A New Strategy for the Morphological and Colorimetric Recognition of Erythrocytes for the Diagnosis of Forms of Anemia based on Microscopic Color Images of Blood Smears
Jerome Nango, J. C. Alico (INP-HB), Si\'e Ouattara (INP-HB), Alain, Cl\'ement (LARIS)

TL;DR
This paper introduces a semi-automatic method using image segmentation and morphology analysis to identify and classify erythrocytes in blood smears, aiding anemia diagnosis with high accuracy.
Contribution
It presents a novel semi-automatic approach combining color segmentation and morphological attributes for erythrocyte recognition in blood smear images.
Findings
Effective identification of different anemia types.
High accuracy in erythrocyte morphological analysis.
Automated attribute extraction for blood cell classification.
Abstract
The detection of red blood cells based on morphology and colorimetric appearance is very important in improving hematology diagnostics. There are automatons capable of detecting certain forms, but these have limitations with regard to the formal identification of red blood cells because they consider certain cells to be red blood cells when they are not and vice versa. Other automata have limitations in their operation because they do not cover a sufficient area of the blood smear. In spite of their performance, biologists have very often resorted to the manual analysis of blood smears under an optical microscope for a morphological and colorimetric study. In this paper, we present a new strategy for semi-automatic identification of red blood cells based on their isolation, their automatic color segmentation using Otsu's algorithm and their morphology. The algorithms of our method have…
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