吉姆萨染色血细胞图像中的疟疾寄生虫检测

Leila Malihi, K. Ansari-Asl, A. Behbahani
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引用次数: 45

摘要

本研究提出了一种检测吉氏菌染色血样中疟原虫的方法。为了提高检测的准确性,在第一步提取红细胞掩膜。这是因为大多数疟疾寄生虫存在于红细胞中。然后,提取血液中的染色成分,如红细胞、寄生虫和白细胞。下一步,在提取的染色元素上放置红细胞掩膜,以分离可能的寄生虫。最后,提取颜色直方图、粒度特征、梯度特征和平面纹理特征作为分类器输入。这里使用了五种分类器:支持向量机(SVM)、最接近均值(NM)、K近邻(KNN)、1-NN和Fisher。在本研究中,K近邻分类器的准确率最高,为91%。
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Malaria parasite detection in giemsa-stained blood cell images
This research represents a method to detect malaria parasite in blood samples stained with giemsa. In order to increase the accuracy of detecting, at the first step, the red blood cell mask is extracted. It is due to the fact that most of malaria parasites exist in red blood cells. Then, stained elements of blood such as red blood cells, parasites and white blood cells are extracted. At the next step, red blood cell mask is located on the extracted stained elements to separate the possible parasites. Finally, color histogram, granulometry, gradient and flat texture features are extracted and used as classifier inputs. Here, five classifiers were used: support vector machines (SVM), nearest mean (NM), K nearest neighbors (KNN), 1-NN and Fisher. In this research K nearest neighbors classifier had the best accuracy, which was 91%.
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