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Figure Based Biomedical Document Retrieval System using Structural Image Features

机译:基于结构图像特征的基于图的生物医学文献检索系统

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Multi-modal and Unstructured nature of documents make their retrieval from healthcare document repositories a challenging task. Text based retrieval is the conventional approach used for solving this problem. In this paper, the authors explore an alternate avenue of using embeddedfigures for the retrieval task. Usually, context of a document is directly reflected in the associated figures, therefore embedded text within these figures along with image features have been used for similarity based retrieval of figures. The present work demonstrates that image features describing the structural properties of figures are sufficient for the figure retrieval task. First, the authors analyze the problem of figure retrieval from biomedical literature and identify significant classes of figures. Second, they use edge information as a means to discriminate between structural properties of each figure category. Finally, the authors present a methodology using a novel feature descriptor namely Fourier Edge Orientation Autocorrelogram (FEOAC) to describe structural properties of figures and build an effective Biomedical document retrieval system. The experimental results demonstrate the better retrieval performance and overall improvement of FEOAC for figure retrieval task, especially when most of the edge information is retained. Apart from invariance to scale, rotation and non-uniform illumination, the proposed feature descriptor is shown to be relatively robust to noisy edges.
机译:文档的多模式和非结构化性质使得从医疗保健文档存储库中检索文档成为一项艰巨的任务。基于文本的检索是用于解决此问题的常规方法。在本文中,作者探索了使用嵌入式图形执行检索任务的另一种途径。通常,文档的上下文直接反映在关联的图形中,因此,这些图形中的嵌入文本以及图像特征已用于基于相似度的图形检索。本工作表明,描述人物结构特征的图像特征足以完成人物检索任务。首先,作者分析了从生物医学文献中检索人物的问题,并确定了重要的人物类别。其次,他们使用边缘信息作为区分每个图形类别的结构属性的手段。最后,作者提出了一种使用新颖特征描述符的方法,即傅立叶边缘方向自相关图(FEOAC)来描述图形的结构特性并构建有效的生物医学文档检索系统。实验结果表明,对于图形检索任务,FEOAC具有更好的检索性能和整体改进效果,尤其是在保留了大多数边缘信息的情况下。除了比例尺不变,旋转和照明不均匀外,所建议的特征描述符对于噪声边缘也表现出较强的鲁棒性。

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