模糊区域分析对多发性硬化症小病变误检的过滤

F. X. Aymerich, P. Sobrevilla, E. Montseny, À. Rovira
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引用次数: 4

摘要

本文介绍了一种基于区域特征分析的磁共振图像多发性硬化症小病变误检滤波方法。该方法以早期工作的结果为出发点,通过使用模糊规则检测显示高强度的图像像素。对先前工作中获得的结果进行区域分析,可以提取出一些具有区分多发性硬化症小病变和错误检测能力的特征。这些特征被引入作为获得与这些图像中存在的高强度相关的新的和改进的模糊隶属函数的限制。结果显示,重要的减少了假检测的数量,保留了以前检测到的小多发性硬化症病变。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Filtering false detections of small multiple sclerosis lesions using fuzzy regional analysis
This paper introduces a method to filter false detections of small multiple sclerosis lesions in magnetic resonance images based on the analysis of regional features. The proposed method considers as starting point the results of an earlier work in which, through the use of fuzzy rules, the image pixels showing hyperintensity were detected. The regional analysis of the results obtained at previous work allows extracting some features with differentiation capability between small multiple sclerosis lesions and false detections. These features are introduced as restrictions for obtaining a new and improved fuzzy membership function associated with the presence of hyperintensity in these images. Results show an important reduction of the number of false detections preserving the small multiple sclerosis lesions previously detected.
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