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Image retrieval based on augmented relational graph representation

机译:基于增强关系图表示的图像检索

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摘要

The "semantic gap" problem is one of the main difficulties in image retrieval tasks. Semi-supervised learning, typically integrated with the relevance feedback techniques, is an effective method to narrow down the semantic gap. However, in semi-supervised learning, the amount of unlabeled data is usually much greater than that of labeled data. Therefore, the performance of a semi-supervised learning algorithm relies heavily on its effectiveness of using the relationships between the labeled and unlabeled data. This paper proposes a novel algorithm to better explore those relationships by augmenting the relational graph representation built on the entire data set, expected to increase the intra-class weights while decreasing the inter-class weights and linking the potential intra-class data. The augmented relational matrix can be directly used in any semi-supervised learning algorithms. The experimental results in a range of feedback-based image retrieval tasks show that the proposed algorithm not only achieves good generality, but also outperforms other algorithms in the same semi-supervised learning framework.
机译:“语义间隙”问题是图像检索任务中的主要困难之一。半监督学习(通常与相关性反馈技术集成在一起)是缩小语义鸿沟的有效方法。但是,在半监督学习中,未标记数据的数量通常比标记数据的数量大得多。因此,半监督学习算法的性能在很大程度上取决于其使用标记数据和未标记数据之间的关系的有效性。本文提出了一种新颖的算法,可以通过增加建立在整个数据集上的关系图表示来更好地探索这些关系,从而期望增加类内权重,同时减少类间权重并链接潜在的类内数据。增强的关系矩阵可以直接用于任何半监督学习算法中。在一系列基于反馈的图像检索任务中的实验结果表明,该算法不仅具有良好的通用性,而且在相同的半监督学习框架中也优于其他算法。

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