基于模糊特征的肝脏CT图像分类中的插值决策

F. Lilik, S. Nagy, Melinda Kovács, S. Szujó, L. Kóczy
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引用次数: 1

摘要

在计算机辅助诊断中,图像处理和分类起着至关重要的作用。图像处理专家一直在为不同类型的问题开发解决方案,这些问题可能与图像处理有关,然而,由于数据的敏感性和医学专家的高成本,这些实验方法在实际医疗实践中的应用通常非常有限。可用的数据库非常有限,因此其他常用且非常有效的卷积神经网络或其他自动学习方法不太容易调整用于医学图像处理。为了克服这一困难,本文提出了一种基于专家知识的模糊特征描述决策结构的方法。计算机断层扫描图像的各种属性值,例如密度或均匀性,在这些特征中被考虑在所有肝脏疾病的情况下是不同的。由于可用样本数量少,描述特征叶的模糊集导致稀疏系统,因此需要插值。然而,其他插值方法的进一步研究计划,稳定的Koczy-Hirota插值似乎是合适的。
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Interpolative decisions in the fuzzy signature based image classification for liver CT
In computer aided diagnostics image processing and classification plays an essential role. Image processing experts have been developing solutions for different types of problems, that can be related to image processing, however, due to the sensitivity of the data and the high cost of medical experts, these experimental methods usually have very limited use in real medical practice. The databases that are available are very limited, thus the elsewhere usual and extremely effective convolutional neural network or other automated learning methods are not so easy to adjust for medical image processing. To overcome this difficulty, this paper presents an expert knowledge based method which describes the decision structures by fuzzy signatures. Values of various properties of Computer Tomography images as e.g. density or homogeneity are being considered in these signatures that are different in all case of liver diseases. Because of the low number of samples available, fuzzy sets that describes the leafs of the signatures leads to sparse systems, hence interpolation is needed. However further investigations of other interpolation methods are planned, Stabilized Koczy-Hirota interpolation seems to be appropriate.
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