Coherent Motion Segmentation in Moving Camera Videos Using Optical Flow Orientations

M. Narayana, A. Hanson, E. Learned-Miller
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引用次数: 125

Abstract

In moving camera videos, motion segmentation is commonly performed using the image plane motion of pixels, or optical flow. However, objects that are at different depths from the camera can exhibit different optical flows even if they share the same real-world motion. This can cause a depth-dependent segmentation of the scene. Our goal is to develop a segmentation algorithm that clusters pixels that have similar real-world motion irrespective of their depth in the scene. Our solution uses optical flow orientations instead of the complete vectors and exploits the well-known property that under camera translation, optical flow orientations are independent of object depth. We introduce a probabilistic model that automatically estimates the number of observed independent motions and results in a labeling that is consistent with real-world motion in the scene. The result of our system is that static objects are correctly identified as one segment, even if they are at different depths. Color features and information from previous frames in the video sequence are used to correct occasional errors due to the orientation-based segmentation. We present results on more than thirty videos from different benchmarks. The system is particularly robust on complex background scenes containing objects at significantly different depths.
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基于光流取向的运动摄像机视频相干运动分割
在移动摄像机视频中,运动分割通常使用像素的图像平面运动或光流来执行。然而,距离相机不同深度的物体即使具有相同的真实运动,也会表现出不同的光流。这可能导致场景的深度依赖分割。我们的目标是开发一种分割算法,将具有相似现实世界运动的像素聚类,而不管它们在场景中的深度如何。我们的解决方案使用光流方向而不是完全矢量,并利用了众所周知的特性,即在相机平移下,光流方向与物体深度无关。我们引入了一个概率模型,该模型自动估计观察到的独立运动的数量,并产生与场景中真实运动一致的标记。我们的系统的结果是,静态对象被正确地识别为一个部分,即使它们在不同的深度。利用视频序列中前一帧的颜色特征和信息来纠正由于基于方向的分割而产生的偶尔错误。我们展示了来自不同基准的30多个视频的结果。该系统在包含深度差异很大的物体的复杂背景场景中具有特别的鲁棒性。
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