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Shape from Selfies: Human Body Shape Estimation Using CCA Regression Forests

机译:自拍照的形状:使用CCA回归森林的人体形状估计

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In this work, we revise the problem of human body shape estimation from monocular imagery. Starting from a statistical human shape model that describes a body shape with shape parameters, we describe a novel approach to automatically estimate these parameters from a single input shape silhouette using semi-supervised learning. By utilizing silhouette features that encode local and global properties robust to noise, pose and view changes, and projecting them to lower dimensional spaces obtained through multi-view learning with canonical correlation analysis, we show how regression forests can be used to compute an accurate mapping from the silhouette to the shape parameter space. This results in a very fast, robust and automatic system under mild self-occlusion assumptions. We extensively evaluate our method on thousands of synthetic and real data and compare it to the state-of-art approaches that operate under more restrictive assumptions.
机译:在这项工作中,我们修改了单眼图像对人体形状的估计问题。从描述具有形状参数的人体形状的统计人类形状模型开始,我们描述了一种新颖的方法,可以使用半监督学习从单个输入形状轮廓自动估算这些参数。通过利用剪影特征编码对噪声,姿势和视图变化具有鲁棒性的局部和全局属性,并将其投影到通过多视图学习和规范相关分析获得的低维空间,我们展示了如何使用回归森林来计算准确的映射从轮廓到形状参数空间。在温和的自闭塞假设下,这将导致一个非常快速,强大且自动的系统。我们对成千上万的综合和真实数据进行了广泛的评估,并将其与在更严格的假设下运行的最新方法进行了比较。

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