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Unsupervised random forest for affinity estimation

机译:无常用的随机森林进行亲和估计

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This paper presents an unsupervised clustering random-forest-based metric for affinity estimation in large and high-dimensional data. The criterion used for node splitting during forest construction can handle rank-deficiency when measuring cluster compactness. The binary forest-based metric is extended to continuous metrics by exploiting both the common traversal path and the smallest shared parent node.The proposed forest-based metric efficiently estimates affinity by passing down data pairs in the forest using a limited number of decision trees. A pseudo-leaf-splitting (PLS) algorithm is introduced to account for spatial relationships, which regularizes affinity measures and overcomes inconsistent leaf assign-ments. The random-forest-based metric with PLS facilitates the establishment of consistent and point-wise correspondences. The proposed method has been applied to automatic phrase recognition using color and depth videos and point-wise correspondence. Extensive experiments demonstrate the effectiveness of the proposed method in affinity estimation in a comparison with the state-of-the-art.
机译:本文介绍了大型和高维数据的亲和估计的无监督聚类随机林的度量。用于林业建设期间的节点分裂的标准可以在测量集群紧凑性时处理依次缺陷。通过利用普通遍历路径和最小共享父节点来扩展基于二元林的度量。基于森林的度量,通过使用有限数量的决策树在森林中传递数据对有效地估计了亲和力。引入了伪叶分离(PLS)算法以考虑空间关系,该空间关系是正规化的,该空间关系,并克服了不一致的叶子分配。与PLS的随机林的公制有助于建立一致和方面的对应关系。所提出的方法已经应用于使用颜色和深度视频和方向对应的自动短语识别。广泛的实验证明了与最先进的估计所提出的方法的有效性。

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