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Do Radiographic Assessments of Periodontal Bone Loss Improve with Deep Learning Methods for Enhanced Image Resolution?

Maira Beatriz Hernández Morán, Marcelo Daniel Brito Faria, Gilson A. Giraldi, Luciana Freitas Bastos, Aura Conci

2021Sensors38 citationsDOIOpen Access PDF

Abstract

Resolution plays an essential role in oral imaging for periodontal disease assessment. Nevertheless, due to limitations in acquisition tools, a considerable number of oral examinations have low resolution, making the evaluation of this kind of lesion difficult. Recently, the use of deep-learning methods for image resolution improvement has seen an increase in the literature. In this work, we performed two studies to evaluate the effects of using different resolution improvement methods (nearest, bilinear, bicubic, Lanczos, SRCNN, and SRGAN). In the first one, specialized dentists visually analyzed the quality of images treated with these techniques. In the second study, we used those methods as different pre-processing steps for inputs of convolutional neural network (CNN) classifiers (Inception and ResNet) and evaluated whether this process leads to better results. The deep-learning methods lead to a substantial improvement in the visual quality of images but do not necessarily promote better classifier performance.

Topics & Concepts

Artificial intelligenceConvolutional neural networkComputer scienceDeep learningImage qualityBicubic interpolationBilinear interpolationClassifier (UML)Lanczos resamplingMachine learningPattern recognition (psychology)Computer visionImage (mathematics)Linear interpolationEigenvalues and eigenvectorsQuantum mechanicsPhysicsDental Radiography and ImagingAdvanced X-ray and CT ImagingMedical Imaging Techniques and Applications