疟疾寄生虫检测中不同机器学习和深度学习技术的分析

Raman Mishra, S. Saranya, Mohd Shafahad
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引用次数: 2

摘要

疟疾是一种由单细胞寄生虫引起的动物传染病。在2008年,全球估计有2.28亿疟疾病例。传统的诊断方法需要经验丰富的技术人员和仔细的阅读来区分健康和感染的血细胞,这消耗了大量的时间,也容易出现人为错误。在ML和DL的帮助下,我们可以模拟人类的智能并做出更好的预测。本文的主要目的是将KNN、决策树、Logistic回归和随机森林等机器学习算法与深度学习模型VGG19、改进的Resnet50进行比较,实现迁移学习,以提高机器学习模型的准确性,从而提出仅通过观察血细胞图像而不进行任何血液染色来预测疟疾的最佳模型,从而减少任何专家要求。
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Analysis of different Machine Learning and Deep Learning Techniques for Malaria Parasite Detection
Malaria is an epizootic illness caused by unicellular parasites. In Two thousand eighteen there were an estimated two hundred twenty-eight million cases of malaria worldwide. Conventional method of diagnosis requires experienced technician and careful perusal to classify between healthy and infected blood cell, which consumes a lot of time and is also prone to human error. With the help of ML and DL we can simulate human intelligence and make better predictions. The main aim of the paper is to compare the machine learning algorithms namely KNN, Decision Tree, Logistic regression and Random forest and implementing transfer learning with deep learning models VGG19, modified Resnet50 to improve the accuracy achieved with machine learning models thus proposing the best model for predicting malaria only by observing by blood cell image rather than doing any staining of blood, thus reducing any expert requirement.
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