基于空间语义分布的图像分类视觉词袋模型

Yong-Qin Li, Bu-Dong Xu, Hai-Di Sheng
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引用次数: 0

摘要

为了满足图像检索应用中对图像分类的要求,本文提出了一种基于视觉词袋模型的图像表示方法来描述关联特征的空间语义分布。首先,将提取的SIFT特征映射为包含一定语义信息的视觉词;根据空间金字塔层次,对特定区域进行局部特征划分,从不同角度分析关联特征在不同区域的空间分布。这样就建立了具有局部特征的语义短语。其次,利用空间语义短语的稀疏编码构造空间语义词典,并用稀疏统计直方图向量的形式对图像进行描述;最后,使用嵌入改进视觉词袋模型的分类器对图像向量进行分类。实验结果表明,基于空间语义分布的视觉词袋模型显著提高了图像分类的准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Bag-of-visual-words Model for Image Classification Based on Spatial Semantic Distribution
To satisfy the requirement of image classification in the application of image retrieval, a novel method of image representation based on bag-of-visual-words model is proposed in the paper to describe the spatial semantic distribution of associated features. Firstly, the extracted SIFT features are mapped into visual words including certain semantic information. According to spatial pyramid hierarchy, the specific region is divided with local features, and the spatial distribution of associated features is analyzed from different aspects and in various regions. In this way, the semantic phrases are established with local features. Next, the spatial semantic lexicon is constructed with sparse encoding of spatial semantic phrases, and the images are described with the form of sparse statistical histogram vectors. Finally, the vectors of images are classified with the classifier embedded with the improved bag-of-visual-words model. The experimental results show that the accuracy of image classification is significantly enhanced which is benefited from the Bag-of-visual-words model with spatial semantic distribution.
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