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首页> 外文期刊>Journal of Software Engineering and Applications >3D Human Pose Estimation from a Monocular Image Using Model Fitting in Eigenspaces
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3D Human Pose Estimation from a Monocular Image Using Model Fitting in Eigenspaces

机译:使用特征空间中的模型拟合从单眼图像进行3D人体姿势估计

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Generally, there are two approaches for solving the problem of human pose estimation from monocular images. One is the learning-based approach, and the other is the model-based approach. The former method can estimate the poses rapidly but has the disadvantage of low estimation accuracy. While the latter method is able to accurately estimate the poses, its computational cost is high. In this paper, we propose a method to integrate the learning-based and model-based approaches to improve the estimation precision. In the learning-based approach, we use regression analysis to model the mapping from visual observations to human poses. In the model-based approach, a particle filter is employed on the results of regression analysis. To solve the curse of the dimensionality problem, the eigenspace of each motion is learned using Principal Component Analysis (PCA). Finally, the proposed method was estimated using the CMU Graphics Lab Motion Capture Database. The RMS error of human joint angles was 6.2 degrees using our method, an improvement of up to 0.9 degrees compared to the method without eigenspaces.
机译:通常,有两种方法可以解决单眼图像中的人体姿势估计问题。一种是基于学习的方法,另一种是基于模型的方法。前一种方法可以快速估计姿势,但缺点是估计精度低。尽管后一种方法能够准确估计姿势,但其计算成本很高。在本文中,我们提出了一种将基于学习的方法与基于模型的方法相集成的方法,以提高估计精度。在基于学习的方法中,我们使用回归分析来建模从视觉观察到人体姿势的映射。在基于模型的方法中,对回归分析的结果使用了粒子过滤器。为了解决维数问题的诅咒,使用主成分分析(PCA)学习了每个运动的本征空间。最后,使用CMU Graphics Lab运动捕捉数据库对提出的方法进行了估计。使用我们的方法,人体关节角度的RMS误差为6.2度,与没有特征空间的方法相比,最高可提高0.9度。

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