首页> 外文会议>Asian Conference on Computer Vision(ACCV 2007) pt.1; 20071118-22; Tokyo(JP) >Learning Generative Models for Monocular Body Pose Estimation
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Learning Generative Models for Monocular Body Pose Estimation

机译:学习生成模型用于单眼身体姿势估计

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We consider the problem of monocular 3d body pose tracking from video sequences. This task is inherently ambiguous. We propose to learn a generative model of the relationship of body pose and image appearance using a sparse kernel regressor. Within a particle filtering framework, the potentially multimodal posterior probability distributions can then be inferred. The 2d bounding box location of the person in the image is estimated along with its body pose. Body poses are modelled on a low-dimensional manifold, obtained by LLE dimensionality reduction. In addition to the appearance model, we learn a prior model of likely body poses and a nonlinear dynamical model, making both pose and bounding box estimation more robust. The approach is evaluated on a number of challenging video sequences, showing the ability of the approach to deal with low-resolution images and noise.
机译:我们考虑从视频序列跟踪单眼3d人体姿势的问题。这项任务本质上是模棱两可的。我们建议使用稀疏核回归来学习身体姿势与图像外观之间关系的生成模型。在粒子过滤框架内,然后可以推断出潜在的多峰后验概率分布。估计人在图像中的2d边界框位置及其身体姿势。身体姿势在通过LLE维数减少获得的低维流形上建模。除了外观模型之外,我们还学习了可能的人体姿势的先验模型和非线性动力学模型,从而使姿势和边界框估计都更加可靠。在许多具有挑战性的视频序列上对该方法进行了评估,显示了该方法处理低分辨率图像和噪声的能力。

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