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Annotating Image ROIs with Text Descriptions for Multimodal Biomedical Document Retrieval

机译:使用文本描述注释图像ROI,以进行多模式生物医学文献检索

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Regions of interest (ROIs) that are pointed to by overlaid markers (arrows, asterisks, etc.) in biomedical images are expected to contain more important and relevant information than other regions for biomedical article indexing and retrieval. We have developed several algorithms that localize and extract the ROIs by recognizing markers on images. Cropped ROIs then need to be annotated with contents describing them best. In most cases accurate textual descriptions of the ROIs can be found from figure captions, and these need to be combined with image ROIs for annotation. The annotated ROIs can then be used to, for example, train classifiers that separate ROIs into known categories (medical concepts), or to build visual ontologies, for indexing and retrieval of biomedical articles. We propose an algorithm that pairs visual and textual ROIs that are extracted from images and figure captions, respectively. This algorithm based on dynamic time warping (DTW) clusters recognized pointers into groups, each of which contains pointers with identical visual properties (shape, size, color, etc.). Then a rule-based matching algorithm finds the best matching group for each textual ROI mention. Our method yields a precision and recall of 96% and 79%, respectively, when ground truth textual ROI data is used.
机译:生物医学图像中由重叠标记(箭头,星号等)指向的感兴趣区域(ROI)有望比其他区域包含更多重要和相关的信息,以进行生物医学物品索引和检索。我们已经开发了几种算法,可以通过识别图像上的标记来定位和提取ROI。然后需要对裁剪的ROI进行注释,并最好地描述它们。在大多数情况下,可以从图形标题中找到ROI的准确文本描述,并且需要将这些文本描述与图像ROI结合使用以进行注释。然后,带注释的ROI可以用于例如训练将ROI分为已知类别(医学概念)的分类器,或构建可视化本体,以对生物医学制品进行索引和检索。我们提出了一种算法,该算法将分别从图像和图形标题中提取的视觉和文本ROI配对。这种基于动态时间规整(DTW)的算法将识别的指针分为几组,每组包含具有相同视觉属性(形状,大小,颜色等)的指针。然后,基于规则的匹配算法为每个文本ROI提及找到最佳匹配组。当使用地面真实文本ROI数据时,我们的方法产生的准确度和召回率分别为96%和79%。

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