Pengekstrakan Ciri Secara Manual Sel Serviks (Manual Features Extraction Of Cervical Cells)
Digital image processing is a wide field and covers various fields including the medical diagnosis field. The objective of this project is to design a new software using Borland C++ Software, to extract features from cervix cancer cell which is the second most killer for women. This software i...
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| Format: | Monograph |
| Language: | English |
| Published: |
Universiti Sains Malaysia
2005
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| Online Access: | http://eprints.usm.my/58759/ http://eprints.usm.my/58759/1/Pengekstrakan%20Ciri%20Secara%20Manual%20Sel%20Serviks%20%28Manual%20Features%20Extraction%20Of%20Cervical%20Cells%29_Noor%20Zaihah%20Jamal.pdf |
| Summary: | Digital image processing is a wide field and covers various fields including the
medical diagnosis field. The objective of this project is to design a new software using
Borland C++ Software, to extract features from cervix cancer cell which is the second
most killer for women. This software is build to overcome the method which is used
normally. Extraction method through conventional often encounters problem in
differentiating between object and background because certain images are blur or
consist a lot of impurities. Measurement through conventional method is just an
assumption because here, ability of human vision is limited and the process takes a long
time. The characterize that is being extract are size and grey level of nucleus and
cytoplasm. Extraction characteristics can be carried out by implementing two methods
which are segmentation and extraction. Segmentation is done using threshold technique
whereas extraction is done based on region growing technique. Segmentation is apply to
to increase the difference between nucleus, cytoplasm and its background before region
growing is done against the segmented image. 60 images which were acquired from
Hospital of University Science Malaysia were extracted using this software. From the
correlation test which was been done between the data extracted using software and the
data extracted through conventional, showed that designed software was able to extract
the cell characteristic efficiently and confidently. Data that was extracted will be used
by neural network to categorize the risk of cell. Hopefully with this software, diagnosis
process for cervix cancer would be easier and eventually more life’s can be saved in the
future. |
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