变分模态分解与经验模态分解特征在组织病理图像细胞分割中的比较

Omer Faruk Karaaslan, G. Bilgin
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引用次数: 1

摘要

本研究旨在通过数据兼容的特征提取方法来提高数字组织病理图像中细胞的分割性能。为此,建议使用经验模态分解和变分模态分解方法进行比较。首先,进行了从RGB色彩空间到灰度级的数字组织病理学图像的转换。然后,将经验模态分解和变分模态分解方法应用于图像,利用基于核的支持向量机分类器和基于集成的随机森林分类器对图像特征进行分类。结果是根据三个不同的指标来评估的。在应用结果部分,详细介绍了本研究得到的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Comparison of Variational Mode Decomposition and Empirical Mode Decomposition Features for Cell Segmentation in Histopathological Images
In this study, it is aimed to increase the segmen- tation performance of the cells in the digital histopathological images by data compatible feature extraction methods. For this purpose, it is proposed to use empirical mode decomposition and variational mode decomposition methods as a comparison. Initially, the conversion of digital histopathological images from RGB color space to gray level is performed. Then, empirical mode decomposition and variational mode decomposition methods are applied to these images, and the obtained features are classified by using support vector machines which is a kernel-based classifier and random forests which is an ensemble-based classifier. The results are evaluated according to three different metrics. In the application results section, the results obtained in this study are presented in detail.
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