Abstract
Vitiligo vulgaris is an autoimmune disease which causes a strong reduction of the cells producing melanin, which is the main skin pigment. This results in the growth of white patches on patients’ skin, which are more or less visible, depending on the skin phototype. Precise, objective and fast detection of vitiligo patches would be crucial to produce statistically relevant data on huge populations, thus giving an insight on the disease. However, few methods are available in literature. In the present paper, a semi-automatic tool based on image processing to detect facial vitiligo patches is described. The tool requires pictures to be captured under black light illumination, which enhances patches contrast with respect to healthy skin. The user is only required to roughly define the regions of interest and set a global threshold, thus, no specific image-processing skills are required. An adaptive algorithm then automatically discerns between vitiligo and healthy skin pixels. The tools also allow for a statistical data interpretation by overlapping the detected patches of all patients on a face template through an occurrence map. Preliminary results obtained on a small population of 15 patients allowed us to assess the tool’s performance. Patch detection was checked by an experienced dermatologist, who confirmed the detection for all the studied patients, thus supporting the effectiveness of the proposed tool.
Subject
Electrical and Electronic Engineering,Computer Graphics and Computer-Aided Design,Computer Vision and Pattern Recognition,Radiology Nuclear Medicine and imaging
Cited by
6 articles.
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1. Advancing Early Detection Of Vitiligo Using A Non-Invasive Detection System;2023 International Conference on Intelligent Technologies for Sustainable Electric and Communications Systems (iTech SECOM);2023-12-18
2. Deep Learning based Model for Detection of Vitiligo Skin Disease using Pre-trained Inception V3;International Journal of Mathematical, Engineering and Management Sciences;2023-10-01
3. Type 1 and Type 2 Diabetes Measurement Using Human Face Skin Region;Journal of Diabetes Research;2023-09-26
4. Non-invasive skin measurement methods and diagnostics for vitiligo: a systematic review;Frontiers in Medicine;2023-07-27
5. Classification of Vitiligo using CNN Autoencoder;2022 International Conference on Applied Artificial Intelligence and Computing (ICAAIC);2022-05-09