This paper draws on a substantial body of theoretical and empirical research on beauty filter-based appealing self-presentation and 3D facial avatar makeup simulation tools, emotion recognition and visual sentiment algorithms, and 3D human body and image appearance modeling for augmented reality-based virtual try-on and hyper-personalized beauty experiences. In this research, prior findings were cumulated indicating that 3D augmented reality try-on and biometric emotional artificial intelligence technologies enable physical condition detection and monitoring, beauty filter-based appealing self-presentation, idealized beauty representations and images, perceived facial attractiveness, and social media-related body dissatisfaction. Study screening tools, reference management software, and machine learning classifiers leveraged include CADIMA, JBI SUMARI, Litstream, METAGEAR package for R, Nested Knowledge, and SWIFT-Active Screener. The case studies cover Everlook, Wondershare Filmora, AlterCam, Sandpiper Studio Beauty & Filter Camera, PhotoDirector artificial intelligence beauty and face filter app, FaceApp, FixThePhoto, YouCam Perfect face editing tools, BeautyPlus, and Facetune.
Beauty Filter-based Appealing Self-Presentation and 3D Facial Avatar Makeup Simulation Tools, Emotion Recognition and Visual Sentiment Algorithms, and 3D Human Body and Image Appearance Modelingfor Augmented Reality-based Virtual Try-on and Hyper-Personalized Beauty Experiences
D. PriviteraSecondo
;
2025-01-01
Abstract
This paper draws on a substantial body of theoretical and empirical research on beauty filter-based appealing self-presentation and 3D facial avatar makeup simulation tools, emotion recognition and visual sentiment algorithms, and 3D human body and image appearance modeling for augmented reality-based virtual try-on and hyper-personalized beauty experiences. In this research, prior findings were cumulated indicating that 3D augmented reality try-on and biometric emotional artificial intelligence technologies enable physical condition detection and monitoring, beauty filter-based appealing self-presentation, idealized beauty representations and images, perceived facial attractiveness, and social media-related body dissatisfaction. Study screening tools, reference management software, and machine learning classifiers leveraged include CADIMA, JBI SUMARI, Litstream, METAGEAR package for R, Nested Knowledge, and SWIFT-Active Screener. The case studies cover Everlook, Wondershare Filmora, AlterCam, Sandpiper Studio Beauty & Filter Camera, PhotoDirector artificial intelligence beauty and face filter app, FaceApp, FixThePhoto, YouCam Perfect face editing tools, BeautyPlus, and Facetune.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.


