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Foreground Object Segmentation from Binocular Stereo Video

机译:双目立体视频的前景对象分割

摘要

Moving cameras are needed for a wide range of applications in robotics, vehicle systems, surveillance, etc. However, many foreground object segmentation methods reported in the literature are unsuitable for such settings; these methods assume that the camera is fixed and the background changes slowly, and are inadequate for segmenting objects in video if there is significant motion of the camera or background. To address this shortcoming, a new method for segmenting foreground objects is proposed that utilizes binocular video. The method is demonstrated in the application of tracking and segmenting people in video who are approximately facing the binocular camera rig. Given a stereo image pair, the system first tries to find faces. Starting at each face, the region containing the person is grown by merging regions from an over-segmented color image. The disparity map is used to guide this merging process. The system has been implemented on a consumer-grade PC, and tested on video sequences of people indoors obtained from a moving camera rig. As can be expected, the proposed method works well in situations where other foreground-background segmentation methods typically fail. We believe that this superior performance is partly due to the use of object detection to guide region merging in disparity/color foreground segmentation, and partly due to the use of disparity information available with a binocular rig, in contrast with most previous methods that assumed monocular sequences.
机译:在机器人技术,车辆系统,监视等领域的广泛应用中,都需要移动摄像机。但是,文献中报道的许多前景对象分割方法不适合此类设置。这些方法假定摄像机是固定的并且背景变化缓慢,并且如果摄像机或背景的运动明显,则不足以分割视频中的对象。为了解决这个缺点,提出了一种利用双目视频对前景物体进行分割的新方法。该方法在跟踪和分割视频中大约面对双眼相机装置的人的应用中得到了证明。给定一个立体图像对,系统首先尝试查找人脸。从每张面孔开始,通过合并来自过度分割的彩色图像的区域来生长包含人的区域。视差图用于指导此合并过程。该系统已在消费级PC上实现,并在从移动摄像机装置获得的室内人员视频序列上进行了测试。可以预料,该方法在其他前景背景分割方法通常失败的情况下效果很好。我们认为,这种出色的性能部分是由于使用对象检测来指导视差/颜色前景分割中的区域合并,部分是由于使用了双目镜架可提供的视差信息,这与大多数以前假设单眼的方法相反序列。

著录项

  • 作者

    Law Kevin; Sclaroff Stan;

  • 作者单位
  • 年度 2005
  • 总页数
  • 原文格式 PDF
  • 正文语种 en_us
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