有效的图像数据库搜索通过降维

A. Dahl, H. Aanæs
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引用次数: 13

摘要

本文进一步研究了基于词袋图像表示的图像搜索。这种方法在大规模图像收集方面显示出了令人鼓舞的结果,使其与Internet应用程序相关。词袋方法涉及的步骤是特征提取、词汇构建和使用查询图像进行搜索。在所有步骤中保持较低的计算成本非常重要。在本文中,我们重点讨论了该技术的效率。为了做到这一点,我们通过使用PCA和添加颜色来大幅降低特征的维数。视觉词汇的构建通常使用k-means。研究了一种不固定簇数的基于leader - follower原则的聚类算法(LF-clustering)。lf聚类的自适应特性表明,使用它可以提高视觉词汇的质量。在查询步骤中,将查询图像中的特征分配给视觉词汇表。降维使我们能够使用kD-tree进行精确的特征标记,而不是通常使用的近似方法。尽管将维数降至6至15维,但与基于128维SIFT特征和k-means聚类的传统词袋方法相比,我们获得了更好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effective image database search via dimensionality reduction
Image search using the bag-of-words image representation is investigated further in this paper. This approach has shown promising results for large scale image collections making it relevant for Internet applications. The steps involved in the bag-of-words approach are feature extraction, vocabulary building, and searching with a query image. It is important to keep the computational cost low through all steps. In this paper we focus on the efficiency of the technique. To do that we substantially reduce the dimensionality of the features by the use of PCA and addition of color. Building of the visual vocabulary is typically done using k-means. We investigate a clustering algorithm based on the leader follower principle (LF-clustering), in which the number of clusters is not fixed. The adaptive nature of LF-clustering is shown to improve the quality of the visual vocabulary using this. In the query step, features from the query image are assigned to the visual vocabulary. The dimensionality reduction enables us to do exact feature labeling using kD-tree, instead of approximate approaches normally used. Despite the dimensionality reduction to between 6 and 15 dimensions we obtain improved results compared to the traditional bag-of-words approach based on 128 dimensional SIFT feature and k-means clustering.
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