School of Medical Science and Technology, I.I.T., Kharagpur, West Bengal, India.
Micron. 2010 Oct;41(7):840-6. doi: 10.1016/j.micron.2010.04.017. Epub 2010 May 8.
This paper aims at introducing an automated approach to leukocyte recognition using fuzzy divergence and modified thresholding techniques. The recognition is done through the segmentation of nuclei where Gamma, Gaussian and Cauchy type of fuzzy membership functions are studied for the image pixels. It is in fact found that Cauchy leads better segmentation as compared to others. In addition, image thresholding is modified for better recognition. Results are studied and discussed.
本文旨在介绍一种使用模糊分歧和改进的阈值技术自动识别白细胞的方法。通过对细胞核进行分割来实现识别,其中研究了伽马、高斯和柯西型模糊隶属函数对图像像素的作用。实际上发现,与其他方法相比,柯西方法可以实现更好的分割。此外,还对图像阈值进行了改进以提高识别效果。对结果进行了研究和讨论。