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Automatic medical image annotation in ImageCLEF 2007: Overview, results, and discussion

机译:ImageCLEF 2007中的自动医学图像注释:概述,结果和讨论

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In this paper, the automatic medical annotation task of the 2007 CLEF cross language image retrieval campaign (ImageCLEF) is described. The paper focusses on the images used, the task setup, and the results obtained in the evaluation campaign. Since 2005, the medical automatic image annotation task exists in ImageCLEF with increasing complexity to evaluate the performance of state-of-the-art methods for completely automatic annotation of medical images based on visual properties. The paper also describes the evolution of the task from its origin in 2005-2007. The 2007 task, comprising 11,000 fully annotated training images and 1000 test images to be annotated, is a realistic task with a large number of possible classes at different levels of detail. Detailed analysis of the methods across participating groups is presented with respect to the (ⅰ) image representation, (ⅱ) classification method, and (ⅲ) use of the class hierarchy. The results show that methods which build on local image descriptors and discriminative models are able to provide good predictions of the image classes, mostly by using techniques that were originally developed in the machine learning and computer vision domain for object recognition in non-medical images.
机译:本文介绍了2007 CLEF跨语言图像检索活动(ImageCLEF)的自动医学注释任务。本文重点介绍了使用的图像,任务设置以及在评估活动中获得的结果。自2005年以来,ImageCLEF中存在医疗自动图像注释任务,并且其复杂性不断增加,以评估基于视觉属性的医学图像完全自动注释的最新方法的性能。本文还描述了任务从其2005-2007年的演变。 2007年的任务包括11,000个完全注释的训练图像和1000个要注释的测试图像,这是一项现实的任务,具有大量可能的类别,但细节级别不同。针对(ⅰ)图像表示,(ⅱ)分类方法和(ⅲ)类层次结构的使用,对跨参与组的方法进行了详细分析。结果表明,建立在局部图像描述符和判别模型基础上的方法能够对图像类别提供良好的预测,主要是通过使用最初在机器学习和计算机视觉领域开发的技术来在非医学图像中进行对象识别。

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