Periapical Radiograph Texture Features for Osteoporosis Detection using Deep Convolutional Neural Network
Currently, research for osteoporosis examination using dental radiographic images is increasing rapidly. Many researchers have used various methods from subject data. It indicates that osteoporosis has become a widespread disease that should be studied more deeply. This study proposes a deep Convolu...
Main Authors: | Hidjah, Khasnur, Harjoko, Agus, Wibowo, Moh. Edi, Shantiningsih, Rurie Ratna |
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Format: | Other |
Language: | English |
Published: |
International Journal of Advanced Computer Science and Applications
2022
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Subjects: | |
Online Access: | https://repository.ugm.ac.id/283907/1/105.Periapical-Radiograph-Texture-Features-for-Osteoporosis-Detection-using-Deep-Convolutional-Neural-NetworkInternational-Journal-of-Advanced-Computer-Science-and-Applications.pdf |
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