AMBIENTUM BIOETHICA BIOLOGIA CHEMIA DIGITALIA DRAMATICA EDUCATIO ARTIS GYMNAST. ENGINEERING EPHEMERIDES EUROPAEA GEOGRAPHIA GEOLOGIA HISTORIA HISTORIA ARTIUM INFORMATICA IURISPRUDENTIA MATHEMATICA MUSICA NEGOTIA OECONOMICA PHILOLOGIA PHILOSOPHIA PHYSICA POLITICA PSYCHOLOGIA-PAEDAGOGIA SOCIOLOGIA THEOLOGIA CATHOLICA THEOLOGIA CATHOLICA LATIN THEOLOGIA GR.-CATH. VARAD THEOLOGIA ORTHODOXA THEOLOGIA REF. TRANSYLVAN
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STUDIA INFORMATICA - Ediţia nr.2 din 2021 | |||||||
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AUTOMATIC FACE SHAPE CLASSIFICATION VIA FACIAL LANDMARK MEASUREMENTS. Autori: ALEXANDRU-ION MARINESCU. |
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Rezumat: DOI: 10.24193/subbi.2021.2.05 Published Online: 2021-12-20 Published Print: 2021-12-30 pp. 69-78 VIEW PDF FULL PDF This paper tackles the sensitive subject of face shape identification via near neutral-pose 2D images of human subjects. The possibility of extending to 3D facial models is also proposed, and would alleviate the need for the neutral stance. Accurate face shape classification serves as a vital building block of any hairstyle and eye-wear recommender system. Our approach is based on extracting relevant facial landmark measurements and passing them through a naive Bayes classifier unit in order to yield the final decision. The literature on this subject is particularly scarce owing to the very subjective nature of human face shape classification. We wish to contribute a robust and automatic system that performs this task and highlight future development directions on this matter. Keywords and phrases: artificial intelligence, computer vision, naive Bayes, face shape, facial landmarks. 2010 Mathematics Subject Classification. 68T45. 1998 CR Categories and Descriptors. I.2.10 Computing Methodologies [Artificial Intelligence]: Vision and Scene Understanding – Modeling and recovery of physical attributes. |
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