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Combining Textual and Visual Information for Image Retrieval in the Medical Domain

机译:结合文本和视觉信息进行医学领域的图像检索

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In this article we have assembled the experience obtained from our participation in the imageCLEF evaluation task over the past two years. Exploitation on the use of linear combinations for image retrieval has been attempted by combining visual and textual sources of images. From our experiments we conclude that a mixed retrieval technique that applies both textual and visual retrieval in an interchangeably repeated manner improves the performance while overcoming the scalability limitations of visual retrieval. In particular, the mean average precision (MAP) has increased from 0.01 to 0.15 and 0.087 for 2009 and 2010 data, respectively, when content-based image retrieval (CBIR) is performed on the top 1000 results from textual retrieval based on natural language processing (NLP).
机译:在本文中,我们总结了过去两年中参与imageCLEF评估任务所获得的经验。已经尝试通过将图像的视觉和文本源相结合来探索使用线性组合进行图像检索。从我们的实验中得出的结论是,以交替重复的方式应用文本和视觉检索的混合检索技术可以提高性能,同时克服视觉检索的可伸缩性限制。特别是,当对基于自然语言处理的文本检索的前1000个结果执行基于内容的图像检索(CBIR)时,2009年和2010年的数据的平均平均精度(MAP)分别从0.01增至0.15和0.087 (NLP)。

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