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Algorithms of blood cells recognition

Authors: Shakhtarin B.I., Panov S.A., Kalashnikov K.S. Published: 03.09.2015
Published in issue: #4(103)/2015  
DOI: 10.18698/0236-3933-2015-4-49-65

 
Category: Instrument Engineering, Metrology, Information-Measuring Instruments and Systems | Chapter: Instrumentation and Methods to Control Environment, Substances, Materials, and Products  
Keywords: analysis of blood smears, automated microscopy, detection of blood cells, machine vision

The structure of the medical image analysis system is considered. A schematic diagram of the system for automated microscopic studies as well as the algorithm of recognition of blood cells are shown. The main task to be solved during the morphological analysis of blood is formulated. The requirements are specified for the algorithm used for determining leukocyte counts and detecting blood cells. A model of color and brightness characteristics to describe typical images of a blood smear is offered. The threshold values of the object size at searching the cells are specified. The luminance histogram of a typical field of view is studied. Two-step algorithm for detecting blood cells as well as the algorithm for constructing a separating line are described. The results of the experiments on real samples are given. The causes of detection errors are considered.

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