形状和非刚体运动的递归估计

D. Metaxes, Demetri Terzopoulos
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引用次数: 17

摘要

本文提出了一种利用基于物理的动态模型递归估计三维物体形状和一般非刚体运动的方法。该模型提供了代表自然零件显著形状特征的全局变形参数和捕捉形状细节的局部变形参数。控制模型的运动方程,加上点对点的约束,使它们对外部施加的力作出响应。作者扩展了这个微分方程系统,形成了一个形状和非刚性运动估计器,一个非线性卡尔曼滤波器,递归地将数据和估计模型状态之间的差异转换为广义力,同时正式考虑了观测中的不确定性。Riccati更新过程维护一个协方差矩阵,该矩阵根据系统动力学以及当前和先前的观测值来调整力。估计器应用转换后的力来调整平移、旋转和变形自由度,使模型尽可能地与噪声数据一致地发展。作者从真实的和合成的噪声破坏的三维数据中给出了铰接柔性物体的模型拟合和运动跟踪实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Recursive estimation of shape and nonrigid motion
The authors paper presents an approach for recursively estimating 3D object shape and general nonrigid motion, which makes use of physically based dynamic models. The models provide global deformation parameters which represent the salient shape features of natural parts, and local deformation parameters which capture shape details. The equations of motion governing the models, augmented by point-to-point constraints, make them responsive to externally applied forces. The authors extend this system of differential equations to formulate a shape and nonrigid motion estimator, a nonlinear Kalman filter, that recursively transforms the discrepancy between the data and the estimated model state into generalized forces while formally accounting for uncertainty in the observations. A Riccati update process maintains a covariance matrix that adjusts the forces in accordance with the system dynamics and the current and prior observations. The estimator applies the transformed forces to adjust the translational, rotational, and deformational degrees of freedom such that the model evolves as consistently as possible with the noisy data. The authors present model fitting and motion tracking experiments of articulated flexible objects from real and synthetic noise-corrupted 3D data.<>
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