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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Nonrigid Structure-from-Motion: Estimating Shape and Motion with Hierarchical Priors
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Nonrigid Structure-from-Motion: Estimating Shape and Motion with Hierarchical Priors

机译:非刚性运动结构:使用分层先验估计形状和运动

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This paper describes methods for recovering time-varying shape and motion of non-rigid 3D objects from uncalibrated 2D point tracks. For example, given a video recording of a talking person, we would like to estimate the 3D shape of the face at each instant, and learn a model of facial deformation. Time-varying shape is modeled as a rigid transformation combined with a non-rigid deformation. Reconstruction is ill-posed if arbitrary deformations are allowed, and thus additional assumptions about deformations are required. We first suggest restricting shapes to lie within a low-dimensional subspace, and describe estimation algorithms. However, this restriction alone is insufficient to constrain reconstruction. To address these problems, we propose a reconstruction method using a Probabilistic Principal Components Analysis (PPCA) shape model, and an estimation algorithm that simultaneously estimates 3D shape and motion for each instant, learns the PPCA model parameters, and robustly fills-in missing data points. We then extend the model to model temporal dynamics in object shape, allowing the algorithm to robustly handle severe cases of missing data.
机译:本文介绍了从未经校准的2D点轨迹恢复非刚性3D对象的时变形状和运动的方法。例如,给定一个正在说话的人的视频记录,我们希望在每个瞬间估计面部的3D形状,并学习面部变形的模型。随时间变化的形状被建模为刚性变形与非刚性变形的组合。如果允许任意变形,则重建是不适当的,因此需要有关变形的其他假设。我们首先建议将形状限制在一个低维子空间内,并描述估计算法。但是,仅此限制不足以约束重建。为了解决这些问题,我们提出了一种使用概率主成分分析(PPCA)形状模型的重构方法,以及一种估计算法,该算法可以同时估计每个瞬间的3D形状和运动,学习PPCA模型参数,并稳健地填充缺失的数据点。然后,我们扩展模型以对对象形状中的时间动态建模,从而使算法能够稳健地处理丢失数据的严重情况。

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