唾液蕨类预测的显微图像分析

Andreea Georgiana Covaciu, Camelia Florea, L. Szolga
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引用次数: 0

摘要

监测女性体内的雌激素水平可以反映出她们的月经周期和排卵天数。唾液中的盐结晶形成一种叫做蕨类植物的模式,可以决定雌激素的水平。有三个重要的阶段:没有蕨类植物,部分蕨类植物和完全蕨类植物。该系统旨在以一种廉价、简单和精确的方式自动确定生育期。该系统包括硬件部分,用于制作高性能的微型显微图像采集设备,以及能够分析图像并显示基于人类唾液样本的实时结果的软件。对于图像处理部分,我们提出了两种方法。第一种方法意味着使用单词袋概念,即单词是具有不同蕨类植物风格的补丁。对于单词描述,我们使用CLAHE进行图像增强,Otsu和Frangi滤波器进行重点调整,局部二值模式(LBP)用于单词的特征表示。在最后的分类中,我们使用了支持向量机(SVM)对一张图像中单词的频率(单词的直方图)进行分类。第二种图像处理方法使用卷积神经网络(CNN)。实验结果表明,该系统可用于唾液图像中的蕨类植物阶段分类,使用SVM分类的准确率为0.96。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Microscopic Images Analysis for Saliva Ferning Prediction
Monitoring the estrogen level in woman’s body can say a lot about their menstrual cycle and ovulation days. The salt crystallization from saliva forms a certain pattern called ferning which can determine the level of estrogen. There are three important stages: no ferning, partial ferning and full ferning. The proposed system intends to automatically determine the fertile period in a cheap, easy, and precise way. The proposed system includes a hardware part, making a miniaturized microscopic device with high performance for image acquisition, and a software able to analyze the images and displaying real-time results based on human saliva samples. For the image processing part, we propose two approaches. The first approach implies the use of the Bag of Words concept, were the words are patches with different ferning styles. For words description we use: CLAHE for image enhancement, Otsu and Frangi filter for ferning emphasis, Local Binary Pattern (LBP) for feature representation of words. For final classification, a support vector machine (SVM) was used, and we classify the frequency of words in one image (the histogram of words). The second image processing approach uses a convolutional neuronal network (CNN). The experimental results show that the proposed system can be used to classify the ferning stage in salivary images, with an accuracy of 0.96 using the SVM classification.
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