/HRNet-Semantic-Segmentation

High-resolution representation learning (HRNets) for Semantic Segmentation

Primary LanguagePythonOtherNOASSERTION

High-resolution networks (HRNets) for Semantic Segmentation

Branches

  • This is the implementation for PyTroch 0.4.1.
  • The HRNet + OCR version ia available here.
  • The PyTroch 1.1 version is available here.

News

  • HRNet + OCR + SegFix: Rank #1 (84.5) in Cityscapes leaderboard. OCR: object contextual represenations pdf. HRNet + OCR is reproduced here.

  • Thanks Google and UIUC researchers. A modified HRNet combined with semantic and instance multi-scale context achieves SOTA panoptic segmentation result on the Mapillary Vista challenge. See the paper.

  • Small HRNet models for Cityscapes segmentation. Superior to MobileNetV2Plus ....

  • Rank #1 (83.7) in Cityscapes leaderboard. HRNet combined with an extension of object context

  • Pytorch-v1.1 and the official Sync-BN supported. We have reproduced the cityscapes results on the new codebase. Please check the pytorch-v1.1 branch.

Introduction

This is the official code of high-resolution representations for Semantic Segmentation. We augment the HRNet with a very simple segmentation head shown in the figure below. We aggregate the output representations at four different resolutions, and then use a 1x1 convolutions to fuse these representations. The output representations is fed into the classifier. We evaluate our methods on three datasets, Cityscapes, PASCAL-Context and LIP.

Segmentation models

HRNetV2 Segmentation models are now available. All the results are reproduced by using this repo!!!

The models are initialized by the weights pretrained on the ImageNet. You can download the pretrained models from https://github.com/HRNet/HRNet-Image-Classification.

Big models

  1. Performance on the Cityscapes dataset. The models are trained and tested with the input size of 512x1024 and 1024x2048 respectively. If multi-scale testing is used, we adopt scales: 0.5,0.75,1.0,1.25,1.5,1.75.
model Train Set Test Set #Params GFLOPs OHEM Multi-scale Flip mIoU Link
HRNetV2-W48 Train Val 65.8M 696.2 No No No 80.9 OneDrive/BaiduYun(Access Code:tj7a)
HRNetV2-W48 Train Val 65.8M 696.2 Yes No No 81.2 OneDrive/BaiduYun(Access Code:794r)
HRNetV2-W48 Train Test 65.8M 696.2 No Yes Yes 80.5 OneDrive/BaiduYun(Access Code:tj7a)
HRNetV2-W48 Train Test 65.8M 696.2 Yes Yes Yes 81.1 OneDrive/BaiduYun(Access Code:794r)
HRNetV2-W48 TrainVal Test 65.8M 696.2 No Yes Yes 81.5 OneDrive/BaiduYun(Access Code:pbai)
HRNetV2-W48 TrainVal Test 65.8M 696.2 Yes Yes Yes 81.9 OneDrive/BaiduYun(Access Code:qett)
  1. Performance on the LIP dataset. The models are trained and tested with the input size of 473x473.
model #Params GFLOPs OHEM Multi-scale Flip mIoU Link
HRNetV2-W48 65.8M 74.3 No No Yes 56.04 OneDrive/BaiduYun(Access Code:mjw3)
  1. Performance on the PASCAL-Context dataset. The models are trained and tested with the input size of 480x480. If multi-scale testing is used, we adopt scales: 0.5,0.75,1.0,1.25,1.5,1.75,2.0 (the same as EncNet, DANet etc.).
model num classes #Params GFLOPs OHEM Multi-scale Flip mIoU Link
HRNetV2-W48 59 classes 65.8M 76.5 No Yes Yes 54.1 OneDrive/BaiduYun(Access Code:53fj)
HRNetV2-W48 60 classes 65.8M 76.5 No Yes Yes 48.3 OneDrive/BaiduYun(Access Code:9uf8)

Small models

The models are initialized by the weights pretrained on the ImageNet. You can download the pretrained models from https://github.com/HRNet/HRNet-Image-Classification.

Performance on the Cityscapes dataset. The models are trained and tested with the input size of 512x1024 and 1024x2048 respectively. The results of other small models are obtained from Structured Knowledge Distillation for Semantic Segmentation(https://arxiv.org/abs/1903.04197).

model Train Set Test Set #Params GFLOPs OHEM Multi-scale Flip Distillation mIoU Link
SQ Train Val - - No No No No 59.8
CRF-RNN Train Val - - No No No No 62.5
Dilation10 Train Val 140.8 - No No No No 67.1
ICNet Train Val - - No No No No 70.6
ResNet18(1.0) Train Val 15.2 477.6 No No No No 69.1
ResNet18(1.0) Train Val 15.2 477.6 No No No Yes 72.7
MD(Enhanced) Train Val 14.4 240.2 No No No No 67.3
MD(Enhanced) Train Val 14.4 240.2 No No No Yes 71.9
MobileNetV2Plus Train Val 8.3 320.9 No No No No 70.1
MobileNetV2Plus Train Val 8.3 320.9 No No No Yes 74.5
HRNetV2-W18-Small-v1 Train Val 1.5M 31.1 No No No No 70.3 OneDrive/BaiduYun(Access Code:63be)
HRNetV2-W18-Small-v2 Train Val 3.9M 71.6 No No No No 76.2 OneDrive/BaiduYun(Access Code:k23v)

Quick start

Install

  1. Install PyTorch=0.4.1 following the official instructions
  2. git clone https://github.com/HRNet/HRNet-Semantic-Segmentation $SEG_ROOT
  3. Install dependencies: pip install -r requirements.txt

If you want to train and evaluate our models on PASCAL-Context, you need to install details.

# PASCAL_CTX=/path/to/PASCAL-Context/
git clone https://github.com/zhanghang1989/detail-api.git $PASCAL_CTX
cd $PASCAL_CTX/PythonAPI
python setup.py install

Data preparation

You need to download the Cityscapes, LIP and PASCAL-Context datasets.

Your directory tree should be look like this:

$SEG_ROOT/data
├── cityscapes
│   ├── gtFine
│   │   ├── test
│   │   ├── train
│   │   └── val
│   └── leftImg8bit
│       ├── test
│       ├── train
│       └── val
├── lip
│   ├── TrainVal_images
│   │   ├── train_images
│   │   └── val_images
│   └── TrainVal_parsing_annotations
│       ├── train_segmentations
│       ├── train_segmentations_reversed
│       └── val_segmentations
├── pascal_ctx
│   ├── common
│   ├── PythonAPI
│   ├── res
│   └── VOCdevkit
│       └── VOC2010
├── list
│   ├── cityscapes
│   │   ├── test.lst
│   │   ├── trainval.lst
│   │   └── val.lst
│   ├── lip
│   │   ├── testvalList.txt
│   │   ├── trainList.txt
│   │   └── valList.txt

Train and test

Please specify the configuration file.

For example, train the HRNet-W48 on Cityscapes with a batch size of 12 on 4 GPUs:

python tools/train.py --cfg experiments/cityscapes/seg_hrnet_w48_train_512x1024_sgd_lr1e-2_wd5e-4_bs_12_epoch484.yaml

For example, evaluating our model on the Cityscapes validation set with multi-scale and flip testing:

python tools/test.py --cfg experiments/cityscapes/seg_hrnet_w48_train_512x1024_sgd_lr1e-2_wd5e-4_bs_12_epoch484.yaml \
                     TEST.MODEL_FILE hrnet_w48_cityscapes_cls19_1024x2048_trainset.pth \
                     TEST.SCALE_LIST 0.5,0.75,1.0,1.25,1.5,1.75 \
                     TEST.FLIP_TEST True

Evaluating our model on the Cityscapes test set with multi-scale and flip testing:

python tools/test.py --cfg experiments/cityscapes/seg_hrnet_w48_train_512x1024_sgd_lr1e-2_wd5e-4_bs_12_epoch484.yaml \
                     DATASET.TEST_SET list/cityscapes/test.lst \
                     TEST.MODEL_FILE hrnet_w48_cityscapes_cls19_1024x2048_trainset.pth \
                     TEST.SCALE_LIST 0.5,0.75,1.0,1.25,1.5,1.75 \
                     TEST.FLIP_TEST True

Evaluating our model on the PASCAL-Context validation set with multi-scale and flip testing:

python tools/test.py --cfg experiments/pascal_ctx/seg_hrnet_w48_cls59_480x480_sgd_lr4e-3_wd1e-4_bs_16_epoch200.yaml \
                     DATASET.TEST_SET testval \
                     TEST.MODEL_FILE hrnet_w48_pascal_context_cls59_480x480.pth \
                     TEST.SCALE_LIST 0.5,0.75,1.0,1.25,1.5,1.75,2.0 \
                     TEST.FLIP_TEST True

Evaluating our model on the LIP validation set with flip testing:

python tools/test.py --cfg experiments/lip/seg_hrnet_w48_473x473_sgd_lr7e-3_wd5e-4_bs_40_epoch150.yaml \
                     DATASET.TEST_SET list/lip/testvalList.txt \
                     TEST.MODEL_FILE hrnet_w48_lip_cls20_473x473.pth \
                     TEST.FLIP_TEST True \
                     TEST.NUM_SAMPLES 0

Other applications of HRNet

Citation

If you find this work or code is helpful in your research, please cite:

@inproceedings{SunXLW19,
  title={Deep High-Resolution Representation Learning for Human Pose Estimation},
  author={Ke Sun and Bin Xiao and Dong Liu and Jingdong Wang},
  booktitle={CVPR},
  year={2019}
}

@article{WangSCJDZLMTWLX19,
  title={Deep High-Resolution Representation Learning for Visual Recognition},
  author={Jingdong Wang and Ke Sun and Tianheng Cheng and 
          Borui Jiang and Chaorui Deng and Yang Zhao and Dong Liu and Yadong Mu and 
          Mingkui Tan and Xinggang Wang and Wenyu Liu and Bin Xiao},
  journal   = {CoRR},
  volume    = {abs/1908.07919},
  year={2019}
}

Reference

[1] 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. download

Acknowledgement

We adopt sync-bn implemented by InplaceABN.

We adopt data precosessing on the PASCAL-Context dataset, implemented by PASCAL API.