Solving dense stereo matching via quadratic programming

Rui Ma, O. Au, Pengfei Wan, Wenxiu Sun, Lingfeng Xu, Luheng Jia
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Abstract

We study the problem of formulating the discrete dense stereo matching using continuous convex optimization. One of the previous work derived a relaxed convex formulation by establishing the relationship between the disparity vector and a warping matrix. However it suffers from high computational complexity. In this paper, the previous convex formulation is translated into an equivalent quadratic programming (QP). Then redundant variables and constraints are eliminated by exploiting the internal sparse property of the warping matrix. The resulting QP can be efficiently tackled using interior point solvers. Moreover, enhanced smoothness term and effective post-processing procedures are also incorporated to further improve the disparity accuracy. Experimental results show that the proposed method is much faster and better than the previous convex formulation, and provides competitive results against existing convex approaches.
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通过二次规划求解密集立体匹配
研究了离散密集立体匹配的连续凸优化问题。先前的一项工作通过建立视差向量和翘曲矩阵之间的关系推导出一个松弛凸公式。然而,它的计算复杂度很高。本文将先前的凸公式转化为等价二次规划(QP)。然后利用扭曲矩阵的内部稀疏特性消除冗余变量和约束。由此产生的QP可以使用内部点求解器有效地处理。此外,还采用了增强的平滑项和有效的后处理程序,进一步提高了视差精度。实验结果表明,该方法比以前的凸公式更快、更好,并与现有的凸方法具有竞争力。
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