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SCUT-FBP: A Benchmark Dataset for Facial Beauty Perception

机译:SCUT-FBP:面部美容知觉基准数据集

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In this paper, a novel face dataset with attractiveness ratings, namely the SCUT-FBP dataset, is developed for automatic facial beauty perception. This dataset provides a benchmark to evaluate the performance of different methods for facial attractiveness prediction, including the state-of-the-art deep learning method. The SCUT-FBP dataset contains face portraits of 500 Asian female subjects with attractiveness ratings, all of which have been verified in terms of rating distribution, standard deviation, consistency, and self-consistency. Benchmark evaluations for facial attractiveness prediction were performed with different combinations of facial geometrical features and texture features using classical statistical learning methods and the deep learning method. The best Pearson correlation 0.8187 was achieved by the CNN model. The results of the experiments indicate that the SCUT-FBP dataset provides a reliable benchmark for facial beauty perception.
机译:在本文中,开发了一种具有吸引力评级,即Scut-FBP数据集的新型面部数据集是为自动面部美容感知的。该数据集提供了基准,以评估面部吸引力预测的不同方法的性能,包括最先进的深度学习方法。 Scut-FBP数据集包含具有吸引力评级的500个亚洲女性受试者的面部肖像,所有这些都是在评级分布,标准偏差,一致性和自我一致性方面进行了验证的。使用经典统计学习方法和深度学习方法,以不同组合的面部几何特征和纹理特征的不同组合进行面部吸引力预测的基准评估。通过CNN模型实现了最佳的Pearson相关0.8187。实验结果表明,SCUT-FBP数据集提供了面部美容感知的可靠基准。

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