基于内容的图像检索的进化二元分类器集体网络

S. Kiranyaz, Stefan Uhlmann, Jenni Raitoharju, M. Gabbouj, T. Ince
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引用次数: 4

摘要

基于内容的图像检索(CBIR)是一个活跃的研究领域,目前已经提出了多种特征提取、分类和检索技术。然而,当数据库规模变大时,总体检索性能显著下降是一个普遍的事实。在本文中,我们提出了(进化)二元分类器(CNBC)框架的集体网络来实现高检索性能,即使训练(基础事实)数据可能从一开始就不完全存在,因此系统只能增量训练。CNBC框架基本上采用“分而治之”式的方法,通过分配多个二元分类器(NBC)网络来区分每个类,并在每个NBC中进行进化搜索以找到最优的二元分类器(BC)。在这样的进化会话中,CNBC主体可以进一步动态地适应每个新传入的类/特征集,而无需全面的重新训练或重新配置。在基准图像数据库上的视觉和数值性能评估表明了该框架的可扩展性;与传统的检索技术相比,实现了显著的性能改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Collective network of evolutionary binary classifiers for content-based image retrieval
The content-based image retrieval (CBIR) has been an active research field for which several feature extraction, classification and retrieval techniques have been proposed up to date. However, when the database size grows larger, it is a common fact that the overall retrieval performance significantly deteriorates. In this paper, we propose collective network of (evolutionary) binary classifiers (CNBC) framework to achieve a high retrieval performance even though the training (ground truth) data may not be entirely present from the beginning and thus the system can only be trained incrementally. The CNBC framework basically adopts a “Divide and Conquer” type approach by allocating several networks of binary classifiers (NBCs) to discriminate each class and performs evolutionary search to find the optimal binary classifier (BC) in each NBC. In such an evolution session, the CNBC body can further dynamically adapt itself with each new incoming class/feature set without a full-scale re-training or re-configuration. Both visual and numerical performance evaluations of the proposed framework over benchmark image databases demonstrate its scalability; and a significant performance improvement is achieved over traditional retrieval techniques.
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