x射线图像中人体部位的自动检测

V. Jeanne, D. Ünay, Vincent Jacquet
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引用次数: 18

摘要

随着医学成像技术的进步,医疗中心需要采集、分析、分类、存储和检索的数字图像数量呈指数级增长。因此,医学图像的分类与检索成为近年来研究的热点。尽管许多项目都在关注这个问题,但是所提出的解决方案对于现实生活中的实现来说仍然远远不够精确。将医学图像分类和检索解释为一个多类分类任务,在这项工作中,我们研究了五种不同特征类型在基于svm的学习框架中的性能,用于将人体x射线图像分类为与身体部位相应的类。我们的综合实验表明,四种传统的特征类型提供了与文献相当的性能,每类精度较低,而局部二进制模式不仅产生了非常好的全局精度,而且对于文献中使用的特征也有很好的类别特定精度。
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Automatic detection of body parts in x-ray images
The number of digital images that needs to be acquired, analyzed, classified, stored and retrieved in the medical centers is exponentially growing with the advances in medical imaging technology. Accordingly, medical image classification and retrieval has become a popular topic in the recent years. Despite many projects focusing on this problem, proposed solutions are still far from being sufficiently accurate for real-life implementations. Interpreting medical image classification and retrieval as a multi-class classification task, in this work, we investigate the performance of five different feature types in a SVM-based learning framework for classification of human body X-Ray images into classes corresponding to body parts. Our comprehensive experiments show that four conventional feature types provide performances comparable to the literature with low per-class accuracies, whereas local binary patterns produce not only very good global accuracy but also good class-specific accuracies with respect to the features used in the literature.
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