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A Bayesian approach to simultaneously recover camera pose and non-rigid shape from monocular images

机译:一种从单眼图像中同时恢复相机姿态和非刚性形状的贝叶斯方法

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摘要

In this paper we bring the tools of the Simultaneous Localization and Map Building (SLAM) problem from a rigid to a deformable domain and use them to simultaneously recover the 3D shape of non-rigid surfaces and the sequence of poses of a moving camera. Under the assumption that the surface shape may be represented as a weighted sum of deformation modes, we show that the problem of estimating the modal weights along with the camera poses, can be probabilistically formulated as a maximum a posteriori estimate and solved using an iterative least squares optimization. In addition, the probabilistic formulation we propose is very general and allows introducing different constraints without requiring any extra complexity. As a proof of concept, we show that local inextensibility constraints that prevent the surface from stretching can be easily integrated.
机译:在本文中,我们将同时定位和地图构建(SLAM)问题的工具从刚性域引入到可变形域,并使用它们来同时恢复非刚性表面的3D形状和移动相机的姿态序列。在表面形状可以表示为变形模式的加权总和的假设下,我们表明,估计模态权重以及相机姿势的问题可以概率地表示为最大后验估计,并使用迭代最小方格优化。另外,我们提出的概率公式非常笼统,可以引入各种约束,而无需任何额外的复杂性。作为概念的证明,我们表明可以很容易地集成防止表面拉伸的局部不可扩展性约束。

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