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Layout-aware Subfigure Decomposition for Complex Figures in the Biomedical Literature

机译:生物医学文献中用于复杂图形的可识别布局的子图形分解

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Published scientific figure is a valuable information resource, but often occur as composite images. The ImageCLEF meeting presented a shared evaluation in 2016 to use machine learning to split these composite figures into components automatically. We adapted an existing high-performance object detection method to analyze the substructure of published biomedical figures by developing a novel multi-branch output convolution neural network to predict irregular panel layouts and provide augmented training data to drive learning. Our system has an accuracy of 86.8% on the 2016 ImageCLEF Medical dataset and 83.1% on a new dataset derived from open access papers from the INTACT database of molecular interactions.
机译:发表的科学人物是有价值的信息资源,但通常以合成图像的形式出现。 ImageCLEF会议在2016年提出了一项共享评估,以使用机器学习将这些合成图自动拆分为多个组成部分。我们通过开发一种新颖的多分支输出卷积神经网络来预测不规则的面板布局并提供增强的训练数据来驱动学习,从而使现有的高性能对象检测方法适用于分析已发布的生物医学图形的子结构。我们的系统在2016 ImageCLEF Medical数据集上的准确性为86.8%,在新数据集上的准确性为83.1%,这些数据集来自INTACT分子相互作用数据库的开放获取论文。

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