Multi-channel with RBF neural network aggregation based on disparity space for color image stereo matching

Xungao Zhong, Xiafu Peng, Xunyu Zhong, Xueren Dong
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Abstract

Stereo matching is widely using for 3D reconstruction, which aims to obtain corresponding locations between pairs of stereo images. In this paper we present a robust neural aggregation method for matching correspondences in stereoscopic color image. A data structure disparity space image (DSI) was firstly introduced for development of a local-based matching algorithm. To make good use of color information, stereo images were represented by RGB model, and the initial disparity dense map of correspond RGB channels were computed using NCC (normalized cross-correlation) based on DSI matching algorithm. The neural network performed the similarity aggregation of RGB channels, and the aggregated method shown not only a better overall behavior, but also the neural will improve the robustness of area-based matching methods which depend on the proper selection of window shape and size. The experimental analysis makes a comparison with other methods that show neural aggregation with more matching accuracy.
基于视差空间的多通道RBF神经网络聚合彩色图像立体匹配
立体匹配是三维重建中广泛使用的一种方法,其目的是获取对立体图像之间的对应位置。提出了一种基于鲁棒神经聚合的立体彩色图像对应匹配方法。首先引入数据结构视差空间图像(DSI),开发基于局部的匹配算法。为了充分利用色彩信息,采用RGB模型表示立体图像,采用基于DSI匹配算法的NCC(归一化互相关)计算相应RGB通道的初始视差密集图。神经网络对RGB通道进行相似性聚合,聚合后的方法不仅具有更好的整体性能,而且可以提高基于区域的匹配方法的鲁棒性,而基于区域的匹配方法依赖于窗口形状和大小的选择。实验分析与其他方法进行了比较,表明神经聚合具有更高的匹配精度。
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