Fesharaki Nooshin Jafari, Pourghassem Hossein
Department of Electrical Engineering, Najafabad Branch, Islamic Azad University, Isfahan, Iran.
J Med Signals Sens. 2013 Jul;3(3):150-63.
Due to the daily mass production and the widespread variation of medical X-ray images, it is necessary to classify these for searching and retrieving proposes, especially for content-based medical image retrieval systems. In this paper, a medical X-ray image hierarchical classification structure based on a novel merging and splitting scheme and using shape and texture features is proposed. In the first level of the proposed structure, to improve the classification performance, similar classes with regard to shape contents are grouped based on merging measures and shape features into the general overlapped classes. In the next levels of this structure, the overlapped classes split in smaller classes based on the classification performance of combination of shape and texture features or texture features only. Ultimately, in the last levels, this procedure is also continued forming all the classes, separately. Moreover, to optimize the feature vector in the proposed structure, we use orthogonal forward selection algorithm according to Mahalanobis class separability measure as a feature selection and reduction algorithm. In other words, according to the complexity and inter-class distance of each class, a sub-space of the feature space is selected in each level and then a supervised merging and splitting scheme is applied to form the hierarchical classification. The proposed structure is evaluated on a database consisting of 2158 medical X-ray images of 18 classes (IMAGECLEF 2005 database) and accuracy rate of 93.6% in the last level of the hierarchical structure for an 18-class classification problem is obtained.
由于医学X射线图像的每日大量生产以及广泛的变化,有必要对这些图像进行分类以用于搜索和检索目的,特别是对于基于内容的医学图像检索系统。本文提出了一种基于新颖的合并和分割方案并使用形状和纹理特征的医学X射线图像层次分类结构。在所提出结构的第一级,为了提高分类性能,基于合并度量和形状特征将形状内容相似的类分组为一般的重叠类。在该结构的下一级,重叠类根据形状和纹理特征的组合或仅纹理特征的分类性能被分割成较小的类。最终,在最后一级,这个过程也继续分别形成所有的类。此外,为了在所提出的结构中优化特征向量,我们根据马氏类可分离性度量使用正交前向选择算法作为特征选择和约简算法。换句话说,根据每个类的复杂度和类间距离,在每个级别选择特征空间的一个子空间,然后应用有监督的合并和分割方案来形成层次分类。在所提出的结构在一个由18类的2158幅医学X射线图像组成的数据库(IMAGECLEF 2005数据库)上进行评估,对于一个18类分类问题,在层次结构的最后一级获得了93.6%的准确率。