An improved method for 3D shape estimation using active shape model

Van-Thanh Hoang, K. Jo
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引用次数: 1

Abstract

This paper tackles the problem of reconstructing 3D human poses from 2D landmarks, which is still an ill-posed problem. A widely-used approach is active shape model (ASM) which considers an unknown 3D shape as a linear combination of predefined basis shapes. The existing methods often resolve an optimization problem to reckon the weights and viewpoints of basis shapes, but they could fall into a locally-optimal and/or not use in the real-time system. In this paper, we propose an improved method by doing categorize database into subspaces to reduce execution time and make reconstruction accuracy better in four steps: (i) Separating 3D shapes in training database into subspaces based on their features. (ii) Learning predefined basis shapes of each subspace. (iii) Reconstructing 3D human poses from basis shapes of all subspaces. (iv) Picking out the best shape among them as the final result.
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一种基于主动形状模型的三维形状估计改进方法
本文解决了从二维地标重建三维人体姿态的问题,这仍然是一个不适定问题。一种广泛使用的方法是主动形状模型(ASM),它将未知的三维形状视为预定义基形状的线性组合。现有的方法往往解决了基形状的权值和视点的优化问题,但它们可能陷入局部最优,或无法在实时系统中使用。在本文中,我们提出了一种改进的方法,通过将数据库分类为子空间来减少执行时间,提高重建精度,具体分为四个步骤:(i)将训练数据库中的三维形状根据特征划分为子空间。(ii)学习每个子空间的预定义基形状。(iii)从所有子空间的基本形状重构三维人体姿态。(iv)从中选出最佳形状作为最终结果。
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