow is calculated. Secondly the canny edge detector is employed to detect edge pixels in the detected region. These pixels are then bounded by their convex hull, which estimates the position of the object. Lastly, by analyzing the shadow confidence score and the bounding hull, the cast shadow is identified as those regions outside the bounding hull and with high shadow confidence score. A number of typical outdoor scenes are evaluated and it is shown that our method can effectively detect the associated cast shadow from the object of interest.
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单眼彩色图像序列的有效运动投影检测
为了在单目图像序列中进行准确的场景分析,通常需要从静态背景中对运动物体进行鲁棒分割。然而,移动阴影的存在可能会导致物体分割不准确,从而导致进一步错误的场景分析。提出了一种有效的单眼彩色图像序列运动阴影检测方法。首先,通过实现阴影在亮度、色度、梯度密度等方面的各种特征,计算出被分类为阴影区域的概率指标——阴影置信度分数。其次,利用canny边缘检测器对检测区域的边缘像素进行检测;然后这些像素被它们的凸包包围,凸包估计物体的位置。最后,通过分析阴影置信度得分和边界船体,将投射阴影识别为边界船体外阴影置信度得分高的区域。对一些典型的户外场景进行了评估,结果表明我们的方法可以有效地检测到感兴趣对象的相关投影。
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