April 18, 2024, 4:44 a.m. | Nicolas Chahine, Marcos V. Conde, Daniela Carfora, Gabriel Pacianotto, Benoit Pochon, Sira Ferradans, Radu Timofte

cs.CV updates on arXiv.org arxiv.org

arXiv:2404.11159v1 Announce Type: new
Abstract: This paper reviews the NTIRE 2024 Portrait Quality Assessment Challenge, highlighting the proposed solutions and results. This challenge aims to obtain an efficient deep neural network capable of estimating the perceptual quality of real portrait photos. The methods must generalize to diverse scenes and diverse lighting conditions (indoor, outdoor, low-light), movement, blur, and other challenging conditions. In the challenge, 140 participants registered, and 35 submitted results during the challenge period. The performance of the top …

abstract arxiv assessment challenge cs.cv deep neural network diverse highlighting lighting network neural network paper photos quality results reviews solutions survey type

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