Object coding on the semantic graph for scene classification

Jingjing Chen, Yahong Han, Xiaochun Cao, Q. Tian
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引用次数: 3

Abstract

In the scene classification, a scene can be considered as a set of object cliques. Objects inside each clique have semantic correlations with each other, while two objects from different cliques are relatively independent. To utilize these correlations for better recognition performance, we propose a new method - Object Coding on the Semantic Graph to address the scene classification problem. We first exploit prior knowledge by making statistics on a large number of labeled images and calculating the dependency degree between objects. Then, a graph is built to model the semantic correlations between objects. This semantic graph captures semantics by treating the objects as vertices and the objects affinities as the weights of edges. By encoding this semantic knowledge into the semantic graph, object coding is conducted to automatically select a set of object cliques that have strongly semantic correlations to represent a specific scene. The experimental results show that the Object Coding on semantic graph can improve the classification accuracy.
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基于语义图的对象编码用于场景分类
在场景分类中,一个场景可以看作是一组对象团。每个团内的对象之间具有语义相关性,而来自不同团内的两个对象则相对独立。为了利用这些相关性获得更好的识别性能,我们提出了一种新的方法-语义图上的对象编码来解决场景分类问题。我们首先利用先验知识,对大量标记图像进行统计,并计算对象之间的依赖程度。然后,构建一个图来建模对象之间的语义相关性。该语义图通过将对象作为顶点,将对象的亲和力作为边的权重来捕获语义。通过将这些语义知识编码到语义图中,进行对象编码,自动选择一组语义相关性强的对象团来表示特定场景。实验结果表明,基于语义图的目标编码可以提高分类精度。
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