Local Layering for Joint Motion Estimation and Occlusion Detection

Deqing Sun, Ce Liu, H. Pfister
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引用次数: 66

Abstract

Most motion estimation algorithms (optical flow, layered models) cannot handle large amount of occlusion in textureless regions, as motion is often initialized with no occlusion assumption despite that occlusion may be included in the final objective. To handle such situations, we propose a local layering model where motion and occlusion relationships are inferred jointly. In particular, the uncertainties of occlusion relationships are retained so that motion is inferred by considering all the possibilities of local occlusion relationships. In addition, the local layering model handles articulated objects with self-occlusion. We demonstrate that the local layering model can handle motion and occlusion well for both challenging synthetic and real sequences.
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局部分层用于关节运动估计和遮挡检测
大多数运动估计算法(光流,分层模型)不能处理无纹理区域中的大量遮挡,因为运动通常在初始化时没有遮挡假设,尽管遮挡可能包含在最终目标中。为了处理这种情况,我们提出了一种局部分层模型,其中运动和遮挡关系是联合推断的。特别是,保留了遮挡关系的不确定性,从而通过考虑局部遮挡关系的所有可能性来推断运动。此外,局部分层模型处理具有自遮挡的铰接对象。我们证明了局部分层模型可以很好地处理具有挑战性的合成序列和真实序列的运动和遮挡。
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