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Jointly Using Deep Model Learned Features and Traditional Visual Features in a Stacked SVM for Medical Subfigure Classification

机译:在医疗子相关分类中使用深度模型学习功能和传统的视觉功能,用于医疗子相关分类

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Classification of diagnose images and illustrations in the literature is a major challenge towards automated literature review and retrieval. Although being widely recognized as the most successful image classification technique, deep learning models, however, may need to be complemented by traditional visual features to solve this problem, in which there are intra-class variation, inter-class similarity and a small training dataset. In this paper, we propose an approach to classifying diagnose images and biomedical publication illustrations. This algorithm jointly uses the image representations learned by three pre-trained deep convolutional neural network models and ten types of traditional visual features in a stacked support vector machine (SVM) classifier. We have evaluated this algorithm on the ImageCLEF 2016 Subfigure Classification dataset and achieved an accuracy of 85.62%, which is higher than the top performance of purely visual approaches in this challenge.
机译:文献中诊断图像和插图的分类是对自动文献回顾和检索的主要挑战。虽然被广泛被认为是最成功的图像分类技术,但是,深度学习模型可能需要通过传统的视觉功能来补充来解决这个问题,其中存在类内变化,级别相似性​​和小型训练数据集。在本文中,我们提出了一种对诊断图像和生物医学公开图进行分类的方法。该算法共同使用三个预先训练的深度卷积神经网络模型和堆叠支持向量机(SVM)分类器中的十种类型的传统视觉功能学习的图像表示。我们在ImageClef 2016子文件分类数据集上评估了该算法,并实现了85.62%的准确性,高于这一挑战中纯粹视觉方法的最高性能。

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