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数字图像处理在白细胞分割中的应用研究 被引量:1

Application of Digital Image Processing in Leukocyte Segmentation
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摘要 近几十年计算机行业的蓬勃发展也带动了数字图像处理技术的发展和进步,让其在各行各业都得到相应的应用。尤其是在生物医学领域中,在医用显微技术的处理分析和医学诊断方面扮演了重要的角色。本文从数字图像处理技术的概念着手,就其对白细胞分割的应用情况进行了描述。 In recent decades,the vigorous development of computer industry also drives the development and progress of digital image processing technology. And digital image processing technology gets corresponding application in all fields. Especially,it plays an important role in the processing and analysis of medical microscopy and medical diagnosis in the field of biomedicine. Starting from the concept of digital image processing technology,this paper describes its application in leukocyte segmentation.
作者 麻若珊 MA Ruoshan(Zhejiang Chinese Medical University,Hangzhou 310053,China)
机构地区 浙江中医药大学
出处 《现代信息科技》 2019年第19期111-112,共2页 Modern Information Technology
关键词 数字图像处理 白细胞分割 预处理 医疗信息化 digital image processing leukocyte segmentation pretreatment medical informatization
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