Robust 3-D depth estimation using genetic algorithm in stereo image pairs

Yong-Suk Kim, Kyu-Phil Han, Eung-Joo Lee, Yeong-Ho Ha
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引用次数: 6

Abstract

In this paper, a genetic algorithm-based optimization technique for stereo matching is proposed. Stereo matching is the essential process for recovering the three-dimensional structure of objects. The geometrical difference of left and right images, called disparity, is constructed as two-dimensional chromosomes with fitness values inversely proportional to their costs. The cost function is composed of the intensity-difference between two images and smoothness of disparity. The crossover and mutation operators in the two-dimensional chromosomes are described. The operations are affected by the disparities of neighbor pixels. The knowledge-augmented operators are shown to result in a rapid convergence and stable result. The genetic algorithm for stereo matching is tested on synthetic and natural images. Experimental results for various images show that the proposed algorithm has good performance even if the image has unfavorable conditions.
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基于遗传算法的立体图像对鲁棒三维深度估计
提出了一种基于遗传算法的立体匹配优化技术。立体匹配是恢复物体三维结构的必要过程。左右图像的几何差异称为视差,它被构造为二维染色体,其适应度值与它们的代价成反比。代价函数由两幅图像之间的强度差和视差平滑度组成。描述了二维染色体的交叉和突变算子。这些操作受到相邻像素差异的影响。知识增强算子的收敛速度快,结果稳定。在合成图像和自然图像上对遗传算法进行了立体匹配测试。对各种图像的实验结果表明,即使图像条件不利,该算法也具有良好的性能。
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