计算机科学
图形
理论计算机科学
消息传递
蝴蝶图
空图形
电压图
人工智能
算法
折线图
程序设计语言
作者
Pau Riba,Andreas Fischer,Josep Lladós,Alícia Fornés
标识
DOI:10.1109/icpr.2018.8545310
摘要
Graph representations have been widely used in pattern recognition thanks to their powerful representation formalism and rich theoretical background. A number of error-tolerant graph matching algorithms such as graph edit distance have been proposed for computing a distance between two labelled graphs. However, they typically suffer from a high computational complexity, which makes it difficult to apply these matching algorithms in a real scenario. In this paper, we propose an efficient graph distance based on the emerging field of geometric deep learning. Our method employs a message passing neural network to capture the graph structure and learns a metric with a siamese network approach. The performance of the proposed graph distance is validated in two application cases, graph classification and graph retrieval of handwritten words, and shows a promising performance when compared with (approximate) graph edit distance benchmarks.
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