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Supervised Learning Based Stereo Matching Using Neural Tree

机译:基于神经树的基于监督学习的立体匹配

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In this paper, a supervised learning based approach is presented to classify tentative matches as inliers or outliers obtained from a pair of stereo images. A balanced neural tree (BNT) is adopted to perform the classification task. A set of tentative matches is obtained using speedup robust feature (SURF) matching and then feature vectors are extracted for all matches to classify them either as inliers or outliers. The BNT is trained using a set of tentative matches having ground-truth information, and then it is used for classifying other sets of tentative matches obtained from the different pairs of images. Several experiments have been performed to evaluate the performance of the proposed method.
机译:在本文中,提出了一种基于监督学习的方法,将试探性匹配分类为从一对立体图像中获得的离群值或离群值。采用平衡神经树(BNT)来执行分类任务。使用加速鲁棒特征(SURF)匹配获得一组试探性匹配,然后为所有匹配提取特征向量,以将其分类为离群值或离群值。使用具有地面真实性信息的一组试探性匹配训练BNT,然后将其用于对从不同图像对获得的其他试探性匹配集合进行分类。已经进行了一些实验,以评估所提出方法的性能。

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