High-Resolution Representation Learning for Semantic Segmentation |
Ke Sun     Yang Zhao     Borui Jiang     Tianheng Cheng     Bin Xiao     Dong Liu     Yadong Mu     Xinggang Wang     Wenyu Liu     Jingdong Wang |
We extend the high-resolution representation (HRNet) [1] by augmenting the high-resolution representation by aggregating the (upsampled) representations from all the parallel convolutions, leading to stronger representations. This proposed approach achieves superior results to existing methods, including U-Net, PSPNet, ASPP and so on. |
The code and models are publicly available at GitHub. |
paper |
We released the training and testing code and the pretrained model at GitHub |
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Pose estimation | Semantic segmentation | Face alignment | Image classification | Object detection | |
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[1]  | Deep High-Resolution Representation Learning for Human Pose Estimation. Ke Sun, Bin Xiao, Dong Liu, and Jingdong Wang. CVPR 2019. |