EKSTRAKSI CITRA SEL DARAH PUTIH DARI SAMPEL CITRA SEL DARAH
The amount and composition of white blood cells in a blood sample are important information in diagnosis about the patients health status. Doctors require two types of blood count for diagnosis, that is Complete Blood Count (CBC) and Differential Blood Count (DBC). CBC can be done by automatic instr...
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[Yogyakarta] : Universitas Gadjah Mada
2013
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id-ugm-repo.1250762016-03-04T08:30:38Z https://repository.ugm.ac.id/125076/ EKSTRAKSI CITRA SEL DARAH PUTIH DARI SAMPEL CITRA SEL DARAH , DIDIK HARI PURWANTO , Ir. Balza Achmad, M.ScE. ETD The amount and composition of white blood cells in a blood sample are important information in diagnosis about the patients health status. Doctors require two types of blood count for diagnosis, that is Complete Blood Count (CBC) and Differential Blood Count (DBC). CBC can be done by automatic instruments called by cytometer. On the other hand, DBC uses manual procedure by hematology experts (hematologist). The automatic DBC software planning can be done by using image processing technique which include segmentation, image extraction, and classification. In this research, the automatic DBC software planning is limited on segmentation and images extraction steps. The segmentation used thresholding method at Hueness, Saturation and Value channel of image (HSV thresholding). Then, the next step is labelling process in order to give labels at each white value in binary image after thresholding. After that, image clustering between plasma and nucleus images is done in order to get plasma position in coordinates. The final step is cropping operation based on plasma image coordinate in the blood cell input image. The software planning step used 20 blood cell image samples. Those steps, optimal threshold value for plasma image are: H=0-130 [Yogyakarta] : Universitas Gadjah Mada 2013 Thesis NonPeerReviewed , DIDIK HARI PURWANTO and , Ir. Balza Achmad, M.ScE. (2013) EKSTRAKSI CITRA SEL DARAH PUTIH DARI SAMPEL CITRA SEL DARAH. UNSPECIFIED thesis, UNSPECIFIED. http://etd.ugm.ac.id/index.php?mod=penelitian_detail&sub=PenelitianDetail&act=view&typ=html&buku_id=65241 |
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ETD , DIDIK HARI PURWANTO , Ir. Balza Achmad, M.ScE. EKSTRAKSI CITRA SEL DARAH PUTIH DARI SAMPEL CITRA SEL DARAH |
description |
The amount and composition of white blood cells in a blood sample are
important information in diagnosis about the patients health status. Doctors
require two types of blood count for diagnosis, that is Complete Blood Count
(CBC) and Differential Blood Count (DBC). CBC can be done by automatic
instruments called by cytometer. On the other hand, DBC uses manual procedure
by hematology experts (hematologist).
The automatic DBC software planning can be done by using image
processing technique which include segmentation, image extraction, and
classification. In this research, the automatic DBC software planning is limited on
segmentation and images extraction steps. The segmentation used thresholding
method at Hueness, Saturation and Value channel of image (HSV thresholding).
Then, the next step is labelling process in order to give labels at each white value
in binary image after thresholding. After that, image clustering between plasma
and nucleus images is done in order to get plasma position in coordinates. The
final step is cropping operation based on plasma image coordinate in the blood
cell input image.
The software planning step used 20 blood cell image samples. Those steps,
optimal threshold value for plasma image are: H=0-130 |
format |
Theses and Dissertations NonPeerReviewed |
author |
, DIDIK HARI PURWANTO , Ir. Balza Achmad, M.ScE. |
author_facet |
, DIDIK HARI PURWANTO , Ir. Balza Achmad, M.ScE. |
author_sort |
, DIDIK HARI PURWANTO |
title |
EKSTRAKSI CITRA SEL DARAH PUTIH DARI SAMPEL CITRA SEL DARAH |
title_short |
EKSTRAKSI CITRA SEL DARAH PUTIH DARI SAMPEL CITRA SEL DARAH |
title_full |
EKSTRAKSI CITRA SEL DARAH PUTIH DARI SAMPEL CITRA SEL DARAH |
title_fullStr |
EKSTRAKSI CITRA SEL DARAH PUTIH DARI SAMPEL CITRA SEL DARAH |
title_full_unstemmed |
EKSTRAKSI CITRA SEL DARAH PUTIH DARI SAMPEL CITRA SEL DARAH |
title_sort |
ekstraksi citra sel darah putih dari sampel citra sel darah |
publisher |
[Yogyakarta] : Universitas Gadjah Mada |
publishDate |
2013 |
url |
https://repository.ugm.ac.id/125076/ http://etd.ugm.ac.id/index.php?mod=penelitian_detail&sub=PenelitianDetail&act=view&typ=html&buku_id=65241 |
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