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CLUSTERING AND AGGREGATION OF RELATIONAL DATA WITH APPLICATIONS TO IMAGE DATABASE CATEGORIZATION

机译:将应用程序与图像数据库分类的群集和聚合到图像数据库分类

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In this paper, we introduce a new algorithm for Clustering and Aggregating Relational Data (CARD). We assume that data is available in a relational form, where we only have information about the degrees to which pairs of objects in the data set are related. Moreover, we assume that the relational information is represented by multiple dissimilarity matrices. These matrices could have been generated using different sensors, features, or mappings. CARD is designed to aggregate pairwise distances from multiple relational matrices, partition the data into clusters, and learn a relevance weight for each matrix in each cluster simultaneously. The cluster dependent relevance weights offer two advantages. First, they guide the clustering process to partition the data set into more meaningful clusters. Second, they can be used in subsequent steps of a learning system to improve its learning behavior. The performance of the proposed algorithm is illustrated by using it to categorize a collection of 4000 color images. We represent the pairwise image dissimilarities by four different relational matrices that encode the color, texture, and structure information.
机译:在本文中,我们介绍了一种用于聚类和聚合关系数据(卡)的新算法。我们假设数据以关系形式提供,其中我们只有有关数据集中对象对的度数的学位的信息。此外,我们假设关系信息由多个异构矩阵表示。可以使用不同的传感器,特征或映射来生成这些矩阵。卡旨在从多个关系矩阵聚合成对距离,将数据分区为簇,并同时为每个群集中的每个矩阵的相关性权重。群集相关性重量提供了两个优点。首先,它们指导群集过程将数据分区设置为更有意义的群集。其次,它们可以在学习系统的后续步骤中使用,以改善其学习行为。通过使用它来分类为4000个彩色图像的集合来说明所提出的算法的性能。我们代表了对编码颜色,纹理和结构信息的四个不同关系矩阵的成对图像异化。

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