Digital Image Quality Prediction System
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http://hdl.handle.net/2183/26500
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Digital Image Quality Prediction SystemData
2020-08-19Cita bibliográfica
Rodriguez-Fernandez, N.; Santos, I.; Torrente-Patiño, A.; Carballal, A. Digital Image Quality Prediction System. Proceedings 2020, 54, 15.
Resumo
[Abstract]
“A picture is worth a thousand words.” Based on this well-known adage, we can say that images are important in our society, and increasingly so. Currently, the Internet is the main channel of socialization and marketing, where we seek to communicate in the most efficient way possible. People receive a large amount of information daily and that is where the need to attract attention with quality content and good presentation arises. Social networks, for example, are becoming more visual every day. Only on Facebook can you see that the success of a publication increases up to 180% if it is accompanied by an image. That is why it is not surprising that platforms such as Pinterest and Instagram have grown so much, and have positioned themselves thanks to their power to communicate with images. In a world where more and more relationships and transactions are made through computer applications, many decisions are made based on the quality, aesthetic value or impact of digital images. In the present work, a quality prediction system for digital images was developed, trained from the quality perception of a group of humans.
Palabras chave
Machine learning
Genetic algorithm
Quality
Image
Prediction
Dataset
Genetic algorithm
Quality
Image
Prediction
Dataset
Versión do editor
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Atribución 4.0 Internacional
ISSN
2504-3900