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Multifeature Analysis and Semantic Context Learning for Image Classification

机译:图像分类的多特征分析和语义上下文学习

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This article introduces an image classification approach in which the semantic context of images and multiple low-level visual features are jointly exploited. The context consists of a set of semantic terms defining the classes to be associated to unclassified images. Initially, a multiobjective optimization technique is used to define a multifeature fusion model for each semantic class. Then, a Bayesian learning procedure is applied to derive a context model representing relationships among semantic classes. Finally, this context model is used to infer object classes within images. Selected results from a comprehensive experimental evaluation are reported to show the effectiveness of the proposed approaches.
机译:本文介绍一种图像分类方法,其中图像的语义上下文和多个低级视觉特征被联合利用。上下文由一组语义术语组成,这些语义术语定义了要与未分类图像关联的类。最初,多目标优化技术用于为每个语义类定义一个多特征融合模型。然后,应用贝叶斯学习过程来导出表示语义类之间的关系的上下文模型。最后,此上下文模型用于推断图像中的对象类。报告了从综合实验评估中选择的结果,以证明所提出方法的有效性。

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