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Text- and Content-based Biomedical Image Modality Classification

机译:基于文本和基于内容的生物医学图像模态分类

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Image modality classification is an important task toward achieving high performance in biomedical image and article retrieval. Imaging modality captures information about its appearance and use. Examples include X-ray, MRI, Histopathology, Ultrasound, etc. Modality classification reduces the search space in image retrieval. We have developed and evaluated several modality classification methods using visual and textual features extracted from images and text data, such as figure captions, article citations, and MeSH~?. Our hierarchical classification method using multimodal (mixed textual and visual) and several class-specific features achieved the highest classification accuracy of 63.2%. The performance was among the best in ImageCLEF2012 evaluation.
机译:图像模态分类是实现生物医学图像和物品检索高性能的重要任务。成像模块捕获有关其外观和使用的信息。实例包括X射线,MRI,组织病理学,超声等。模态分类减少了图像检索中的搜索空间。我们使用从图像和文本数据中提取的视觉和文本功能进行了多种模态分类方法,例如图形标题,文章引用和网格〜?我们使用多模式(混合文本和视觉)和多种类别特征的分层分类方法实现了63.2%的最高分类精度。表现是ImageClef2012评估中最好的。

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