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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Generative tracking of 3D human motion by hierarchical annealed genetic algorithm
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Generative tracking of 3D human motion by hierarchical annealed genetic algorithm

机译:通过分层退火遗传算法生成的3D人体运动的生成跟踪

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摘要

We present a generative method for reconstructing 3D human motion from single images and monocular image sequences. Inadequate observation information in monocular images and the complicated nature of human motion make the 3D human pose reconstruction challenging. In order to mine more prior knowledge about human motion, we extract the motion subspace by performing conventional principle component analysis (PCA) on small sample set of motion capture data. In doing so, we also reduce the problem dimensionality so that the generative pose recovering can be performed more effectively. And, the extracted subspace is naturally hierarchical. This allows us to explore the solution space efficiently. We design an annealed genetic algorithm (AGA) and hierarchical annealed genetic algorithm (HAGA) for human motion analysis that searches the optimal solutions by utilizing the hierarchical characteristics of state space. In tracking scenario, we embed the evolutionary mechanism of AGA into the framework of evolution strategy for adapting the local characteristics of fitness function. We adopt the robust shape contexts descriptor to construct the matching function. Our methods are demonstrated in different motion types and different image sequences. Results of human motion estimation show that our novel generative method can achieve viewpoint invariant 3D pose reconstruction. (c) 2008 Elsevier Ltd. All rights reserved.
机译:我们提出了一种从单一图像和单眼图像序列重建3D人类运动的生成方法。单眼图像中的观察信息不足以及人类运动的复杂性使3D人体姿势重建具有挑战性。为了挖掘有关人体运动的更多先验知识,我们通过对运动捕获数据的小样本集执行常规的主成分分析(PCA)来提取运动子空间。这样,我们还可以减少问题的维度,从而可以更有效地执行生成姿势的恢复。并且,提取的子空间自然是分层的。这使我们能够有效地探索解决方案空间。我们设计了一种用于人类运动分析的退火遗传算法(AGA)和分层退火遗传算法(HAGA),以利用状态空间的分层特征来搜索最优解。在跟踪场景中,我们将AGA的进化机制嵌入到进化策略框架中,以适应适应度函数的局部特征。我们采用鲁棒的形状上下文描述符来构造匹配函数。我们的方法在不同的运动类型和不同的图像序列中得到了证明。人体运动估计的结果表明,我们的新型生成方法可以实现视点不变的3D姿态重构。 (c)2008 Elsevier Ltd.保留所有权利。

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