Document Type

Article

Publication Date

1-1-2021

Abstract

Dental impression tray is frequently used in dentistry to record the patient's oral structure for clinical oral diagnosis and treatment planning. Manual procedure of taking impressions is costly, time-consuming, and additionally, no research has been done on selecting dental impression tray from dental arch images using computer vision in real-life scenarios. In this spirit, an intelligent model is proposed based on computer vision and machine learning to select appropriate dental impression trays from maxillary arch images. A dataset of 52 patients' maxillary arch images have been acquired and various sets of features such as colors, textures, and shapes of the images were extracted to better characterize the maxillary arch images. Considering the importance of the features in describing the maxillary arch object and to improve the classification performance, a method based on multi-feature fusion with ensemble classifier is proposed. Besides, the performance of a deep learning based multilayer perceptron neural network is also investigated. The proposed multi-feature fusion with ensemble classifier attained 92.31% precision, 91.75% recall, 91.75% accuracy, respectively, on the dataset, which clearly establishes the feasibility of the proposed model. An illustration of a real-life application of the proposed model is also provided.

Keywords

Dentistry, Feature extraction, Image color analysis, Shape, Medical diagnostic imaging, Image recognition, Computer vision, Dental impression tray, dental arch image, automation in dentistry, Computer vision, Multi-feature fusion, Ensemble classifier

Divisions

foundation,fsktm

Funders

Ministry of Higher Education under Fundamental Research Grant Scheme (FRGS) (FP042-2017A)

Publication Title

IEEE Access

Volume

9

Publisher

IEEE-Inst Electrical Electronics Engineers Inc

Publisher Location

445 HOES LANE, PISCATAWAY, NJ 08855-4141 USA

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