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Video Segmentation via Object Flow

机译:通过对象流进行视频分割

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摘要

Video object segmentation is challenging due to fast moving objects, deforming shapes, and cluttered backgrounds. Optical flow can be used to propagate an object segmentation over time but, unfortunately, flow is often inaccurate, particularly around object boundaries. Such boundaries are precisely where we want our segmentation to be accurate. To obtain accurate segmentation across time, we propose an efficient algorithm that considers video segmentation and optical flow estimation simultaneously. For video segmentation, we formulate a principled, multiscale, spatio-temporal objective function that uses optical flow to propagate information between frames. For optical flow estimation, particularly at object boundaries, we compute the flow independently in the segmented regions and recompose the results. We call the process object flow and demonstrate the effectiveness of jointly optimizing optical flow and video segmentation using an iterative scheme. Experiments on the SegTrack v2 and Youtube-Objects datasets show that the proposed algorithm performs favorably against the other state-of-the-art methods.
机译:由于对象快速移动,形状变形和背景混乱,视频对象分割具有挑战性。可以使用光流随时间传播对象分割,但是不幸的是,光流通常不准确,尤其是在对象边界附近。这些边界正是我们希望分割准确的地方。为了获得跨时间的准确分段,我们提出了一种有效的算法,该算法同时考虑了视频分段和光流估计。对于视频分割,我们制定了一个有原则的多尺度时空目标函数,该函数使用光流在帧之间传播信息。对于光流估计,尤其是在对象边界处,我们独立地在分段区域中计算流,然后重新组合结果。我们称其为过程对象流,并演示了使用迭代方案共同优化光流和视频分割的有效性。在SegTrack v2和Youtube-Objects数据集上进行的实验表明,所提出的算法与其他最新方法相比具有出色的性能。

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