首页> 外文会议>International Conference on Image and Video Retrieval(CIVR 2005); 20050720-22; Singapore(SG) >Improved AdaBoost-Based Image Retrieval with Relevance Feedback via Paired Feature Learning
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Improved AdaBoost-Based Image Retrieval with Relevance Feedback via Paired Feature Learning

机译:改进的基于AdaBoost的图像检索和相关特征反馈(通过配对特征学习)

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摘要

In this paper, we propose a novel paired feature learning system for relevance feedback based image retrieval. To facilitate density estimation in our feature learning system, we employ an ID3-like balance tree quantization method to preserve most discriminative information. In addition, we map all training samples in the relevance feedback onto paired feature spaces to enhance the discrimination power of feature representation. Furthermore, we replace the traditional binary classifiers in the AdaBoost learning algorithm by Bayesian weak classifiers to improve its accuracy, thus producing stronger classifiers. Experimental results on content-based image retrieval show improvement of each step in the proposed learning system.
机译:在本文中,我们提出了一种新颖的配对特征学习系统,用于基于相关反馈的图像检索。为了在我们的特征学习系统中促进密度估计,我们采用了类似于ID3的平衡树量化方法来保留大多数判别信息。此外,我们将相关性反馈中的所有训练样本映射到成对的特征空间上,以增强特征表示的识别能力。此外,我们用贝叶斯弱分类器替换了AdaBoost学习算法中的传统二进制分类器,以提高其准确性,从而产生更强大的分类器。基于内容的图像检索的实验结果表明,提出的学习系统的每个步骤都有改进。

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