Image database retrieval utilizing affinity relationships

M. Shyu, Shu‐Ching Chen, Min Chen, Chengcui Zhang, Kanoksri Sarinnapakorn
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引用次数: 48

Abstract

Recent research effort in Content-Based Image Retrieval (CBIR) focuses on bridging the gap between low-level features and high-level semantic contents of images as this gap has become the bottleneck of CBIR. In this paper, an effective image database retrieval framework using a new mechanism called the Markov Model Mediator (MMM) is presented to meet this demand by taking into consideration not only the low-level image features, but also the high-level concepts learned from the history of user's access pattern and access frequencies on the images in the database. Also, the proposed framework is efficient in two aspects: 1) Overhead for real-time training is avoided in the image retrieval process because the high-level concepts of images are captured in the off-line training process. 2) Before the exact similarity matching process, Principal Component Analysis (PCA) is applied to reduce the image search space. A training subsystem for this framework is implemented and integrated into our system. The experimental results demonstrate that the MMM mechanism can effectively assist in retrieving more accurate results from image databases.
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利用亲和关系的图像数据库检索
目前基于内容的图像检索(CBIR)的研究主要集中在弥合图像的低级特征和高级语义内容之间的差距,这一差距已经成为CBIR的瓶颈。为了满足这一需求,本文提出了一种有效的图像数据库检索框架,该框架采用一种名为马尔可夫模型中介(MMM)的新机制,该机制不仅考虑了图像的底层特征,而且考虑了从数据库中图像的用户访问模式和访问频率的历史中学习到的高层概念。此外,该框架还具有以下两方面的效率:1)在离线训练过程中捕获图像的高级概念,避免了图像检索过程中实时训练的开销;2)在精确相似度匹配之前,采用主成分分析(PCA)减小图像搜索空间。实现了该框架的训练子系统,并将其集成到系统中。实验结果表明,MMM机制可以有效地辅助从图像数据库中检索更准确的结果。
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