Automatic Recognition of Human Parasite Cysts on Microscopic Stools Images using Principal Component Analysis and Probabilistic Neural Network

Beaudelaire Saha Tchinda, D. Tchiotsop, R. Tchinda, D. Wolf, M. Noubom
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引用次数: 10

Abstract

Parasites live in a host and get its food from or at the expensive of that host. Cysts represent a form of resistance and spread of parasites. The manual diagnosis of microscopic stools images is time-consuming and depends on the human expert. In this paper, we propose an automatic recognition system that can be used to identify various intestinal parasite cysts from their microscopic digital images. We employ image pixel feature to train the probabilistic neural networks (PNN). Probabilistic neural networks are suitable for classification problems. The main novelty is the use of features vectors extracted directly from the image pixel. For this goal, microscopic images are previously segmented to separate the parasite image from the background. The extracted parasite is then resized to 12x12 image features vector. For dimensionality reduction, the principal component analysis basis projection has been used. 12x12 extracted features were orthogonalized into two principal components variables that consist the input vector of the PNN. The PNN is trained using 540 microscopic images of the parasite. The proposed approach was tested successfully on 540 samples of protozoan cysts obtained from 9 kinds of intestinal parasites. - See more at: http://thesai.org/Publications/ViewPaper?Volume=4&Issue=9&Code=ijarai&SerialNo=6#sthash.S5fRMF9g.dpuf
基于主成分分析和概率神经网络的显微粪便图像中人类寄生虫囊肿的自动识别
寄生虫生活在宿主体内,从宿主那里获取食物,或者以宿主为代价。囊肿代表了寄生虫的抵抗和传播形式。显微粪便图像的人工诊断费时且依赖于人类专家。在本文中,我们提出了一种自动识别系统,可用于从显微数字图像中识别各种肠道寄生虫囊肿。我们利用图像像素特征训练概率神经网络(PNN)。概率神经网络适用于分类问题。其主要新颖之处在于使用了直接从图像像素提取的特征向量。为了实现这一目标,显微镜图像先前被分割以将寄生虫图像从背景中分离出来。然后将提取的寄生虫调整为12x12图像特征向量。在降维方面,采用主成分分析基投影法。12x12个提取的特征正交化成两个主成分变量,构成PNN的输入向量。PNN使用540张寄生虫的显微图像进行训练。该方法已在540份来自9种肠道寄生虫的原生动物囊体样本上进行了成功的测试。-详见:http://thesai.org/Publications/ViewPaper?Volume=4&Issue=9&Code=ijarai&SerialNo=6#sthash.S5fRMF9g.dpuf
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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