Geometric Feature Extraction for Identification and Classification of the Overlapping Cells for Leukaemia

Overlapping cell identification and classification of microscopic blood cell image is proposed to increase the accuracy of the number of automated counting and the percentage of the overall accuracy. The accurate identification of overlapping cells can increase the accuracy of cell counting for dia...

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主要作者: Kiu, Siew Ming
格式: Thesis
語言:English
出版: 2018
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在線閱讀:http://ir.unimas.my/id/eprint/26606/1/Kiu%20Siew%20ft.pdf
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spelling my-unimas-ir.266062024-02-20T04:59:42Z Geometric Feature Extraction for Identification and Classification of the Overlapping Cells for Leukaemia 2018 Kiu, Siew Ming QA75 Electronic computers. Computer science Overlapping cell identification and classification of microscopic blood cell image is proposed to increase the accuracy of the number of automated counting and the percentage of the overall accuracy. The accurate identification of overlapping cells can increase the accuracy of cell counting for diagnosing Leukaemia disease. In the proposed method, the percentage of average accuracy for identifying overlapping cells had reached 98%. The overlapping cells had classified into different classes based on overlapping degree and the number of overlapping cells. The proposed method can successful segmentation white blood cell from the overlapping cells with 70%. The average percentage of cell counting had tested by the proposed method. Extended-Minima Transform Watershed Segmentation Algorithm had successful increasing 36.89% of accuracy to WBC segmentation. It had reduced 46.12% of over-segmentation problem. Tests of cell counting in between the two stages, which are before and after for the process of identification and classification of overlapping cells. The average percentage of total cell count is 83.31%, the average percentage of WBC counting is 84.8% and the average percentage of RBC counting is 60.55%. Universiti Malaysia Sarawak (UNIMAS) 2018 Thesis http://ir.unimas.my/id/eprint/26606/ http://ir.unimas.my/id/eprint/26606/1/Kiu%20Siew%20ft.pdf text en validuser masters Universiti Malaysia Sarawak (UNIMAS) Faculty of Computer Science and Information Technology
institution Universiti Malaysia Sarawak
collection UNIMAS Institutional Repository
language English
topic QA75 Electronic computers
Computer science
spellingShingle QA75 Electronic computers
Computer science
Kiu, Siew Ming
Geometric Feature Extraction for Identification and Classification of the Overlapping Cells for Leukaemia
description Overlapping cell identification and classification of microscopic blood cell image is proposed to increase the accuracy of the number of automated counting and the percentage of the overall accuracy. The accurate identification of overlapping cells can increase the accuracy of cell counting for diagnosing Leukaemia disease. In the proposed method, the percentage of average accuracy for identifying overlapping cells had reached 98%. The overlapping cells had classified into different classes based on overlapping degree and the number of overlapping cells. The proposed method can successful segmentation white blood cell from the overlapping cells with 70%. The average percentage of cell counting had tested by the proposed method. Extended-Minima Transform Watershed Segmentation Algorithm had successful increasing 36.89% of accuracy to WBC segmentation. It had reduced 46.12% of over-segmentation problem. Tests of cell counting in between the two stages, which are before and after for the process of identification and classification of overlapping cells. The average percentage of total cell count is 83.31%, the average percentage of WBC counting is 84.8% and the average percentage of RBC counting is 60.55%.
format Thesis
qualification_level Master's degree
author Kiu, Siew Ming
author_facet Kiu, Siew Ming
author_sort Kiu, Siew Ming
title Geometric Feature Extraction for Identification and Classification of the Overlapping Cells for Leukaemia
title_short Geometric Feature Extraction for Identification and Classification of the Overlapping Cells for Leukaemia
title_full Geometric Feature Extraction for Identification and Classification of the Overlapping Cells for Leukaemia
title_fullStr Geometric Feature Extraction for Identification and Classification of the Overlapping Cells for Leukaemia
title_full_unstemmed Geometric Feature Extraction for Identification and Classification of the Overlapping Cells for Leukaemia
title_sort geometric feature extraction for identification and classification of the overlapping cells for leukaemia
granting_institution Universiti Malaysia Sarawak (UNIMAS)
granting_department Faculty of Computer Science and Information Technology
publishDate 2018
url http://ir.unimas.my/id/eprint/26606/1/Kiu%20Siew%20ft.pdf
_version_ 1794023002185138176