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Pose_3D

Exploiting temporal information for 3D pose estimation

This code is released for the paper "Exploiting temporal information for 3D human pose estimation", accepted for ECCV 2018. https://arxiv.org/pdf/1711.08585.pdf

Watch our demos:

  1. https://www.youtube.com/watch?v=Cc2ficlalXE&feature=youtu.be
  2. https://www.youtube.com/watch?v=jbJNb0aoLYY&feature=youtu.be
  3. https://www.youtube.com/watch?v=MVeaen5vGxQ

There is a reimplimentation of our code in gluon/mxnet by Chuankang Li:

  1. https://github.com/lck1201/seq2seq-3Dpose

Please cite our work if you use this code.

Dependencies

Training from the scratch

Due to a bug in the evaluation section of our code (see issue #3), our results should be approximately 58.5 mm for protocol 1 and 44 mm for protocol 2 (not 51.9mm and 42.0mm as reported in our paper). We sincerely apologize for our mistake in the code and thank Lin Jiahao (jiahao.lin@u.nus.edu) for letting us know of the bug. Below is the result on Human3.6M:

Actual_Result

To train from the scratch use the command:

python temporal_3d.py --use_sh --camera_frame --dropout 0.5

Use the flag --use_sh if you want to use the stacked_hourglass detections. Otherwise omit the flag (for ground truth 2D).

Pre-trained model

You can download a pre-trained model for testing, visualization and fine-tuning from: https://drive.google.com/file/d/1j2jpwDpfj5NNx8n1DVqCIAESNTDZ2BDf/view?usp=sharing

Download and untar the file. Copy the contents in Pose_3D/temporal_3d_release/trained_model/All/dropout_0.5/epochs_100/adam/lr_1e-05/linear_size1024/batch_size_32/use_stacked_hourglass/seqlen_5/

Evaluate the model

To evaluate the pre-trained model call:

python temporal_3d.py --use_sh --camera_frame --dropout 0.5 --load 1798202 --evaluate

In this case, 1798202 passed to the load flag is the global iteration number. Change it if you want to test any of your own trained models.

Fine-tune an existing model

Do not use the evaluate flag if you want to fine-tune an existing model.

python temporal_3d.py --use_sh --camera_frame --dropout 0.5 --load 1798202

Create a movie from a set of images and 2D predictions

We provided a sample set of frames and 2D detections (from stacked-hourglass detector) in the directory Pose_3D/temporal_3d_release/fed/.

If you want to use other detection and images, set the flags --data_2d_path and --image_dir appropriately

To create a movie run the command:

python create_movie.py --use_sh --camera_frame

This will produce a set of visualizations this:

Visualization example

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