基于增强多文本直方图的人类寄生虫卵分类

Roxana Flores-Quispe, Yuber Velazco-Paredes, Raquel Patiño Escarcina, C. B. Castañón
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引用次数: 8

摘要

基于内容的图像检索(Content-based image retrieval, CBIR)系统及其在不同发展领域的应用是当前的研究课题,因此在本研究中,基于内容的图像检索应用于8种不同的人类寄生虫卵的显微图像分类:Ascarias, Uncinarias, Trichuris, Dyphillobothrium-Pacificum, Taenia-Solium, Fasciola Hepática和Enterobius-Vermicularis,它们属于蠕虫类。该系统包括两个阶段。在第一阶段,对基于多文本直方图描述符(MTH)的特征提取机制进行了改进,称为“增强型MTH”。在第二阶段,为了对不同的显微图像进行分类,以识别其正确的物种,实现了一个CBIR系统。最后,仿真结果表明,分类总体成功率为92.16%。
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Classification of human parasite eggs based on enhanced multitexton histogram
The Content-based image retrieval (CBIR) systems and their application in different areas of development, are current research topics, for that reason in this study content-based image retrieval is applied to classificate eight different human parasite eggs: Ascarias, Uncinarias, Trichuris, Dyphillobothrium-Pacificum, Taenia-Solium, Fasciola Hepática and Enterobius-Vermicularis, which are into the class of Helminthes, from their microscopic images. This proposed system includes two stages. In first stage, a feature extraction mechanism that is based on multitexton histogram descriptor (MTH) which has been improved and called `Enhanced MTH'. In second stage, an CBIR system has been implemented in orden to classificate the differents microscopic images to identify their correct species. Finally, simulation result shows overall success rates of 92,16% in the classification.
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