Detection and classification of Malaria in thin blood slide images

Hassan Mohammed, I. Abuel Maaly
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引用次数: 21

Abstract

In this work an image processing system was developed to identify malaria parasites in thin blood smears and to classify them into one of the four different species of malaria. Many techniques were implemented in the preprocessing stage to enhance the images. In the first part of the system morphological processing is applied to extract the Red Blood Cells (RBC) from blood images. The developed algorithm picks the suspicious regions and detects the parasites in the images including the overlapped cells. Accordingly, the RBCs are classified into infected and non-infected cells and the number of RBCs in each image is calculated. The second part of the system uses the Normalized Cross-Correlation function to classify the parasite into one of the four species namely, Plasmodium falciparum, Plasmodium vivax, Plasmodium ovale. Compared to manual results, the system achieved 95 % accuracy for detection and counting of RBCs and 100% for detection and classifying the parasite into one of its four types.
疟疾在薄血玻片图像中的检测与分类
在这项工作中,开发了一种图像处理系统,用于识别薄血涂片中的疟疾寄生虫,并将它们分类为四种不同的疟疾之一。在预处理阶段采用了许多技术来增强图像。在系统的第一部分,形态学处理应用于提取血液图像中的红细胞(RBC)。该算法选取可疑区域,检测图像中的寄生虫,包括重叠的细胞。据此,将红细胞分为感染细胞和未感染细胞,并计算每张图像中红细胞的数量。系统的第二部分使用归一化互关函数将寄生虫分类为恶性疟原虫、间日疟原虫、卵形疟原虫四种之一。与人工结果相比,该系统对红细胞的检测和计数准确率达到95%,对寄生虫的检测和分类准确率为100%。
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