Implementation of Malaria Parasite Detection and Species Classification Using Dilated Convolutional Neural Network

S. Garba, M. Abdullahi, S. Bashir, O.A. Abisoye
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Abstract

Malaria is an infectious disease caused by a bite of an Anopheles Mosquito which has caused a lot of death. Diagnosis of malaria is made by examining a red blood cell of an infected patient using a microscope, which takes time and requires a qualified laboratory expert to examine, read and interpret the results obtained. Convolutional Neural Network (CNN) has played important role in image classification; however, it has exhibited some problems in consuming computing resources which is one of the limitations of CNN. To reduce this problem, this paper presented a Dilated Convolution Neural Network for malaria parasites detection and species classification using blood smear images. A direct classification was carried out to detect infected and uninfected malaria parasites. Subsequently, species classification was carried out using 3 convolutional layers and Convolution2D for convolution operation while a dilation rate of 2 was used for the convolution layers. The model was trained with a publicly available dataset of 27699 images with a performance accuracy of 99.9% for parasite detection and species classification of 99.9% for falciparum, 64.6% for Malarie, 39.1% for Ovale and 37.3% for Vivax.
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基于扩展卷积神经网络的疟疾寄生虫检测与分类
疟疾是一种由按蚊叮咬引起的传染病,已经造成很多人死亡。疟疾的诊断是通过使用显微镜检查受感染病人的红细胞来进行的,这需要时间,并且需要合格的实验室专家来检查、阅读和解释所获得的结果。卷积神经网络(CNN)在图像分类中发挥了重要作用;然而,它在消耗计算资源方面表现出一些问题,这是CNN的局限性之一。为了解决这一问题,本文提出了一种基于血液涂片图像的疟疾寄生虫检测和种类分类的扩展卷积神经网络。对感染和未感染的疟疾寄生虫进行了直接分类。随后,使用3个卷积层进行物种分类,并使用Convolution2D进行卷积运算,卷积层的膨胀率为2。该模型使用27699张公开数据集进行训练,在寄生虫检测和物种分类方面的准确率为99.9%,其中恶性疟原虫为99.9%,疟疾为64.6%,卵形疟原虫为39.1%,间日疟原虫为37.3%。
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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