采用多坐标表示的单摄像机视图非刚性物体的三维恢复

Shota Ishikawa, J. Tan, Hyoungseop Kim, S. Ishikawa
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引用次数: 1

摘要

本文提出了一种新的非刚性物体(如运动中的人体)的单镜头三维恢复技术。为了实现三维恢复,该技术将变形物体分割成各自的部分,这些部分都被视为刚性物体。为了提高分割精度,采用了多阶段学习和局部子空间亲和的分割方法。每个部件通过因式分解方法恢复其三维形状。显然,包含扭转或拉伸运动的变形部分无法通过该方法恢复三维形状。本文的思想是通过对由各部分坐标描述的部分上的点的三维位置进行平均来恢复这些变形部分。利用合成非刚体和真实人体运动数据进行的实验表明了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
3-D Recovery of a Non-rigid Object from a Single Camera View Employing Multiple Coordinates Representation
This paper proposes a novel technique for 3-D recovery of a non-rigid object, such as a human in motion, from a single camera view. To achieve the 3-D recovery, the proposed technique performs segmentation of an object under deformation into respective parts which are all regarded as rigid objects. For high accuracy segmentation, multi-stage learning and local subspace affinity are employed for the segmentation. Each part recovers its 3-D shape by applying the factorization method to it. Obviously the deformed portion containing twist or stretch motion cannot recover the 3-D shape by this procedure. The idea of the present paper is to recover such deformed portion by averaging the 3-D locations of a point on the portion described by the coordinates of respective parts. The experiments employing a synthetic non-rigid object and real human motion data show effectiveness of the proposed technique.
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