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Layered segmentation and optical flow estimation over time

机译:随时间分层分层和光流估计

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Layered models provide a compelling approach for estimating image motion and segmenting moving scenes. Previous methods, however, have failed to capture the structure of complex scenes, provide precise object boundaries, effectively estimate the number of layers in a scene, or robustly determine the depth order of the layers. Furthermore, previous methods have focused on optical flow between pairs of frames rather than longer sequences. We show that image sequences with more frames are needed to resolve ambiguities in depth ordering at occlusion boundaries; temporal layer constancy makes this feasible. Our generative model of image sequences is rich but difficult to optimize with traditional gradient descent methods. We propose a novel discrete approximation of the continuous objective in terms of a sequence of depth-ordered MRFs and extend graph-cut optimization methods with new “moves” that make joint layer segmentation and motion estimation feasible. Our optimizer, which mixes discrete and continuous optimization, automatically determines the number of layers and reasons about their depth ordering. We demonstrate the value of layered models, our optimization strategy, and the use of more than two frames on both the Middlebury optical flow benchmark and the MIT layer segmentation benchmark.
机译:分层模型为估算图像运动和分割运动场景提供了一种引人注目的方法。然而,先前的方法未能捕获复杂场景的结构,提供精确的对象边界,有效地估计场景中的层数或稳健地确定层的深度顺序。此外,先前的方法集中于成对的帧之间的光流,而不是更长的序列。我们表明需要更多帧的图像序列来解决遮挡边界处深度顺序的歧义;时间层恒定性使其可行。我们的图像序列生成模型很丰富,但是很难用传统的梯度下降方法进行优化。我们根据一系列深度排序的MRF提出了一种连续目标的新型离散逼近,并使用新的“运动”扩展了图割优化方法,使联合层分割和运动估计变得可行。我们的优化程序将离散优化和连续优化混合在一起,可以自动确定层数以及深度排序的原因。我们展示了分层模型的价值,我们的优化策略以及在Middlebury光流基准和MIT层分段基准上使用了两个以上的框架。

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