The relevance and accuracy of an AI algorithm‐based descriptor on 23 facial attributes in a diverse female US population

Author:

Yu Zhi1,Flament Frederic2ORCID,Jiang Ruowei1,Houghton Jeff1,Kroely Camille3,Cabut Nathalie3,Haykal Diala4ORCID,Sehgal Cassidy5,Jablonski Nina G6,Jean Aurelie7,Aarabi Parham1

Affiliation:

1. Modiface – A L'Oréal Group Company Toronto Canada

2. L'Oréal Research and Innovation Clichy France

3. L'Oréal CDO – Digital Service Factory Clichy France

4. Centre Médical Laser Esthétique Palaiseau France

5. L'Oréal Research and Innovation Clark USA

6. Department of Anthropology The Pennsylvania State University, University Park Pennsylvania USA

7. Hult International Business School Cambridge USA

Abstract

AbstractBackgroundThe response of AI in situations that mimic real life scenarios is poorly explored in populations of high diversity.ObjectiveTo assess the accuracy and validate the relevance of an automated, algorithm‐based analysis geared toward facial attributes devoted to the adornment routines of women.MethodsIn a cross‐sectional study, two diversified groups presenting similar distributions such as age, ancestry, skin phototype, and geographical location was created from the selfie images of 1041 female in a US population. 521 images were analyzed as part of a new training dataset aimed to improve the original algorithm and 520 were aimed to validate the performance of the AI. From a total 23 facial attributes (16 continuous and 7 categorical), all images were analyzed by 24 make‐up experts and by the automated descriptor tool.ResultsFor all facial attributes, the new and the original automated tool both surpassed the grading of the experts on a diverse population of women. For the 16 continuous attributes, the gradings obtained by the new system strongly correlated with the assessment made by make‐up experts (r ≥ 0.80; p < 0.0001) and supported by a low error rate. For the seven categorical attributes, the overall accuracy of the AI‐facial descriptor was improved via enrichment of the training dataset. However, some weaker performance in spotting specific facial attributes were noted.ConclusionIn conclusion, the AI‐automatic facial descriptor tool was deemed accurate for analysis of facial attributes for diverse women although some skin complexion, eye color, and hair features required some further finetuning.

Publisher

Wiley

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