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Edge-preserving joint motion-disparity estimation in stereo image sequences

机译:立体图像序列中的保留边缘的联合运动视差估计

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摘要

An energy-based joint motion and disparity estimation algorithm with an anisotropic diffusion operator is proposed to yield correct and dense displacement vectors. We propose two energy models; the joint estimation model and the simultaneous joint estimation model. In the joint estimation model, we compute the initial disparity in the current frame with the joint estimation constraint, using the left and right motions and the disparity in the previous frame; therefore, the model is prevented from being trapped in the local minima. Then, we regularize this disparity by using our proposed energy model. In the simultaneous joint estimation model, we propose an energy functional that consists of fidelity and smoothing terms for the left and right motions and the joint data terms. We estimate the left and right motions simultaneously in order to increase correctness. We use the Euler–Lagrange equation with variational methods and solve the equation with the finite difference method (FDM) to minimize the energy model. Experimental results show that the proposed algorithm provides accurate motion-disparity maps that reflect the constraints of motion and disparity, and preserve the discontinuities of the object boundaries well.
机译:提出了一种基于能量的带有各向异性扩散算子的关节运动和视差估计算法,以产生正确且密集的位移矢量。我们提出两种能量模型;联合估计模型和同时联合估计模型。在联合估计模型中,我们使用左右运动和前一帧中的视差,通过联合估计约束来计算当前帧中的初始视差;因此,可以防止模型陷入局部最小值。然后,我们通过使用我们提出的能源模型来规范这种差距。在同时关节估计模型中,我们提出了一个能量函数,该函数由左右运动的保真度和平滑项以及关节数据项组成。我们同时估计左右运动以增加正确性。我们将欧拉-拉格朗日方程与变分方法结合使用,并通过有限差分法(FDM)求解方程,以最小化能量模型。实验结果表明,该算法提供了准确的运动视差图,可以反映运动和视差的约束,并很好地保留了对象边界的不连续性。

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