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首页> 外文期刊>IEEE Transactions on Pattern Analysis and Machine Intelligence >Recursive estimation of 3D motion and surface structure from local affine flow parameters
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Recursive estimation of 3D motion and surface structure from local affine flow parameters

机译:从局部仿射流参数递归估计3D运动和表面结构

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摘要

A recursive structure from motion algorithm based on optical flow measurements taken from an image sequence is described. It provides estimates of surface normal in addition to 3D motion and depth. The measurements are affine motion parameters which approximate the local flow fields associated with near-planar surface patches in the scene. These are integrated over time to give estimates of the 3D parameters using an extended Kalman filter. This also estimates the camera focal length and, so, the 3D estimates are metric. The use of parametric measurements means that the algorithm is computationally less demanding than previous optical flow approaches and the recursive filter builds in a degree of noise robustness. Results of experiments on synthetic and real image sequences demonstrate that the algorithm performs well.
机译:描述了基于从图像序列获取的光流测量结果的运动算法的递归结构。除了提供3D运动和深度之外,它还提供了表面法线的估计。该测量是仿射运动参数,其近似于与场景中的近平面表面斑块相关联的局部流场。随着时间的推移,它们会被集成在一起,以便使用扩展的卡尔曼滤波器来估算3D参数。这也会估计相机焦距,因此3D估计是公制的。参数测量的使用意味着该算法比以前的光流方法在计算上的要求更低,并且递归滤波器建立了一定程度的噪声鲁棒性。在合成和真实图像序列上的实验结果表明,该算法性能良好。

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