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A statistical approach for shadow detection using spatio-temporal contexts

机译:一种使用时空上下文进行阴影检测的统计方法

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Background subtraction is an important step used to segment moving regions in surveillance videos. However, cast shadows are often falsely labeled as foreground objects, which may severely degrade the accuracy of object localization and detection. Effective shadow detection is necessary for accurate foreground segmentation, especially for outdoor scenes. Based on the characteristics of shadows, such as luminance reduction, chromaticity invariance and texture invariance, we introduce a nonparametric framework for modeling surface behavior under cast shadows. To each pixel, we assign a potential shadow value with a confidence weight, indicating the probability that the pixel location is an actual shadow point. Given an observed RGB value for a pixel in a new frame, we use its recent spatio-temporal context to compute an expected shadow RGB value. The similarity between the observed and the expected shadow RGB values determines whether a pixel position is a true shadow. Experimental results show the performance of the proposed method on a suite of standard indoor and outdoor video sequences.
机译:背景扣除是用于分割监视视频中运动区域的重要步骤。但是,投射阴影经常被错误地标记为前景对象,这可能会严重降低对象定位和检测的准确性。有效的阴影检测对于准确的前景分割是必要的,尤其是对于室外场景。基于阴影的特征,例如亮度降低,色度不变和纹理不变,我们介绍了一种非参数框架,用于对投射阴影下的表面行为进行建模。我们为每个像素分配一个带有置信度权重的潜在阴影值,以指示像素位置是实际阴影点的概率。给定新帧中某个像素的RGB值,我们使用其最近的时空上下文来计算预期的阴影RGB值。观察到的阴影RGB值与预期阴影RGB值之间的相似性确定像素位置是否为真实阴影。实验结果表明,该方法在一套标准的室内和室外视频序列上的性能。

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