首页> 外文会议>Complex, Intelligent and Software Intensive Systems, 2009. CISIS '09 >Classifying Biomedical Figures Using Combination of Bag of Keypoints and Bag of Words
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Classifying Biomedical Figures Using Combination of Bag of Keypoints and Bag of Words

机译:使用关键点词袋和单词词袋的组合对生物医学图形进行分类

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Figures in full science papers contain much information not described in the main text. The use of these figures is an important subject. In this study, we developed a method to classify these biomedical figures into categories using a combination of a bag of keypoints approach and a bag of words approach for the legends. For bag of keypoints, the descriptors of detected interest points are quantized by k-means clustering and are converted into a feature vector element. The figure classification is carried out using a one-against-all multi-class support vector machine. When the Harris-affine and extended scale-invariant feature transform method are used for interest point detection and feature description, respectively, the classification accuracy of bag of keypoints is about 20% better than that of field-level image descriptors which are similar to descriptors used in previous studies. Further, when bag of words for legends is combined with this method, the prediction performance achieved 75.7% classification accuracy. Introducing bag of keypoints not only increases the classification performance but also enables the figures to be treated as text words. This method is expected to be useful for figure similarity search and information retrieval across figures and text.
机译:完整的科学论文中的数字包含大量正文中未描述的信息。这些数字的使用是重要的主题。在这项研究中,我们开发了一种方法,将一揽子关键点方法和一整套针对传说的词语方法结合起来,将这些生物医学数字分类。对于袋关键点,通过k均值聚类对检测到的兴趣点的描述符进行量化,然后将其转换为特征向量元素。使用对所有多类支持向量机进行图形分类。当哈里斯仿射和扩展尺度不变特征变换方法分别用于兴趣点检测和特征描述时,关键点袋的分类精度比与描述符相似的场级图像描述符要高约20%。在以前的研究中使用。进一步地,当结合图例用词袋时,预测性能达到了75.7%的分类精度。引入关键点包不仅可以提高分类性能,而且还可以将数字视为文字。预期该方法对于跨图形和文本的图形相似性搜索和信息检索很有用。

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