Microscopic images dataset for automation of RBCs counting
نویسنده
چکیده
A method for Red Blood Corpuscles (RBCs) counting has been developed using RBCs light microscopic images and Matlab algorithm. The Dataset consists of Red Blood Corpuscles (RBCs) images and there RBCs segmented images. A detailed description using flow chart is given in order to show how to produce RBCs mask. The RBCs mask was used to count the number of RBCs in the blood smear image.
منابع مشابه
Red Blood Cells and White Blood Cells Detection, Differentiation and Counting using Image Processing
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