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Metric Regression Forests for Correspondence Estimation

机译:对应估计的度量回归林

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摘要

We present a new method for inferring dense data to model correspondences, focusing on the application of human pose estimation from depth images. Recent work proposed the use of regression forests to quickly predict correspondences between depth pixels and points on a 3D human mesh model. That work, however, used a proxy forest training objective based on the classification of depth pixels to body parts. In contrast, we introduce Metric Space Information Gain (MSIG), a new decision forest training objective designed to directly minimize the entropy of distributions in a metric space. When applied to a model surface, viewed as a metric space defined by geodesic distances, MSIG aims to minimize image-to-model correspondence uncertainty. A na < ve implementation of MSIG would scale quadratically with the number of training examples. As this is intractable for large datasets, we propose a method to compute MSIG in linear time. Our method is a principled generalization of the proxy classification objective, and does not require an extrinsic isometric embedding of the model surface in Euclidean space. Our experiments demonstrate that this leads to correspondences that are considerably more accurate than state of the art, using far fewer training images.
机译:我们提出了一种用于推断密集数据以建模对应关系的新方法,重点是根据深度图像对人体姿势进行估算。最近的工作提出了使用回归森林来快速预测3D人体网格模型上的深度像素与点之间的对应关系。但是,这项工作使用了基于对身体部位的深度像素分类的代理森林训练目标。相反,我们引入了度量空间信息增益(MSIG),这是一种新的决策林训练目标,旨在直接最小化度量空间中的分布熵。将MSIG应用于模型表面(视为由测地距离定义的度量空间)后,其目标是使图像到模型的对应不确定性最小化。 MSIG的一个简单的实现将根据训练示例的数量进行二次缩放。由于这对于大型数据集来说很难处理,因此我们提出了一种在线性时间内计算MSIG的方法。我们的方法是代理分类目标的原则概括,不需要在欧几里得空间中模型表面的外在等距嵌入。我们的实验表明,使用更少的训练图像,可以产生比现有技术准确得多的通信。

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