肺部x射线图像中感兴趣区域自动高亮技术的发展

N. Ilyasova, T. A. Chesnokova
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引用次数: 0

摘要

在本文中,基于纹理属性的计算和k-means的分类,已经开发了用于突出肺部x射线图像中感兴趣的范围的信息技术。在某些情况下,突出显示的对象不仅可以描述当前患者的病情,还可以描述年龄、性别、体质等具体特征。采用k-means方法,揭示了分割误差与分割窗口大小之间的关系。在研究中,实现了一种评估分割结果质量的视觉准则和一种基于计算大量碎片图像聚类误差的准则。该研究还包括图像预处理技术。因此,研究表明,该技术提供的关键对象突出误差为26%。然而,均衡程序已将这一误差减少到14%。给出了12x12、24x24和36x36破碎窗的x射线图像聚类误差。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Development of the technique for automatic highlighting ranges of interest in lungs x-ray images
In this paper, information technology has been developed for highlighting ranges of interest in lung x-ray images, based on the calculation of textural properties and classification of k-means. In some cases, the highlighted objects can describe not only the current patient’s condition but also specific characteristics regarding age, gender, constitution, etc. While using the k-means method, the relationship between the segmentation error and fragmentation window size was revealed. Within the study, both a visual criterion for evaluating the quality of the segmentation result and a criterion based on calculating the clustering error on a large set of fragmented images were implemented. The study also included image pre-processing techniques. Thus, the study showed that the technology provided key objects highlighting error at 26%. However, the equalizing procedure has lessened this error to 14%. X-ray image clustering errors for fragmentation windows of 12x12, 24x24 and 36x36 were presented.
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