Journal of Innovative Optical Health Sciences, 2015, 8 (6): 1550033, Published Online: Jan. 10, 2019  

A counting method for complex overlapping erythrocytes-based microscopic imaging

Author Affiliations
Department of Optical Electronics Sichuan University, Chengdu Sichuan 610064, P. R. China
Abstract
Red blood cell (RBC) counting is a standard medical test that can help diagnose various conditions and diseases. Manual counting of blood cells is highly tedious and time consuming. However, new methods for counting blood cells are customary employing both electronic and computer-assisted techniques. Image segmentation is a classical task in most image processing applications which can be used to count blood cells in a microscopic image. In this research work, an approach for erythrocytes counting is proposed. We employed a classification before counting and a new segmentation idea was implemented on the complex overlapping clusters in a microscopic smear image. Experimental results show that the proposed method is of higher counting accuracy and it performs much better than most counting algorithms existed in the situation of three or more RBCs overlapping complexly into a group. The average total erythrocytes counting accuracy of the proposed method reaches 92.9%.
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Xudong Wei, Yiping Cao, Guangkai Fu, Yapin Wang. A counting method for complex overlapping erythrocytes-based microscopic imaging[J]. Journal of Innovative Optical Health Sciences, 2015, 8(6): 1550033.

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