ICCV2013-Hybrid Deep Learning for Face Verification
ICCV2013-Hybrid Deep Learning for Face Verification
用深度學習做面部特征點檢測最早的論文
This paper proposes a hybrid convolutional network (ConvNet)-Restricted Boltzmann Machine (RBM) model for
face verification in wild conditions. A key contribution of this work is to directly learn relational visual features, which indicate identity similarities, from raw pixels of face pairs with a hybrid deep network. The deep ConvNets in our model mimic the primary visual cortex to jointly extract local relational visual features from two face images compared with the learned filter pairs. These relational features are further processed through multiple layers to extract high-level and global features. Multiple groups of ConvNets are constructed in order to achieve robustness and characterize face similarities from different aspects. The top-layer RBM performs inference from complementary high-level features extracted from different ConvNet groups with a two-level average pooling hierarchy. The entire hybrid deep network is jointly fine-tuned to optimize for the task of face verification. Our model achieves competitive face verification performance on the LFW dataset.
總結
以上是生活随笔為你收集整理的ICCV2013-Hybrid Deep Learning for Face Verification的全部內容,希望文章能夠幫你解決所遇到的問題。
- 上一篇: 专访DeepID发明者孙祎:关于深度学习
- 下一篇: 10 种机器学习算法的要点(附 Pyth