Discovering latent spatial structured patterns using graph models for scene classification

Yuhua Fan
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Abstract

Despite progress in scene recognition tasks such as image classification and attribute detection, computers still be difficult to understand the scenes as a whole. Existing methods often ignore global spatial constructed pattern among different local semantic objects. This paper propose a method for discovering the Latent spatial structured patterns to describe the visual semantic characters of images to improve the performance of scene recognition tasks. Unlike the existing approaches that mainly rely on the discriminant visual feature cues, we learn the latent spatial structured pattern to model the interaction relationships by using the graph models, which consider semantics and their localization information. We first train the pLSA models to obtain the latent semantic topics. Then we construct the graph models to discover the latent spatial structure patterns with combing the character vector and localization cues. Meanwhile, we treat the edge in model as link-affinity matrix to describe the interaction relationships between semantics. The extensive experiments on public datasets have demonstrated that the suggested method can significantly boost the performance of scene classification tasks.
利用图模型发现潜在的空间结构模式用于场景分类
尽管在图像分类和属性检测等场景识别任务方面取得了进展,但计算机仍然难以从整体上理解场景。现有的方法往往忽略了不同局部语义对象之间的全局空间构造模式。本文提出了一种发现潜在空间结构模式的方法来描述图像的视觉语义特征,以提高场景识别任务的性能。与现有的主要依赖于判别性视觉特征线索的方法不同,我们利用考虑语义及其定位信息的图模型,学习潜在的空间结构模式来建模交互关系。我们首先训练pLSA模型来获得潜在的语义主题。然后结合特征向量和定位线索构建图形模型,发现潜在的空间结构模式。同时,我们将模型中的边缘作为链接关联矩阵来描述语义之间的交互关系。在公共数据集上的大量实验表明,该方法可以显著提高场景分类任务的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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