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Facial beauty prediction fusing transfer learning and broad learning system

About

Facial beauty prediction (FBP) is an important and challenging problem in the fields of computer vision and machine learning. Not only it is easily prone to overfitting due to the lack of large-scale and effective data, but also difficult to quickly build robust and effective facial beauty evaluation models because of the variability of facial appearance and the complexity of human perception. Transfer Learning can be able to reduce the dependence on large amounts of data as well as avoid overfitting problems. Broad learning system (BLS) can be capable of quickly completing models building and training. For this purpose, Transfer Learning was fused with BLS for FBP in this paper. Firstly, a feature extractor is constructed by way of CNNs models based on transfer learning for facial feature extraction, in which EfficientNets are used in this paper, and the fused features of facial beauty extracted are transferred to BLS for FBP, called E-BLS. Secondly, on the basis of E-BLS, a connection layer is designed to connect the feature extractor and BLS, called ER-BLS. Finally, experimental results show that, compared with the previous BLS and CNNs methods existed, the accuracy of FBP was improved by E-BLS and ER-BLS, demonstrating the effectiveness and superiority of the method presented, which can also be widely used in pattern recognition, object detection and image classification.

Junying Gan, Xiaoshan Xie, Yikui Zhai, Guohui He, Chaoyun Mai, Heng Luo• 2026

Related benchmarks

TaskDatasetResultRank
Facial Beauty PredictionLSAFBD (test)
Testing Accuracy62.13
21
Facial Beauty PredictionSCUT-FBP
PCC0.9303
18
Facial Beauty PredictionSCUT-FBP5500 (test)
Accuracy (AC)74.69
11
Facial Beauty PredictionLSAFBD (train)
Training Accuracy72.34
11
Facial Beauty PredictionSCUT-FBP5500 (train)
Training Accuracy76.76
11
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