Litcius/Paper detail

Real‐time classification on oral ulcer images with residual network and image enhancement

Jianbin Guo, Haolin Wang, Xingsi Xue, Mengting Li, Zhongxiong Ma

2021IET Image Processing19 citationsDOIOpen Access PDF

Abstract

Abstract With the advances of deep learning research in the past few years, healthcare and smart medicines have been significantly developed. Inspired by the wide application of deep learning in medical image classification and disease diagnosis, this paper further proposes a variant of the Residual Network framework to classify the oral ulcer images in real‐time. In particular, image pre‐processing and enhancement techniques are used to enrich the datasets and reduce model overfitting. Besides, the transfer learning is further introduced into the residual blocks to improve the classification accuracy, with the later layers trained from the labeled datasets. To validate the performance of authors' proposal, it is compared with other classic deep learning models with respect to the classification sensitivity, specificity, and accuracy. The experimental results show that authors' approach outperforms those classic classification networks when the oral ulcers are classified and diagnosed in real‐time.

Topics & Concepts

ResidualArtificial intelligenceComputer scienceImage (mathematics)Pattern recognition (psychology)Contextual image classificationComputer visionAlgorithmAI in cancer detectionOral Health Pathology and TreatmentCOVID-19 diagnosis using AI