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Cue Integration for Medical Image Annotation

机译:医学图像注释的提示集成

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This paper presents the algorithms and results of our participation to the image annotation task of ImageCLEFmed 2007. We proposed a multi-cue approach where images are represented both by global and local descriptors. These cues are combined following two SVM-based strategies. The first algorithm, called Discriminative Accumulation Scheme (DAS), trains an SVM for each feature, and considers as output of each classifier the distance from the separating hyperplane. The final decision is taken on a linear combination of these distances. The second algorithm, that we call Multi Cue Kernel (MCK), uses a new Mercer kernel which can accept as input different features while keeping them separated. The DAS algorithm obtained a score of 29.9, which ranked fifth among all submissions. The MCK algorithm with the one-vs-all and with the one-vs-one multiclass extensions of SVM scored respectively 26.85 and 27.54. These runs ranked first and second among all submissions.
机译:本文介绍了我们参与ImageClefMed 2007的图像注释任务的算法和结果。我们提出了一种多线程方法,其中通过全局和本地描述符表示图像。这些提示遵循基于SVM的两种策略。第一算法称为判别累积方案(DAS),为每个特征列达SVM,并考虑每个分类器的输出与分离超平面的距离。最终决定是在这些距离的线性组合上。第二种算法,即我们调用Multi Cue Kernel(MCK),使用新的Mercer内核,它可以接受作为输入不同的功能,同时保持它们分隔。 DAS算法得分为29.9,其中在所有提交中排名第五。 MCK算法与单vs-all和vs-One多种多类SVM的多种子分别分别均分别进行26.85和27.54。这些运行在所有提交中排名第一和第二。

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