Self-Occlusions and Disocclusions in Causal Video Object Segmentation

Yanchao Yang, G. Sundaramoorthi, Stefano Soatto
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引用次数: 26

Abstract

We propose a method to detect disocclusion in video sequences of three-dimensional scenes and to partition the disoccluded regions into objects, defined by coherent deformation corresponding to surfaces in the scene. Our method infers deformation fields that are piecewise smooth by construction without the need for an explicit regularizer and the associated choice of weight. It then partitions the disoccluded region and groups its components with objects by leveraging on the complementarity of motion and appearance cues: Where appearance changes within an object, motion can usually be reliably inferred and used for grouping. Where appearance is close to constant, it can be used for grouping directly. We integrate both cues in an energy minimization framework, incorporate prior assumptions explicitly into the energy, and propose a numerical scheme.
因果视频目标分割中的自闭塞与解除闭塞
我们提出了一种检测三维场景视频序列中咬合的方法,并将咬合的区域划分为物体,由对应于场景中表面的相干变形来定义。我们的方法通过构造推断出分段平滑的变形场,而不需要明确的正则化器和相关的权重选择。然后,它通过利用运动和外观线索的互补性来划分未遮挡的区域,并将其组件与对象分组:当对象内的外观发生变化时,运动通常可以可靠地推断并用于分组。当外观接近常量时,可直接用于分组。我们将这两个线索整合到能量最小化框架中,将先前的假设明确地纳入能量中,并提出了一个数值方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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