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Learning spatio-temporal dependency of local patches for complexmotion segmentation

机译:学习局部时空对复杂运动分割的依赖性

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Segmenting complex motion, such as articulated motion and deformable objects, can be difficult if the prior knowledge of the motion pattern is not available. We present a novel method for motion segmentation by learning the motion priors from exemplar motions to guide the segmentation. Instead of modeling the motion field explicitly, we decompose each video frame into a number of local patches and learn the spatio-temporal contextual relations among them, e.g., if their motion relationships are consistent with that from the training data. Based on a novel motion feature to measure the relative motion of two patches, the SVM classifier learns their pairwise relationship. We convert the motion segmentation problem to a binary labeling problem, and propose an iterative solution to group the local patches whose motions are consistent. Compared with other approaches, such as the graph cut and normalized cut methods, this new method is computationally more efficient and is able to better handle the inaccurate inference of pairwise relationships. Results on both synthesized and real videos show that our method can learn to segment different types of complex motion patterns.
机译:如果无法获得运动模式的先验知识,则很难分割复杂的运动,例如关节运动和可变形对象。我们通过从示例性运动中学习运动先验来指导细分,从而提出了一种新的运动细分方法。我们没有将运动场明确建模,而是将每个视频帧分解为多个局部块并了解它们之间的时空上下文关系,例如,如果它们的运动关系与训练数据的运动关系一致。 SVM分类器基于一种新颖的运动功能来测量两个面片的相对运动,从而了解它们的成对关系。我们将运动分割问题转换为二进制标记问题,并提出了一种迭代解决方案来对运动一致的局部面片进行分组。与其他方法(例如图割和归一化割方法)相比,此新方法在计算上更有效,并且能够更好地处理成对关系的不正确推断。合成视频和真实视频的结果都表明,我们的方法可以学习分割不同类型的复杂运动模式。

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