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Dental image enhancement network for early diagnosis of oral dental disease

Intelligent robotics and expert system applications in dentistry suffer from identification and detection problems due to the non-uniform brightness and low contrast in the captured images. Moreover, during the diagnostic process, exposure of sensitive facial parts to ionizing radiations (e.g., X-Ra...

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Published in:Scientific reports 2023-03, Vol.13 (1), p.5312-5312, Article 5312
Main Authors: Khan, Rizwan, Akbar, Saeed, Khan, Ali, Marwan, Muhammad, Qaisar, Zahid Hussain, Mehmood, Atif, Shahid, Farah, Munir, Khushboo, Zheng, Zhonglong
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description Intelligent robotics and expert system applications in dentistry suffer from identification and detection problems due to the non-uniform brightness and low contrast in the captured images. Moreover, during the diagnostic process, exposure of sensitive facial parts to ionizing radiations (e.g., X-Rays) has several disadvantages and provides a limited angle for the view of vision. Capturing high-quality medical images with advanced digital devices is challenging, and processing these images distorts the contrast and visual quality. It curtails the performance of potential intelligent and expert systems and disincentives the early diagnosis of oral and dental diseases. The traditional enhancement methods are designed for specific conditions, and network-based methods rely on large-scale datasets with limited adaptability towards varying conditions. This paper proposed a novel and adaptive dental image enhancement strategy based on a small dataset and proposed a paired branch Denticle-Edification network (Ded-Net). The input dental images are decomposed into reflection and illumination in a multilayer Denticle network (De-Net). The subsequent enhancement operations are performed to remove the hidden degradation of reflection and illumination. The adaptive illumination consistency is maintained through the Edification network (Ed-Net). The network is regularized following the decomposition congruity of the input data and provides user-specific freedom of adaptability towards desired contrast levels. The experimental results demonstrate that the proposed method improves visibility and contrast and preserves the edges and boundaries of the low-contrast input images. It proves that the proposed method is suitable for intelligent and expert system applications for future dental imaging.
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subjects 692/699/3017
692/699/3017/3018
692/699/3020
692/700/3032
Adaptability
Decomposition
Dental disorders
Dental Pulp Calcification
Dentistry
Diagnosis
Early Diagnosis
Expert Systems
Humanities and Social Sciences
Humans
Illumination
Image Enhancement
Image Processing, Computer-Assisted - methods
multidisciplinary
Robotics
Science
Science (multidisciplinary)
title Dental image enhancement network for early diagnosis of oral dental disease
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