Deep High-Resolution Representation Learning for Visual Recognition

  • Jingdong Wang ,
  • Ke Sun ,
  • Tianheng Cheng ,
  • Borui Jiang ,
  • Chaorui Deng ,
  • Yang Zhao ,
  • Dong Liu ,
  • Yadong Mu ,
  • Mingkui Tan ,
  • Xinggang Wang ,
  • Wenyu Liu ,
  • Bin Xiao

IEEE Transactions on Pattern Analysis and Machine Intelligence | , Vol 43(10): pp. 3349-3364

Publication

High-resolution representations are essential for position-sensitive vision problems, such as human pose estimation, semantic segmentation, and object detection. Existing state-of-the-art frameworks first encode the input image as a low-resolution representation through a subnetwork that is formed by connecting high-to-low resolution convolutions in series (e.g., ResNet, VGGNet), and then recover the high-resolution representation from the encoded low-resolution representation. Instead, our proposed network, named as High-Resolution Network (HRNet), maintains high-resolution representations through the whole process. There are two key characteristics: (i) Connect the high-to-low resolution convolution streams in parallel and (ii) repeatedly exchange the information across resolutions. The benefit is that the resulting representation is semantically richer and spatially more precise. We show the superiority of the proposed HRNet in a wide range of applications, including human pose estimation, semantic segmentation, and object detection, suggesting that the HRNet is a stronger backbone for computer vision problems. All the codes are available at https://github.com/HRNet (opens in new tab).

论文与出版物下载

High-resolution networks (HRNets) for Semantic Segmentation

9 3 月, 2021

This is an official implementation of semantic segmentation for our TPAMI paper "Deep High-Resolution Representation Learning for Visual Recognition".