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New depth-cue-based algorithm for background-foreground segmentation

机译:新的基于深度提示的背景-前景分割算法

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Abstract: In this paper, we present a method for segmenting the interesting foreground from the background using a novel depth cue based algorithm. The input to the algorithm are two pairs of images, the first being the stereo pair corresponding to the background image only (called the background pair), and the second corresponds to the stereo pair when the object(s) of interest is present in front of the background (called the composite pair). Since we use stereo images rather than monocular images, we can utilize the fact that the interesting foreground has a depth/disparity value which is different from the corresponding values for the background. Under situations such as poor lighting conditions, or when lighting conditions change continuously, it may be quite unreliable to extract the foreground by the process of subtracting the composite image from its background counterpart, followed by a thresholding process. Also, the camera noise is usually unknown, in general. Instead, we compute the disparity image corresponding to the background stereo pair, and validate the disparity values for the composite pair. A point belonging to the foreground will certainly have a higher disparity value. Based on the novel depth cue based measure introduced in this paper, it would fail the validation process and hence would be classified as a foreground pixel. The other notable point is that the computationally expensive stereo matching process is performed offline, and hence the segmentation process is quite fast. !12
机译:摘要:在本文中,我们提出了一种使用新的基于深度提示的算法从背景中分割出有趣的前景的方法。该算法的输入是两对图像,第一对是仅与背景图像相对应的立体声对(称为背景对),第二对是当感兴趣的对象位于前方时与立体声对相对应的图像。的背景(称为复合对)。因为我们使用立体图像而不是单眼图像,所以我们可以利用以下事实:有趣的前景具有与背景的相应值不同的深度/视差值。在不良照明条件下或照明条件连续变化的情况下,通过从背景图像中减去合成图像然后进行阈值处理的过程来提取前景可能非常不可靠。而且,通常通常不知道相机的噪点。相反,我们计算与背景立体声对相对应的视差图像,并验证复合对的视差值。属于前景的点肯定会具有较高的视差值。基于本文介绍的新颖的基于深度提示的度量,它将无法通过验证过程,因此将被归类为前景像素。另一个值得注意的点是,计算量大的立体声匹配过程是离线执行的,因此分割过程非常快。 !12

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