Contour Motion Estimation Using Relaxation Matching with a Smoothness Constraint on the Velocity Field

Strickland R.N., Mao Z.H.
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引用次数: 15

Abstract

We estimate optical flow from a sequence of 2-D images by computing the velocity field along moving contours in the scene. This new approach is different from others in that it combines displacements computed by feature matching with a smoothness constraint on the second derivative of velocity. First, we use our previously reported relaxation matching technique to find correspondences between contour features in adjacent image frames. Displacements for discrete points along the contours are interpolated from the magnitudes and directions of neighboring matched points. The displacements so-computed are used as initial estimates for the velocity (magnitude and direction) along contours. The final estimated velocities are required to yield components which are close in a least-squares sense to these initial velocity magnitudes, when projected along the same directions. We also constrain the second derivative of velocity to be a minimum when integratedalong the contour, leading to a unique solution for the motion of a straight line undergoing an affine transformation. The second-derivative constraint gives better results than the first-derivative constraint in this case. Our method also gives better results for most second-order flows. In cases where it does not, a combination of first- and second-derivative constraints can be used. Computation of velocities at discrete points along the contour is achieved by solving linear equations via the conjugate gradient algorithm. The image flow technique is applied to examples of rigid and nonrigid motion.

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基于速度场平滑约束的松弛匹配轮廓运动估计
我们通过计算场景中沿运动轮廓线的速度场来估计一系列二维图像的光流。这种新方法与其他方法的不同之处在于,它将特征匹配计算的位移与速度二阶导数的平滑约束相结合。首先,我们使用之前报道的松弛匹配技术来查找相邻图像帧中轮廓特征之间的对应关系。沿等高线离散点的位移由相邻匹配点的大小和方向插值得到。这样计算的位移用作沿等高线的速度(大小和方向)的初始估计。当沿相同方向投影时,最终估计速度需要产生在最小二乘意义上接近这些初始速度大小的分量。当沿轮廓线积分时,我们还约束速度的二阶导数为最小值,从而得到经过仿射变换的直线运动的唯一解。在这种情况下,二阶导数约束比一阶导数约束给出更好的结果。我们的方法对大多数二阶流也给出了较好的结果。在不满足条件的情况下,可以使用一阶导数和二阶导数约束的组合。沿轮廓线离散点的速度计算是通过共轭梯度算法求解线性方程实现的。将图像流技术应用于刚体和非刚体运动的实例。
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