Human pose tracking in low-dimensional subspace using manifold learning by charting

Sanjay Saini, D. R. A. Rambli, S. Sulaiman, M. N. Zakaria
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引用次数: 5

Abstract

Tracking full articulated human body motion is a very challenging task due to the high dimensionality of human skeleton model, self-occlusion and large variety of body poses. In this work, we explore a novel Low-dimensional Manifold Learning (LDML) approach to overcome high dimensional search space of human model. Low-dimensional demonstration not only delivers a compact tractable search space, but it is efficient to capture general human pose variations. The key contribution of this work is an algorithm of Quantum-behaved Particle Swarm Optimization (QPSO) for pose optimization in latent space of human motion. Firstly, we learn the human motion model in low-dimensional latent space using nonlinear dimension reduction technique charting based on hierarchical strategy. Increased dependence provision is carried out using hierarchy strategic measures in charting, which improves accuracy in higher flexibility and adaptation. Then we applied QPSO algorithm to estimate the human poses in low-dimensional latent space. Preliminary experimental tracking results show that our approach is able to give good accuracy as compared to conventional state-of-the-arts methods.
基于流形学习的低维子空间人体姿态跟踪
由于人体骨骼模型的高维性、自遮挡和身体姿态的多样性,跟踪全关节人体运动是一项非常具有挑战性的任务。在这项工作中,我们探索了一种新的低维流形学习(LDML)方法来克服人体模型的高维搜索空间。低维演示不仅提供了一个紧凑的易于处理的搜索空间,而且可以有效地捕获一般的人体姿势变化。本工作的关键贡献是一种用于人体运动潜在空间位姿优化的量子粒子群优化算法。首先,采用基于层次策略的非线性降维技术对低维潜在空间中的人体运动模型进行学习。在制图中使用层次策略措施增加依赖性,提高了准确性,提高了灵活性和适应性。然后应用QPSO算法在低维潜在空间中估计人体姿态。初步的实验跟踪结果表明,与传统的最先进的方法相比,我们的方法能够提供良好的精度。
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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