An Intelligent Model for Facial Skin Colour Detection

There is little research on the facial colour; for example, choice of cosmetics usually was focused on fashion or impulse purchasing. People never try to make right decision with facial colour. Meanwhile, facial colour can be also a method for health or disease prevention. This research puts forward...

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Main Authors: Chih-Huang Yen, Pin-Yuan Huang, Po-Kai Yang
Format: Article
Language:English
Published: Hindawi Limited 2020-01-01
Series:International Journal of Optics
Online Access:http://dx.doi.org/10.1155/2020/1519205
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spelling doaj-ff7e9b2879f5493d99e467465f970e822020-11-25T02:56:42ZengHindawi LimitedInternational Journal of Optics1687-93841687-93922020-01-01202010.1155/2020/15192051519205An Intelligent Model for Facial Skin Colour DetectionChih-Huang Yen0Pin-Yuan Huang1Po-Kai Yang2Minnan Normal University, Zhangzhou City, Fujian, ChinaMinnan Normal University, Zhangzhou City, Fujian, ChinaMinnan Normal University, Zhangzhou City, Fujian, ChinaThere is little research on the facial colour; for example, choice of cosmetics usually was focused on fashion or impulse purchasing. People never try to make right decision with facial colour. Meanwhile, facial colour can be also a method for health or disease prevention. This research puts forward one set of intelligent skin colour collection method based on human facial identification. Firstly, it adopts colour photos on the facial part and then implements facial position setting of the face in the image through FACE++ as the human facial identification result. Also, it finds out the human face collection skin colour point through facial features of the human face. The author created an SCE program to collect facial colour by each photo, and established a hypothesis that uses minima captured points assumption to calculate efficiently. Secondly, it implements assumption demonstration through the Taguchi method of quality improvement, which optimized six point skin acquisition point and uses average to calculate the representative skin colour on the facial part. It is completed through the Gaussian distribution standard difference and CIE 2000 colour difference formula and uses this related theory to construct the optimized program FaceRGB. This study can be popularized to cosmetics purchasing and expand to analysis of the facial group after big data are applied. The intelligent model can quickly and efficiently to capture skin colour; it will be the basic work for the future fashion application with big data.http://dx.doi.org/10.1155/2020/1519205
collection DOAJ
language English
format Article
sources DOAJ
author Chih-Huang Yen
Pin-Yuan Huang
Po-Kai Yang
spellingShingle Chih-Huang Yen
Pin-Yuan Huang
Po-Kai Yang
An Intelligent Model for Facial Skin Colour Detection
International Journal of Optics
author_facet Chih-Huang Yen
Pin-Yuan Huang
Po-Kai Yang
author_sort Chih-Huang Yen
title An Intelligent Model for Facial Skin Colour Detection
title_short An Intelligent Model for Facial Skin Colour Detection
title_full An Intelligent Model for Facial Skin Colour Detection
title_fullStr An Intelligent Model for Facial Skin Colour Detection
title_full_unstemmed An Intelligent Model for Facial Skin Colour Detection
title_sort intelligent model for facial skin colour detection
publisher Hindawi Limited
series International Journal of Optics
issn 1687-9384
1687-9392
publishDate 2020-01-01
description There is little research on the facial colour; for example, choice of cosmetics usually was focused on fashion or impulse purchasing. People never try to make right decision with facial colour. Meanwhile, facial colour can be also a method for health or disease prevention. This research puts forward one set of intelligent skin colour collection method based on human facial identification. Firstly, it adopts colour photos on the facial part and then implements facial position setting of the face in the image through FACE++ as the human facial identification result. Also, it finds out the human face collection skin colour point through facial features of the human face. The author created an SCE program to collect facial colour by each photo, and established a hypothesis that uses minima captured points assumption to calculate efficiently. Secondly, it implements assumption demonstration through the Taguchi method of quality improvement, which optimized six point skin acquisition point and uses average to calculate the representative skin colour on the facial part. It is completed through the Gaussian distribution standard difference and CIE 2000 colour difference formula and uses this related theory to construct the optimized program FaceRGB. This study can be popularized to cosmetics purchasing and expand to analysis of the facial group after big data are applied. The intelligent model can quickly and efficiently to capture skin colour; it will be the basic work for the future fashion application with big data.
url http://dx.doi.org/10.1155/2020/1519205
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