Two Strategies for Bag-of-Visual Words Feature Extraction

Chih-Fong Tsai
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引用次数: 3

Abstract

Image feature representation by bag-of-visual words (BOVW) has been widely considered in the image classification related problems. The feature extraction step is usually based on tokenizing the detected keypoints as the visual words. As a result, the visual-word vector of an image represents how often the visual words occur in an image. To train and test an image classifier, the BOVW features of the training and testing images can be extracted by either at the same time or separately. Therefore, the aim of this paper is to examine the classification performance of using these two different feature extraction strategies. We show that there is no significant difference between these two strategies, but extracting the BOVW features from the training and testing images at the same time requires much longer time. Therefore, the key criterion of choosing the right strategy of BOVW feature extraction is based on the dataset size.
视觉词袋特征提取的两种策略
基于视觉词袋(BOVW)的图像特征表示在图像分类相关问题中得到了广泛的研究。特征提取步骤通常是基于将检测到的关键点标记为视觉词。因此,图像的视觉词向量表示视觉词在图像中出现的频率。为了训练和测试图像分类器,可以同时提取训练图像和测试图像的BOVW特征,也可以单独提取。因此,本文的目的是研究使用这两种不同的特征提取策略的分类性能。我们发现这两种策略之间没有显著差异,但同时从训练图像和测试图像中提取BOVW特征需要更长的时间。因此,选择正确的BOVW特征提取策略的关键准则是基于数据集的大小。
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