Instance Image Retrieval by Aggregating Sample-based Discriminative Characteristics

Zhongyang Zhang, Lei Wang, Yang Wang, Luping Zhou, Jianjia Zhang, Fangxiao Chen
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Abstract

Identifying the discriminative characteristic of a query is important for image retrieval. For retrieval without human interaction, such characteristic is usually obtained by average query expansion (AQE) or its discriminative variant (DQE) learned from pseudo-examples online, among others. In this paper, we propose a new query expansion method to further improve the above ones. The key idea is to learn a "unique'' discriminative characteristic for each database image, in an offline manner. During retrieval, the characteristic of a query is obtained by aggregating the unique characteristics of the query-relevant images collected from an initial retrieval result. Compared with AQE which works in the original feature space, our method works in the space of the unique characteristics of database images, significantly enhancing the discriminative power of the characteristic identified for a query. Compared with DQE, our method needs neither pseudo-labeled negatives nor the online learning process, leading to more efficient retrieval and even better performance. The experimental study conducted on seven benchmark datasets verifies the considerable improvement achieved by the proposed method, and also demonstrates its application to the state-of-the-art diffusion-based image retrieval.
基于样本判别特征聚合的实例图像检索
识别查询的判别特征对于图像检索非常重要。对于无人工交互的检索,通常通过平均查询扩展(AQE)或从在线伪示例中学习的判别变体(DQE)来获得该特征。在本文中,我们提出了一种新的查询扩展方法来进一步改进上述方法。关键思想是以离线方式学习每个数据库图像的“唯一”判别特征。在检索过程中,通过聚合从初始检索结果中收集的与查询相关的图像的唯一特征来获得查询的特征。与在原始特征空间中工作的AQE方法相比,我们的方法在数据库图像的唯一特征空间中工作,显著提高了对查询识别的特征的鉴别能力。与DQE相比,我们的方法既不需要伪标签否定,也不需要在线学习过程,检索效率更高,性能更好。在7个基准数据集上进行的实验研究验证了该方法的显著改善,并证明了该方法在最先进的基于扩散的图像检索中的应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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