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Fine-tuned Domain-adapted Infant Pose (FiDIP)

Codes and experiments for the following paper:

Xiaofei Huang, Nihang Fu, Shuangjun Liu, Sarah Ostadabbas, “Invariant representation learning for infant pose estimation withsmall data,” in IEEE International Conference on Automatic Face and Gesture Recognition (FG), Dec. 2021

Contact:

Xiaofei Huang

Sarah Ostadabbas

Table of Contents

Introduction

This is an official pytorch implementation of Invariant Representation Learning for Infant Pose Estimation with Small Data. This work proposes a fine-tuned domain-adapted infant pose (FiDIP) estimation model, that transfers the knowledge of adult poses into estimating infant pose with the supervision of a domain adaptation technique on our released synthetic and real infant pose (SyRIP) dataset. Integrated with pose estimation backbone networks with varying complexity, FiDIP performs consistently better than the fine-tuned versions of those models. One of our best infant pose estimation performers on the state-of-the-art DarkPose model shows mean average precision (mAP) of 93.6. And the implementation of synthetic infant data generation is located under the root path.

Main Results

Performance comparison of three SOTA pose estimation models (SimpleBaseline, DarkPose, Pose-MobileNet) fine-tuned on MINI-RGBD, SyRIP-syn (synthesized data only) and SyRIP whole set and tested on SyRIP Test100.

Train Set Method Backbone Input size AP AP50 AP75 AR AR50 AR75
MINI-RGBD SimpleBaseline ResNet-50 384x288 69.2 95.8 78.0 72.4 97.0 81.0
SyRIP-syn SimpleBaseline ResNet-50 384x288 85.3 97.1 91.8 87.4 98.0 93.0
SyRIP SimpleBaseline ResNet-50 384x288 90.1 98.5 97.2 91.6 99.0 98.0
MINI-RGBD DrakPose HRNet-W48 384x288 85.2 98.6 95.3 87.0 99.0 96..0
SyRIP-syn DrakPose HRNet-W48 384x288 91.4 98.5 98.5 92.7 99.0 99.0
SyRIP DrakPose HRNet-W48 384x288 92.7 98.5 98.5 93.9 99.0 99.0
MINI-RGBD Pose-MobileNet MobileNetV2 224x224 12.3 38.1 3.8 21.6 52.0 14.0
SyRIP-syn Pose-MobileNet MobileNetV2 224x224 60.3 91.1 62.7 68.4 95.0 72.0
SyRIP Pose-MobileNet MobileNetV2 224x224 78.9 97.2 90.6 84.2 98.0 94.0

Generality of our FiDIP method to three models on the SyRIP Test100.

Method Backbone Input size # Params GFLOPs AP AP50 AP75 AR AR50 AR75
SimpleBaseline ResNet-50 384x288 32.42M 20.23 82.4 98.9 92.2 83.8 99.0 93.0
SimpleBaseline + Finetune ResNet-50 384x288 32.42M 20.23 90.1 98.5 97.2 91.6 99.0 98.0
SimpleBaseline + FiDIP ResNet-50 384x288 32.42M 20.23 91.1 98.5 98.5 92.6 99.0 99.0
DarkPose HRNet-W48 384x288 60.65M 32.88 88.5 98.5 98.5 90.0 99.0 99.0
DarkPose + Finetune HRNet-W48 384x288 60.65M 32.88 92.7 98.5 98.5 93.9 99.0 99.0
DarkPose + FiDIP HRNet-W48 384x288 60.65M 32.88 93.6 98.5 98.5 94.6 99.0 99.0
Pose-MobileNet MobileNetV2 224x224 3.91M 0.46 46.5 85.7 45.6 56.2 89.0 59.0
Pose-MobileNet + Finetune MobileNetV2 224x224 3.91M 0.46 78.9 97.2 90.6 84.2 98.0 94.0
Pose-MobileNet + FiDIP MobileNetV2 224x224 3.91M 0.46 79.2 99.0 89.4 84.1 99.0 92.0

Environment

The code is developed using python 3.6 on Ubuntu 18.04. NVIDIA GPUs are needed. The code is developed and tested using one NVIDIA TITAN Xp GPU card. Other platforms or GPU cards are not fully tested.

Quick Start

Installation

  1. Install pytorch = v1.7.0 with cuda 10.1 following official instruction.

  2. Clone this repo, and we'll call the directory that you cloned as ${POSE_ROOT} and get the following directory.

    ${POSE_ROOT}
    ├── data
    ├── experiments
    ├── lib
    ├── log
    ├── models
    ├── output
    ├── tools
    ├── README.md
    ├── requirements.txt
    └── syn_generation
    
    
  3. Install dependencies:

    pip install -r requirements.txt
    
  4. Make libs:

    cd ${POSE_ROOT}/lib
    make
    
  5. Install COCOAPI

Download pretrained models

(1) download DarkPose pretrained models from TGA_models. (2) download our FiDIP pretrained model from FiDIP_models. Please download them under ${POSE_ROOT}/models/pytorch, and make them look like this:

${POSE_ROOT}
 `-- models
     |-- hrnet_fidip.pth
     |-- mobile_fidip.pth
     |-- coco
        `-- posemobile.pth

Data preparation

For SyRIP data, please download from SyRIP dataset. Download and extract them under {POSE_ROOT}/data, and make them look like this:

${POSE_ROOT}
|-- data
`-- |-- syrip
    `-- |-- annotations
        |   |-- person_keypoints_train_pre_infant.json
        |   |-- person_keypoints_train_infant.json   
        |   `-- person_keypoints_validate_infant.json
        `-- images
            |-- train_pre_infant
            |   |-- train00001.jpg
            |   |-- train00002.jpg
            |   |-- train00003.jpg
            |   |-- ... 
            |-- train_infant
            |   |-- train00001.jpg
            |   |-- train00002.jpg
            |   |-- train00003.jpg
            |   |-- ...  
            |   |-- train10001.jpg
            |   |-- train10002.jpg
            |   |-- train10003.jpg
            |   |-- ...  
            `-- validate_infant
                |-- test0.jpg
                |-- test1.jpg
                |-- test2.jpg
                |-- ... 

Note: our train_pre_infant dataset with only real/synthetic labels consists of 1904 samples from COCO Val2017 dataset and 2000 synthetic adult images from SURREAL dataset. If you need it to train model, please contact us. Or you can create your own train_pre_infant dataset.

Test on SyRIP validate dataset using FiDIP pretrained models

python tools/test_adaptive_model.py \
    --cfg experiments/coco/hrnet/w48_384x288_adam_lr1e-3_infant.yaml \
    TEST.MODEL_FILE models/hrnet_fidip.pth TEST.USE_GT_BBOX True

Training on SyRIP dataset

python tools/train_adaptive_model_hrnet.py \
    --cfg experiments/coco/hrnet/w48_384x288_adam_lr1e-3_infant.yaml

Synthetic Infant Data Generation

Please follow the README.md in the folder syn_generation.

Citation

If you use our code or models in your research, please cite with:

@inproceedings{huang2021infant,
  title={Invariant Representation Learning for Infant Pose Estimation with Small Data},
  author={Huang, Xiaofei and Fu, Nihang and Liu, Shuangjun and Ostadabbas, Sarah},
  booktitle={IEEE International Conference on Automatic Face and Gesture Recognition (FG), 2021},
  month     = {December},
  year      = {2021}
}

Acknowledgement

Thanks for the open-source DarkPose

Thanks for the SURREAL dataset

License

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Invariant representation learning for infant pose estimation with small data (FG2021)

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