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Integration of Global and Local Features for Specular Reflection Inpainting in Colposcopic Images
Author(s) -
Xiaoxia Wang,
Ping Li,
Yuchun Lv,
Huifeng Xue,
Tianxiang Xu,
Yongzhao Du,
Peizhong Liu
Publication year - 2021
Publication title -
journal of healthcare engineering
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.509
H-Index - 29
eISSN - 2040-2309
pISSN - 2040-2295
DOI - 10.1155/2021/5401308
Subject(s) - inpainting , artificial intelligence , computer vision , computer science , specular reflection , preprocessor , colposcopy , image (mathematics) , medicine , cervical cancer , cancer , physics , quantum mechanics
Objective To explore an inpainting method that can balance texture details and visual observability to eliminate the specular reflection (SR) regions in the colposcopic image, thus improving the accuracy of clinical diagnosis for cervical cancer.Methods (1) To ensure smoothness, Gaussian Blur and filling methods are applied to the global image. (2) Striving to preserve the anatomical texture details of the colposcopic image as much as possible, the exemplar-based method is applied to local blocks. (3) The colposcopic images inpainted in the previous two steps are integrated, so that important information of non-SR regions is preserved based on eliminating SR regions.Results In the subjective visual assessment of inpainting results, the average of 3.55 ranks first in the five comparison sets. As to the clinical test, comparing the diagnosis results of 6 physicians before and after eliminating SR regions, the average accuracy of two kinds of classifications increased by 1.44% and 2.03%, respectively.Conclusions This method can effectively eliminate the SR regions in the colposcopy image and present a satisfactory visual effect. Significance . As a preprocessing method for computer-aided diagnosis systems, it can also improve physicians' accuracy in clinical diagnosis.

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