基于排序线性判别分析的图像搜索再排序

Tianshi Yu, Zhong Ji, Peiguang Jing, Yuting Su
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摘要

特征降维是数据处理的一个重要步骤,在许多领域都用于数据的降维。本文将降维技术应用于图像搜索重排序。线性判别分析(LDA)作为一种监督降维方法,在分类应用中表现良好,但在排序任务中表现不佳。首先,它没有考虑相关度,而相关度对排序问题很重要。其次,由于LDA的监督性质,需要大量的标记样本,这些样本往往成本高昂且难以获得。因此,我们在LDA的基础上,提出了一种改进的排序线性判别分析(RLDA)方法,以关联度作为标签。同时,使用了标记和未标记的样本,因此它是一种半监督方法。通过实验验证了该算法的良好性能。
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Image search reranking with Ranking Linear Discriminant Analysis
Feature dimensionality reduction is an important step for data processing, which is used to reduce data's dimensionalities in many areas. In this paper, we apply dimensionality reduction to image search reranking. As a supervised dimensionality reduction method, Linear Discriminant Analysis (LDA) performs well in classification applications, but is not the case for ranking tasks. Firstly, it does not take the relevance degrees into consideration, which is important for ranking problem. Secondly, owing to the supervised nature of LDA, a plenty of labeled samples are required, which are often costly and difficult to obtain. Therefore, based on LDA, we propose an improved method named Ranking Linear Discriminant Analysis (RLDA) by using the relevance degrees as labels. Meanwhile, both labeled and unlabeled samples are utilized so that it is a semi-supervised approach. Experiments are carried out to confirm the good performance of the proposed algorithm.
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