Journal of Innovative Optical Health Sciences, Volume. 10, Issue 2, 1650045(2017)
A system for detection of cervical precancerous in field emission scanning electron microscope images using texture features
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Yessi Jusman, Siew-Cheok Ng, Khairunnisa Hasikin, Rahmadi Kurnia, Noor Azuan Abu Osman, Kean Hooi Teoh. A system for detection of cervical precancerous in field emission scanning electron microscope images using texture features[J]. Journal of Innovative Optical Health Sciences, 2017, 10(2): 1650045
Received: Dec. 28, 2015
Accepted: May. 26, 2016
Published Online: Dec. 27, 2018
The Author Email: Jusman Yessi (yessi.jusman@univrab.ac.id)