Model can predict how humans perceive attractiveness in different faces with high accuracy
A new study has found that a computer model can predict how humans perceive attractiveness in different faces with high accuracy. The model was developed by researchers at the University of Toronto and is based on a deep neural network that was trained on a large dataset of faces.
The researchers used the model to predict how attractive a group of human participants would find a set of faces. They found that the model was able to predict the participants' ratings with a high degree of accuracy, suggesting that the model is able to capture the complex factors that influence how humans perceive attractiveness.
The researchers believe that the model could be used to help understand the factors that influence how humans perceive attractiveness, and could be used to develop new approaches to facial recognition and analysis.
"Our model provides a powerful tool for investigating the factors that influence how humans perceive attractiveness in faces," said lead author Dr. Kang Lee. "We hope that our work will lead to new insights into the nature of facial attractiveness and help us to develop new approaches to facial recognition and analysis."
The study, which was published in the journal Scientific Reports, is part of a growing body of research that is using machine learning and artificial intelligence to better understand human perception and behavior. As these technologies continue to advance, they are likely to play an increasingly important role in fields such as psychology, neuroscience, and social science.
https://www.lifetechnology.com/blogs/life-technology-technology-news/model-can-predict-how-humans-perceive-attractiveness-in-different-faces-with-high-accuracy
Buy SuperforceX™