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Accurate Dense Stereo Matching Based on Image Segmentation Using an Adaptive Multi-Cost Approach

机译:基于图像分割的自适应多成本方法的精确密集立体匹配

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This paper presents a segmentation-based stereo matching algorithm using an adaptive multi-cost approach, which is exploited for obtaining accuracy disparity maps. The main contribution is to integrate the appealing properties of multi-cost approach into the segmentation-based framework. Firstly, the reference image is segmented by using the mean-shift algorithm. Secondly, the initial disparity of each segment is estimated by an adaptive multi-cost method, which consists of a novel multi-cost function and an adaptive support window cost aggregation strategy. The multi-cost function increases the robustness of the initial raw matching costs calculation and the adaptive window reduces the matching ambiguity effectively. Thirdly, an iterative outlier suppression and disparity plane parameters fitting algorithm is designed to estimate the disparity plane parameters. Lastly, an energy function is formulated in segment domain, and the optimal plane label is approximated by belief propagation. The experimental results with the Middlebury stereo datasets, along with synthesized and real-world stereo images, demonstrate the effectiveness of the proposed approach.
机译:本文提出了一种使用自适应多代价方法的基于分段的立体匹配算法,该算法被用于获得准确的视差图。主要的贡献是将多成本方法的吸引人的特性整合到基于细分的框架中。首先,使用均值漂移算法对参考图像进行分割。其次,通过自适应多成本方法估计每个段的初始视差,该方法由新颖的多成本函数和自适应支持窗口成本聚合策略组成。多成本函数提高了初始原始匹配成本计算的鲁棒性,而自适应窗口有效地降低了匹配歧义。第三,设计了迭代离群值抑制和视差平面参数拟合算法来估计视差平面参数。最后,在段域中制定了一个能量函数,并通过置信传播近似了最佳平面标签。 Middlebury立体数据集的实验结果,以及合成的和真实的立体图像,证明了该方法的有效性。

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