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A new learning strategy for stereo matching derived from a fuzzy clustering method

机译:一种基于模糊聚类的立体匹配学习新策略

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This paper presents an approach to the local stereo correspondence problem. The primitives or features used are groups of collinear connected edge points called segments. Each segment has several associated attributes or properties. We have verified that the differences of the attributes for the true matches cluster in a cloud around a center. Then for each current pair of primitives we compute a distance between the difference of its attributes and the cluster center. The correspondence is established in the basis of the minimum distance criterion (Similarity constraint). We have designed an image understanding system to learn the best representative cluster center. For such purpose a new learning method is derived from the Fuzzy c-Means (FcM) algorithm where the dispersion of he true samples in the cluster is taken into account through the Mahalanobis distance. This is the main contribution of this paper. A better performance of he proposed local stereo-matching learning method is illustrated with comparative analysis between classical local method without learning.
机译:本文提出了一种解决本地立体声对应问题的方法。使用的图元或特征是称为线段的共线连接的边缘点的组。每个段都有几个关联的属性或属性。我们已经验证了真正匹配属性的差异聚集在中心周围的云中。然后,对于每个当前的图元对,我们计算其属性差异与聚类中心之间的距离。在最小距离标准(相似性约束)的基础上建立对应关系。我们设计了图像理解系统,以学习最佳的代表性群集中心。为此,从模糊c均值(FcM)算法中派生了一种新的学习方法,其中通过马氏距离考虑了群集中真实样本的分散。这是本文的主要贡献。通过对经典局部方法与不学习方法的比较分析,说明了他提出的局部立体匹配学习方法的更好性能。

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