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P-STMO: Pre-Trained Spatial Temporal Many-to-One Model for 3D Human Pose Estimation [ECCV2022]

The PyTorch implementation for "P-STMO: Pre-Trained Spatial Temporal Many-to-One Model for 3D Human Pose Estimation" .

Qualitative and quantitative results

Method MPJPE(mm) FPS
PoseFormer 44.3 1952
Anatomy3D 44.1 429
P-STMO-S 43.0 3504
P-STMO 42.8 3040

Dependencies

Make sure you have the following dependencies installed:

  • PyTorch >= 0.4.0
  • NumPy
  • Matplotlib=3.1.0
  • FFmpeg (if you want to export MP4 videos)
  • ImageMagick (if you want to export GIFs)
  • Matlab

Dataset

Our model is evaluated on Human3.6M and MPI-INF-3DHP datasets.

Human3.6M

We set up the Human3.6M dataset in the same way as VideoPose3D. You can download the processed data from here. data_2d_h36m_gt.npz is the ground truth of 2D keypoints. data_2d_h36m_cpn_ft_h36m_dbb.npz is the 2D keypoints obatined by CPN. data_3d_h36m.npz is the ground truth of 3D human joints. Put them in the ./dataset directory.

MPI-INF-3DHP

We set up the MPI-INF-3DHP dataset by ourselves. We convert the original data in .mat format to the processed data in .npz format by using data_to_npz_3dhp.py and data_to_npz_3dhp_test.py. You can download the processed data from here. Put them in the ./dataset directory. In addition, if you want to get the PCK and AUC metrics on this dataset, you also need to download the original dataset from the official website. After downloading the dataset, you can place the TS1 to TS6 folders in the test set under the ./3dhp_test folder in this repo.

Evaluating our models

You can download our pre-trained models from here. Put them in the ./checkpoint directory.

Human 3.6M

To evaluate our P-STMO-S model on the ground truth of 2D keypoints, please run:

python run.py -k gt -f 243 -tds 2 --reload 1 --previous_dir checkpoint/PSTMOS_no_refine_15_2936_h36m_gt.pth

The following models are trained using the 2D keypoints obtained by CPN as inputs.

To evaluate our P-STMO-S model, please run:

python run.py -f 243 -tds 2 --reload 1 --previous_dir checkpoint/PSTMOS_no_refine_28_4306_h36m_cpn.pth

To evaluate our P-STMO model, please run:

python run.py -f 243 -tds 2 --reload 1 --layers 4 --previous_dir checkpoint/PSTMO_no_refine_11_4288_h36m_cpn.pth

To evaluate our P-STMO model using the refine module proposed in ST-GCN, please run:

python run.py -f 243 -tds 2 --reload 1 --refine_reload 1 --refine --layers 4 --previous_dir checkpoint/PSTMO_no_refine_6_4215_h36m_cpn.pth --previous_refine_name checkpoint/PSTMO_refine_6_4215_h36m_cpn.pth

MPI-INF-3DHP

To evaluate our P-STMO-S model on MPI-INF-3DHP dataset, please run:

python run_3dhp.py -f 81 --reload 1 --previous_dir checkpoint/PSTMOS_no_refine_50_3203_3dhp.pth

After that, the 3D pose predictions are saved as ./checkpoint/inference_data.mat. These results can be evaluated using Matlab by running ./3dhp_test/test_util/mpii_test_predictions_py.m. The final evaluation results can be found in ./3dhp_test/mpii_3dhp_evaluation_sequencewise.csv, which is obtained by averaging sequencewise evaluation results over the number of frames. For visualization, you can use ./common/draw_3d_keypoint_3dhp.py and ./common/draw_2d_keypoint_3dhp.py.

Training from scratch

Human 3.6M

For the pre-training stage, our model aims to solve the masked pose modeling task. Please run:

python run.py -f 243 -b 160 --MAE --train 1 --layers 3 -tds 2 -tmr 0.8 -smn 2 --lr 0.0001 -lrd 0.97

Different models use different configurations as follows.

Model -k --layers -tmr -smn
P-STMO-S (GT) gt 3 0.8 7
P-STMO-S default 3 0.8 2
P-STMO default 4 0.6 3

For the fine-tuning stage, the pre-trained encoder is loaded to our STMO model and fine-tuned. Please run:

python run.py -f 243 -b 160 --train 1 --layers 3 -tds 2 --lr 0.0007 -lrd 0.97 --MAE_reload 1 --previous_dir your_best_model_in_stage_I.pth

Different models use different configurations as follows.

Model -k --layers --lr
P-STMO-S (GT) gt 3 0.001
P-STMO-S default 3 0.0007
P-STMO default 4 0.001

MPI-INF-3DHP

We only train and evaluate our P-STMO-S model on MPI-INF-3DHP dataset using the ground truth of 2D keypoints as inputs.

For the pre-training stage, please run:

python run_3dhp.py -f 81 -b 160 --MAE --train 1 --layers 3 -tmr 0.7 -smn 2 --lr 0.0001 -lrd 0.97

For the fine-tuning stage, please run:

python run_3dhp.py -f 81 -b 160 --train 1 --layers 3 --lr 0.0007 -lrd 0.97 --MAE_reload 1 --previous_dir your_best_model_in_stage_I.pth

Testing on in-the-wild videos

To test our model on custom videos, you can use an off-the-shelf 2D keypoint detector (such as AlphaPose) to yield 2D poses from images and use our model to yield 3D poses. The 2D keypoint detectors are trained on COCO dataset, which defines the order of human joints in a different way from Human3.6M. Thus, our model needs to be re-trained to be compatible with the existing detectors. Our model takes 2D keypoints in COCO format, which can be downloaded from here, as inputs and outputs 3D joint positions in Human3.6M format.

You can use our pre-trained model PSTMOS_no_refine_48_5137_in_the_wild.pth or train our model from scratch using the following commands.

For the pre-training stage, please run:

python run_in_the_wild.py -k detectron_pt_coco -f 243 -b 160 --MAE --train 1 --layers 3 -tds 2 -tmr 0.8 -smn 2 --lr 0.0001 -lrd 0.97

For the fine-tuning stage, please run:

python run_in_the_wild.py -k detectron_pt_coco -f 243 -b 160 --train 1 --layers 3 -tds 2 --lr 0.0007 -lrd 0.97 --MAE_reload 1 --previous_dir your_best_model_in_stage_I.pth

After that, you can evaluate our models on in-the-wild videos using this repo. Please follow the below instructions.

  1. Follow their README.md to set up the code.
  2. Put the checkpoint in the checkpoint/ folder of their repo.
  3. Put the model/ folder and in_the_wild/videopose_PSTMO.py in the root path of their repo.
  4. Put in_the_wild/arguments.py, in_the_wild/generators.py, and in_the_wild/inference_3d.py in the common/ folder of their repo.
  5. Run videopose_PSTMO.py!

Note that the frame rate of Human3.6M dataset is 50 fps, while most of the videos are at 25 or 30 fps. So we set tds=2 during training and tds=1 during testing.

Citation

If you find this repo useful, please consider citing our paper:

@inproceedings{shan2022p,
  title={P-stmo: Pre-trained spatial temporal many-to-one model for 3d human pose estimation},
  author={Shan, Wenkang and Liu, Zhenhua and Zhang, Xinfeng and Wang, Shanshe and Ma, Siwei and Gao, Wen},
  booktitle={Computer Vision--ECCV 2022: 17th European Conference, Tel Aviv, Israel, October 23--27, 2022, Proceedings, Part V},
  pages={461--478},
  year={2022},
  organization={Springer}
}

Acknowledgement

Our code refers to the following repositories.

We thank the authors for releasing their codes.

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[ECCV2022] The PyTorch implementation for "P-STMO: Pre-Trained Spatial Temporal Many-to-One Model for 3D Human Pose Estimation"

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