首页> 外文会议>IAPR Workshop on Machine Vision Applications, Nov 28-30, 2000, The University of Tokyo, Japan >Dense Disparity Map Estimation Respecting Image Discontinuities: A PDE and Scale-Space Based Approach
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Dense Disparity Map Estimation Respecting Image Discontinuities: A PDE and Scale-Space Based Approach

机译:图像不连续性的密集视差图估计:基于PDE和比例空间的方法

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We present an energy based approach to estimate a dense disparity map from a set of two weakly calibrated stereoscopic images while preserving its discontinuities resulting from image boundaries. We first derive a simplified expression for the disparity that allows us to estimate it from a stereo pair of images using an energy minimization approach. We assume that the epipolar geometry is known, and we include this information in the energy model. Discontinuities are preserved by means of a regulariza-tion term based on the Nagel-Enkelmann operator. We investigate the associated Euler-Lagrange equation of the energy functional, and we approach the solution of the underlying partial differential equation (PDE) using a gradient descent method. The resulting parabolic problem has a unique solution. In order to reduce the risk to be trapped within some irrelevant local minima during the iterations, we use a focusing strategy based on a linear scale-space. Experimental results on both synthetic and real images are presented to illustrate the capabilities of this PDE and scale-space based method.
机译:我们提出一种基于能量的方法,从一组两个弱校准的立体图像中估计密集的视差图,同时保留其由图像边界导致的不连续性。我们首先导出视差的简化表达式,该表达式使我们能够使用能量最小化方法从一对立体声图像中对其进行估算。我们假设对极几何是已知的,并且我们将此信息包括在能量模型中。通过基于Nagel-Enkelmann运算符的正则化项来保留不连续性。我们研究了能量函数的相关Euler-Lagrange方程,并使用梯度下降法来求解基础偏微分方程(PDE)的解。由此产生的抛物线问题具有独特的解决方案。为了减少在迭代过程中陷入一些不相关的局部最小值的风险,我们使用了基于线性尺度空间的聚焦策略。给出了合成图像和真实图像上的实验结果,以说明此PDE和基于比例空间的方法的功能。

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