An Intensity Threshold based Image Segmentation of Malaria Infected Cells

Prakriti Aggarwal, Ashish Khatter, Garima Vyas
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引用次数: 6

Abstract

Malaria is a perilous disease in charge for around 400 to 1000 deaths annually in India. The conventional technique to diagnose malaria is through microscopy. It takes few hours by an expert to examine and diagnose malarial parasites in the blood smear. The diagnosis report may vary when the blood smears are analyzed by different experts. In proposed work, an image processing based robust algorithm is designed to diagnose malarial parasites with minimal intervention of an expert. Initially, the images are enhanced by using green channel and histogram equalization, and the background subtraction is performed to get the clear vision of the region of interest. After preprocessing, a median filter is employed to eliminate the noise from the images. Then Otsu’s method for segmentation is implemented on the filtered images. The database from world health organization is used in this research. The experiments give encouraging results and an accuracy up to 93%.
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基于强度阈值的疟疾感染细胞图像分割
疟疾是一种危险的疾病,每年在印度造成大约400到1000人死亡。诊断疟疾的传统技术是通过显微镜。专家需要几个小时来检查和诊断血液涂片中的疟疾寄生虫。当不同的专家分析血液涂片时,诊断报告可能会有所不同。本文设计了一种基于图像处理的鲁棒算法,在专家干预最少的情况下诊断疟疾寄生虫。首先利用绿色通道和直方图均衡化对图像进行增强,然后进行背景减法,得到感兴趣区域的清晰视觉。预处理后,采用中值滤波去除图像中的噪声。然后在滤波后的图像上实现Otsu分割方法。本研究使用世界卫生组织数据库。实验结果令人鼓舞,准确率高达93%。
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