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Applying latent semantic analysis to large-scale medical image databases

机译:潜在语义分析在大型医学图像数据库中的应用

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摘要

Latent Semantic Analysis (LSA) although has been used successfully in text retrieval when applied to CBIR induces scalability issues with large image collections. The method so far has been used with small collections due to the high cost of storage and computational time for solving the SVD problem for a large and dense feature matrix. Here we present an effective and efficient approach of applying LSA skipping the SVD solution of the feature matrix and overcoming in this way the deficiencies of the method with large scale datasets. Early and late fusion techniques are tested and their performance is calculated. The study demonstrates that early fusion of several composite descriptors with visual words increase retrieval effectiveness. It also combines well in a late fusion for mixed (textual and visual) ad hoc and modality classification. The results reported are comparable to state of the art algorithms without including additional knowledge from the medical domain. (C) 2014 Elsevier Ltd. All rights reserved.
机译:潜在语义分析(LSA)虽然已成功应用于文本检索,但将其应用于CBIR会引起大型图像集合的可伸缩性问题。迄今为止,由于用于解决大而密集的特征矩阵的SVD问题的高存储成本和计算时间,该方法已用于少量集合。在这里,我们提出了一种有效且有效的方法,即通过使用LSA跳过特征矩阵的SVD解决方案,并以此方式克服大规模数据集方法的不足。测试了早期和晚期融合技术,并计算了它们的性能。该研究表明,将多个复合描述符与视觉单词进行早期融合可提高检索效率。在后期融合(临时和模态混合)中,它也可以很好地融合在一起。报告的结果与现有算法相当,而没有包括医学领域的其他知识。 (C)2014 Elsevier Ltd.保留所有权利。

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