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Boundary Flow: A Siamese Network that Predicts Boundary Motion Without Training on Motion

机译:边界流:无需运动训练即可预测边界运动的暹罗网络

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Using deep learning, this paper addresses the problem of joint object boundary detection and boundary motion estimation in videos, which we named boundary flow estimation. Boundary flow is an important mid-level visual cue as boundaries characterize objects' spatial extents, and the flow indicates objects' motions and interactions. Yet, most prior work on motion estimation has focused on dense object motion or feature points that may not necessarily reside on boundaries. For boundary flow estimation, we specify a new fully convolutional Siamese network (FCSN) that jointly estimates object-level boundaries in two consecutive frames. Boundary correspondences in the two frames are predicted by the same FCSN with a new, unconventional deconvolution approach. Finally, the boundary flow estimate is improved with an edgelet-based filtering. Evaluation is conducted on three tasks: boundary detection in videos, boundary flow estimation, and optical flow estimation. On boundary detection, we achieve the state-of-the-art performance on the benchmark VSB100 dataset. On boundary flow estimation, we present the first results on the Sintel training dataset. For optical flow estimation, we run the recent approach CPM-Flow but on the augmented input with our boundary-flow matches, and achieve significant performance improvement on the Sintel benchmark.
机译:本文通过深度学习解决了视频中联合目标边界检测和边界运动估计的问题,我们将其称为边界流估计。边界流是重要的中层视觉提示,因为边界表征了对象的空间范围,并且边界流指示了对象的运动和交互作用。然而,大多数有关运动估计的现有工作都集中于密集对象运动或特征点,而这些特征点或特征点可能不一定位于边界上。对于边界流估计,我们指定了一个新的全卷积暹罗网络(FCSN),该网络在两个连续的帧中共同估计对象级别的边界。同一帧FCSN通过一种新的非常规反卷积方法可以预测两个帧中的边界对应关系。最后,通过基于边波的滤波改进了边界流估计。评估执行以下三个任务:视频中的边界检测,边界流估计和光流估计。在边界检测方面,我们在基准VSB100数据集上实现了最先进的性能。关于边界流估计,我们在Sintel训练数据集上显示了第一个结果。对于光流估计,我们运行了最新的方法CPM-Flow,但在边界流匹配的增强输入上,并在Sintel基准上实现了显着的性能改进。

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