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Optimal Computer Based Analysis for Detecting Malarial Parasites

机译:检测疟疾寄生虫的最佳计算机基于基于计算机的分析

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Malaria poses a serious global health problem and it requires a rapid,accurate diagnosis to control the disease. An image processing algorithm for accurate and rapid automation in the diagnosis of malaria in blood images is developed in this research paper. The image classification system to identify the malarial parasites positively present in thin blood smears is designed, and differentiated into the various species and stages of malaria - falciparum and vivax prevalent in India. Method implemented presents a new approach to image processing in which the detection experiments employed the KNN rule,along with other algorithms such as ANN (Artificial Neural Networks), Zack's thresholding and Linear Programming and Template matching to find out the optimal classifier for detection and classification of malarial parasites with its stages.
机译:疟疾构成了严重的全球健康问题,它需要快速,准确的诊断来控制疾病。 本研究纸张开发了一种用于精确和快速自动化的图像处理算法,在血液图像诊断中进行了血液图像诊断。 设计了图像分类系统,以鉴定薄血涂片中呈薄血液涂片的疟疾寄生虫,并分化为疟疾的各种种类和阶段 - 在印度的疟原虫和vivax普遍存在。 方法实现了一种新的图像处理方法,其中检测实验采用了KNN规则,以及其他算法,如ANN(人工神经网络),Zack的阈值和线性编程和模板匹配,以找出用于检测和分类的最佳分类器 疟疾寄生虫与其阶段。

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