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A Graph Theoretic Approach for Object Shape Representation in Compositional Hierarchies Using a Hybrid Generative-Descriptive Model

机译:一种使用混合生成描述模型的组成层级对象形状表示的图形理论方法

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A graph theoretic approach is proposed for object shape representation in a hierarchical compositional architecture called Compositional Hierarchy of Parts (CHOP). In the proposed approach, vocabulary learning is performed using a hybrid generative-descriptive model. First, statistical relationships between parts are learned using a Minimum Conditional Entropy Clustering algorithm. Then, selection of descriptive parts is defined as a frequent subgraph discovery problem, and solved using a Minimum Description Length (MDL) principle. Finally, part compositions are constructed using learned statistical relationships between parts and their description lengths. Shape representation and computational complexity properties of the proposed approach and algorithms are examined using six benchmark two-dimensional shape image datasets. Experiments show that CHOP can employ part shareability and indexing mechanisms for fast inference of part compositions using learned shape vocabularies. Additionally, CHOP provides better shape retrieval performance than the state-of-the-art shape retrieval methods.
机译:提出了一种称为组成结构中的物质形状表示的图形理论方法,称为组成部分的分层组成架构(CHOP)。在所提出的方法中,使用混合生成描述模型进行词汇学习。首先,使用最小条件熵聚类算法学习部件之间的统计关系。然后,选择描述性部件的选择被定义为频繁的子图发现问题,并使用最小描述长度(MDL)原理来解决。最后,使用部件与其描述长度之间的学习统计关系构建部分组成。使用六个基准二维形状图像数据集检查所提出的方法和算法的形状表示和计算复杂性特性。实验表明,Chec可以采用部分令人满意和分度机制,用于使用学习的形状词汇表快速推动部分组成。此外,Check提供比最先进的形状检索方法更好的形状检索性能。

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