This repo provides the source code for our paper Transferring Rich Deep Features for Facial Beauty Prediction. This code has been tested on Ubuntu16 .04 with TensorFlow0.12.0, a newer version may bring you some trouble since TensorFlow's APIs always change after releasing a new version.
Our proposed two-stage method achieves state-of-the-art performance on SCUT-FBP and Female Facial Beauty Dataset (ECCV2010) v1.0 dataset. TransFBP also achieves very competitive performance on SCUT-FBP5500 dataset.
- Evaluation with the SCUT-FBP Dataset
Methods | PC |
---|---|
Combined Features+Gaussian Reg | 0.6482 |
CNN-based | 0.8187 |
Liu et al. | 0.6938 |
KFME | 0.7988 |
RegionScatNet | 0.83 |
PI-CNN | 0.87 |
TransFBP (Ours) | 0.8742 |
- Evaluation with the HotOrNot Dataset
Methods | PC |
---|---|
Eigenface | 0.180 |
Multiscale Model | 0.458 |
Auto Encoder | 0.437 |
TransFBP (Ours) | 0.468 |
- Evaluation with the SCUT-FBP5500 Dataset
Methods | PC |
---|---|
Geometric features + Gaussian Regression | 0.6738 |
Geometric features + SVR | 0.6668 |
64UniSample + SVR | 0.8065 |
AlexNet | 0.8298 |
ResNet18 | 0.8513 |
ResNeXt50 | 0.8777 |
TransFBP (Ours) | 0.8519 |
If you find the code or the experimental results useful in your research, please consider citing our paper as:
@article{xu2018transferring,
title={Transferring Rich Deep Features for Facial Beauty Prediction},
author={Xu, Lu and Xiang, Jinhai and Yuan, Xiaohui},
journal={arXiv preprint arXiv:1803.07253},
year={2018}
}