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A semi-supervised learning based Relevance Feedback Algorithm in Content-Based Image Retrieval

机译:基于内容的图像检索中基于半监督的基于学习的相关反馈算法

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As a useful solution for address the faultage between image features and semanteme, relevance feedback (RF) became an effective approach to boost image retrieval. In supervised-based machine learning algorithm, insufficient Labeled training data and the unlabeled data in one RF circle can not represent scatter of features space for all irrelevant images, such algorithm used for CBIR did not show a high performance. As a research hot point, semi-supervised, it can utilize unlabeled data to estimate model of RF so that boost the retrieval performance. This paper proposed a new algorithm for RF: make use of expectation maximization (EM) to learn RBF function for RBF neutral network, integrated active learning to void a local value EM learned, and reduce iterations of feedback, as a result this algorithm learned a RF model based on RBF. Experience indicated that: compare to EM and Bayes, efficiency of learner is improved, user's query concept is grasped quickly.
机译:作为解决图像特征和Semanteme之间的故障的有用解决方案,相关性反馈(RF)成为提升图像检索的有效方法。在基于监督的机器学习算法中,标记的训练数据不足和一个RF圆圈中的未标记数据不能代表所有无关图像的特征空间的散点,用于CBIR的这种算法没有显示出高性能。作为研究热点,半监督,它可以利用未标记的数据来估计RF的模型,从而提高检索性能。本文提出了一种新的RF算法:利用期望最大化(EM)来学习RBF中性网络的RBF功能,集成了主动学习,以减少本地值EM学习,并减少反馈的迭代,因此该算法学习基于RBF的RF模型。经验表明:与EM和Bayes相比,学习者的效率得到改善,用户的查询概念迅速掌握。

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