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首页> 外文期刊>Journal of the American Society for Information Science and Technology >MF-Re-Rank: A Modality Feature-Based Re-Ranking Model for Medical Image Retrieval
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MF-Re-Rank: A Modality Feature-Based Re-Ranking Model for Medical Image Retrieval

机译:MF-Re-Rank:基于模态特征的医学图像检索重排模型

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One of the main challenges in medical image retrieval is the increasing volume of image data, which render it difficult for domain experts to find relevant information from large data sets. Effective and efficient medical image retrieval systems are required to better manage medical image information. Text-based image retrieval (TBIR) was very successful in retrieving images with textual descriptions. Several TBIR approaches rely on models based on bag-of-words approaches, in which the image retrieval problem turns into one of standard text-based information retrieval: where the meanings and values of specific medical entities in the text and metadata are ignored in the image representation and retrieval process. However, we believe that TBIR should extract specific medical entities and terms and then exploit these elements to achieve better image retrieval results. Therefore, we propose a novel reranking method based on medical-image-dependent features. These features are manually selected by a medical expert from imaging modalities and medical terminology. First, we represent queries and images using only medical-image-dependent features such as image modality and image scale. Second, we exploit the defined features in a new reran king method for medical image retrieval. Our motivation is the large influence of image modality in medical image retrieval and its impact on image-relevance scores. To evaluate our approach, we performed a series of experiments on the medical ImageCLEF data sets from 2009 to 2013. The BM25 model, a language model, and an image-relevance feedback model are used as baselines to evaluate our approach. The experimental results show that compared to the BM25 model, the proposed model significantly enhances image retrieval performance. We also compared our approach with other state-of-the-art approaches and show that our approach performs comparably to those of the top three runs in the official ImageCLEF competition.
机译:医学图像检索中的主要挑战之一是图像数据量的增加,这使得领域专家很难从大型数据集中找到相关信息。需要有效和高效的医学图像检索系统来更好地管理医学图像信息。基于文本的图像检索(TBIR)在检索具有文本描述的图像方面非常成功。几种TBIR方法依赖于基于词袋方法的模型,其中图像检索问题变成了基于标准文本的信息检索之一:在文本和元数据中,特定医学实体的含义和值在文本中被忽略。图像表示和检索过程。但是,我们认为TBIR应该提取特定的医学实体和术语,然后利用这些元素来获得更好的图像检索结果。因此,我们提出了一种基于医学图像相关特征的新颖的重新排名方法。这些功能由医学专家从成像方式和医学术语中手动选择。首先,我们仅使用医学图像相关的功能(例如图像模态和图像比例)来表示查询和图像。其次,我们在新的reking king方法中利用定义的功能进行医学图像检索。我们的动机是图像模态在医学图像检索中的巨大影响及其对图像相关性得分的影响。为了评估我们的方法,我们从2009年到2013年对医学ImageCLEF数据集进行了一系列实验。BM25模型,语言模型和图像相关性反馈模型被用作评估我们方法的基准。实验结果表明,与BM25模型相比,该模型显着提高了图像检索性能。我们还将我们的方法与其他最新方法进行了比较,表明我们的方法在ImageCLEF官方比赛中的表现与前三名相当。

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