A Factorized Recursive Estimation of Structure and Motion from Image Velocities

Adel H. Fakih, J. Zelek
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引用次数: 2

Abstract

We propose a new approach for the recursive estimation of structure and motion from image velocities. The estimation of structure and motion from image velocities is preferred to the estimation from pixel correspondences when the image displacements are small, since the former approach provides a stronger constraint being based on the instantaneous equation of rigid bodies motion. However the recursive estimation when dealing with image velocities is harder than its counterpart (in the case of pixel correspondences) since the number of points is usually larger and the equations are more involved. For this reason, in contrast to the case of point correspondences, the approaches presented so far are mostly limited to assuming a known 3D motion, or estimating the motion and structure independently. The approach presented in this paper introduces a factorized particle filter for estimating simultaneously the 3D motion and depth. Each particle consists of a 3D motion and a set of probability distributions of the depths of the pixels. The recursive estimation is done in three stages. (1) a resampling and a prediction of new samples; (2) a recursive filtering of the individual depths distributions performed using Extended Kalman Filters; and (3)finally a reweighting of the particles based on the image measurement. Results on simulation data show the efficiency of the approach. Future work will focus on incorporating an estimation of object boundaries to be used in a following regularization step.
基于图像速度的结构和运动的因式递归估计
我们提出了一种从图像速度递归估计结构和运动的新方法。当图像位移较小时,从图像速度估计结构和运动比从像素对应估计更好,因为前一种方法基于刚体运动的瞬时方程提供了更强的约束。然而,处理图像速度时的递归估计比它的对应(在像素对应的情况下)更难,因为点的数量通常更大,方程更复杂。因此,与点对应的情况相反,迄今为止提出的方法大多局限于假设已知的3D运动,或独立估计运动和结构。本文提出了一种同时估计三维运动和深度的分解粒子滤波方法。每个粒子由一个3D运动和一组像素深度的概率分布组成。递归估计分三个阶段完成。(1)对新样本进行重采样和预测;(2)使用扩展卡尔曼滤波器对单个深度分布进行递归滤波;(3)最后基于图像测量对粒子进行加权。仿真结果表明了该方法的有效性。未来的工作将集中在纳入目标边界的估计,以用于后续的正则化步骤。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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