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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Biological shape characterization for automatic image recognition and diagnosis of protozoan parasites of the genus Eimeria
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Biological shape characterization for automatic image recognition and diagnosis of protozoan parasites of the genus Eimeria

机译:用于自动图像识别和诊断艾美球虫属原生动物寄生虫的生物形状表征

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摘要

We describe an approach of automatic feature extraction for shape characterization of seven distinct species of Eimeria, a protozoan parasite of domestic fowl. We used digital images of oocysts, a round-shaped stage presenting inter-specific variability. Three groups of features were used: curvature characterization, size and symmetry, and internal structure quantification. Species discrimination was performed with a Bayesian classifier using Gaussian distribution. A database comprising 3891 micrographs was constructed and samples of each species were employed for the training process. The classifier presented an overall correct classification of 85.75%. Finally, we implemented a real-time diagnostic tool through a web interface, providing a remote diagnosis front-end. (c) 2007 Pattern Recognition Society. Published by Elsevier Ltd. All rights reserved.
机译:我们描述了一种自动特征提取方法,用于对七个不同种的艾美叶虫(家禽的原生动物寄生虫)进行形状表征。我们使用了卵囊的数字图像,卵囊是呈现种间变异性的圆形阶段。使用了三组特征:曲率特征,大小和对称性以及内部结构量化。使用贝叶斯分类器使用高斯分布进行物种区分。建立了包括3891张显微照片的数据库,并将每种物种的样品用于训练过程。分类器给出了85.75%的总体正确分类。最后,我们通过Web界面实现了实时诊断工具,提供了远程诊断前端。 (c)2007模式识别学会。由Elsevier Ltd.出版。保留所有权利。

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