π₯ Please remember to β this repo if you find it useful and cite our work if you end up using it in your work! π₯
π₯ If you have any questions or concerns, please create an issue π! π₯
rPPG-Toolbox is an open-source platform designed for camera-based physiological sensing, also known as remote photoplethysmography (rPPG).
rPPG-Toolbox not only benchmarks the existing state-of-the-art neural and unsupervised methods, but it also supports flexible and rapid development of your own algorithms.
rPPG-Toolbox currently supports the following algorithms:
-
Traditional Unsupervised Algorithms
- Remote plethysmographic imaging using ambient light (GREEN), by Verkruysse et al., 2008
- Advancements in noncontact multiparameter physiological measurements using a webcam (ICA), by Poh et al., 2011
- Robust pulse rate from chrominance-based rppg (CHROM), by Haan et al., 2013
- Local group invariance for heart rate estimation from face videos in the wild (LGI), by Pilz et al., 2018
- Improved motion robustness of remote-PPG by using the blood volume pulse signature (PBV), by Haan et al., 2014
- Algorithmic principles of remote ppg (POS), by Wang et al., 2016
- Face2PPG: An Unsupervised Pipeline for Blood Volume Pulse Extraction From Faces (OMIT), by Γlvarez et al., 2023
-
Supervised Neural Algorithms
- DeepPhys: Video-Based Physiological Measurement Using Convolutional Attention Networks (DeepPhys), by Chen et al., 2018
- Remote Photoplethysmograph Signal Measurement from Facial Videos Using Spatio-Temporal Networks (PhysNet), by Yu et al., 2019
- Multi-Task Temporal Shift Attention Networks for On-Device Contactless Vitals Measurement (TS-CAN), by Liu et al., 2020
- EfficientPhys: Enabling Simple, Fast and Accurate Camera-Based Cardiac Measurement (EfficientPhys), by Liu et al., 2023
- BigSmall: Efficient Multi-Task Learning for Disparate Spatial and Temporal Physiological Measurements (BigSmall), by Narayanswamy et al., 2023
- PhysFormer: Facial Video-based Physiological Measurement with Temporal Difference Transformer (PhysFormer), by Yu et al., 2022
- iBVPNet: 3D-CNN architecture introduced in iBVP dataset paper, by Joshi et al., 2024
- PhysMamba: Efficient Remote Physiological Measurement with SlowFast Temporal Difference Mamba, by Luo et al., 2024
The toolbox supports seven datasets, namely SCAMPS, UBFC-rPPG, PURE, BP4D+, UBFC-Phys, MMPD and iBVP. Please cite the corresponding papers when using these datasets. For now, we recommend training with UBFC-rPPG, PURE, iBVP or SCAMPS due to the level of synchronization and volume of the datasets. To use these datasets in a deep learning model, you should organize the files as follows.
- MMPD
- Jiankai Tang, Kequan Chen, Yuntao Wang, Yuanchun Shi, Shwetak Patel, Daniel McDuff, Xin Liu, "MMPD: Multi-Domain Mobile Video Physiology Dataset", IEEE EMBC, 2023
data/MMPD/ | |-- subject1/ | |-- p1_0.mat | |-- p1_1.mat | |... | |-- p1_19.mat | |-- subject2/ | |-- p2_0.mat | |-- p2_1.mat | |... |... | |-- subjectn/ | |-- pn_0.mat | |-- pn_1.mat | |...
- SCAMPS
- D. McDuff, M. Wander, X. Liu, B. Hill, J. Hernandez, J. Lester, T. Baltrusaitis, "SCAMPS: Synthetics for Camera Measurement of Physiological Signals", NeurIPS, 2022
data/SCAMPS/Train/ |-- P00001.mat |-- P00002.mat |... data/SCAMPS/Val/ |-- P00001.mat |-- P00002.mat |... data/SCAMPS/Test/ |-- P00001.mat |-- P00002.mat |...
- UBFC-rPPG
- S. Bobbia, R. Macwan, Y. Benezeth, A. Mansouri, J. Dubois, "Unsupervised skin tissue segmentation for remote photoplethysmography", Pattern Recognition Letters, 2017.
data/UBFC-rPPG/ | |-- subject1/ | |-- vid.avi | |-- ground_truth.txt | |-- subject2/ | |-- vid.avi | |-- ground_truth.txt |... | |-- subjectn/ | |-- vid.avi | |-- ground_truth.txt
- PURE
- Stricker, R., MΓΌller, S., Gross, H.-M.Non-contact "Video-based Pulse Rate Measurement on a Mobile Service Robot" in: Proc. 23st IEEE Int. Symposium on Robot and Human Interactive Communication (Ro-Man 2014), Edinburgh, Scotland, UK, pp. 1056 - 1062, IEEE 2014
data/PURE/ | |-- 01-01/ | |-- 01-01/ | |-- 01-01.json | |-- 01-02/ | |-- 01-02/ | |-- 01-02.json |... | |-- ii-jj/ | |-- ii-jj/ | |-- ii-jj.json
- BP4D+
- Zhang, Z., Girard, J., Wu, Y., Zhang, X., Liu, P., Ciftci, U., Canavan, S., Reale, M., Horowitz, A., Yang, H., Cohn, J., Ji, Q., Yin, L. "Multimodal Spontaneous Emotion Corpus for Human Behavior Analysis", IEEE International Conference on Computer Vision and Pattern Recognition (CVPR) 2016.
RawData/ | |-- 2D+3D/ | |-- F001.zip/ | |-- F002.zip | |... | |-- 2DFeatures/ | |-- F001_T1.mat | |-- F001_T2.mat | |... | |-- 3DFeatures/ | |-- F001_T1.mat | |-- F001_T2.mat | |... | |-- AUCoding/ | |-- AU_INT/ | |-- AU06/ | |-- F001_T1_AU06.csv | |... | |... | |-- AU_OCC/ | |-- F00_T1.csv | |... | |-- IRFeatures/ | |-- F001_T1.txt | |... | |-- Physiology/ | |-- F001/ | |-- T1/ | |-- BP_mmHg.txt | |-- microsiemens.txt | |--LA Mean BP_mmHg.txt | |--LA Systolic BP_mmHg.txt | |-- BP Dia_mmHg.txt | |-- Pulse Rate_BPM.txt | |-- Resp_Volts.txt | |-- Respiration Rate_BPM.txt | |... | |-- Thermal/ | |-- F001/ | |-- T1.mv | |... | |... | |-- BP4D+UserGuide_v0.2.pdf
- UBFC-Phys
- Sabour, R. M., Benezeth, Y., De Oliveira, P., Chappe, J., & Yang, F. (2021). Ubfc-phys: A multimodal database for psychophysiological studies of social stress. IEEE Transactions on Affective Computing.
RawData/ | |-- s1/ | |-- vid_s1_T1.avi | |-- vid_s1_T2.avi | |... | |-- bvp_s1_T1.csv | |-- bvp_s1_T2.csv | |-- s2/ | |-- vid_s2_T1.avi | |-- vid_s2_T2.avi | |... | |-- bvp_s2_T1.csv | |-- bvp_s2_T2.csv |... | |-- sn/ | |-- vid_sn_T1.avi | |-- vid_sn_T2.avi | |... | |-- bvp_sn_T1.csv | |-- bvp_sn_T2.csv
- iBVP
- Joshi, J.; Cho, Y. iBVP Dataset: RGB-Thermal rPPG Dataset with High Resolution Signal Quality Labels. Electronics 2024, 13, 1334.
iBVP_Dataset/ | |-- p01_a/ | |-- p01_a_rgb/ | |-- p01_a_t/ | |-- p01_a_bvp.csv | |-- p01_b/ | |-- p01_b_rgb/ | |-- p01_b_t/ | |-- p01_b_bvp.csv |... | |-- pii_x/ | |-- pii_x_rgb/ | |-- pii_x_t/ | |-- pii_x_bvp.csv
The table shows Mean Absolute Error (MAE) and Mean Absolute Percent Error (MAPE) performance across all the algorithms and datasets:
STEP 1: bash setup.sh
STEP 2: conda activate rppg-toolbox
STEP 3: bash install.sh
Please use config files under ./configs/infer_configs
For example, if you want to run The model trained on PURE and tested on UBFC-rPPG, use python main.py --config_file ./configs/infer_configs/PURE_UBFC-rPPG_TSCAN_BASIC.yaml
If you want to test unsupervised signal processing methods, you can use python main.py --config_file ./configs/infer_configs/UBFC-rPPG_UNSUPERVISED.yaml
Please use config files under ./configs/train_configs
STEP 1: Download the PURE raw data by asking the paper authors.
STEP 2: Download the UBFC-rPPG raw data via link
STEP 3: Modify ./configs/train_configs/PURE_PURE_UBFC-rPPG_TSCAN_BASIC.yaml
STEP 4: Run python main.py --config_file ./configs/train_configs/PURE_PURE_UBFC-rPPG_TSCAN_BASIC.yaml
Note 1: Preprocessing requires only once; thus turn it off on the yaml file when you train the network after the first time.
Note 2: The example yaml setting will allow 80% of PURE to train and 20% of PURE to valid. After training, it will use the best model(with the least validation loss) to test on UBFC-rPPG.
STEP 1: Download the SCAMPS via this link and split it into train/val/test folders.
STEP 2: Download the UBFC-rPPG via link
STEP 3: Modify ./configs/train_configs/SCAMPS_SCAMPS_UBFC-rPPG_DEEPPHYS_BASIC.yaml
STEP 4: Run python main.py --config_file ./configs/train_configs/SCAMPS_SCAMPS_UBFC-rPPG_DEEPPHYS_BASIC.yaml
Note 1: Preprocessing requires only once; thus turn it off on the yaml file when you train the network after the first time.
Note 2: The example yaml setting will allow 80% of SCAMPS to train and 20% of SCAMPS to valid. After training, it will use the best model(with the least validation loss) to test on UBFC-rPPG.
STEP 1: Download the UBFC-rPPG via link
STEP 2: Modify ./configs/infer_configs/UBFC_UNSUPERVISED.yaml
STEP 3: Run python main.py --config_file ./configs/infer_configs/UBFC_UNSUPERVISED.yaml
A python notebook for visualizing preprocessed data can be found in tools/preprocessing_viz
along with an associated README. The notebook, viz_preprocessed_data.ipynb
, automatically detects the preprocessed data format and then plots input image examples and waveforms.
This toolbox saves plots of training, and if applicable, validation losses automatically. Plots are saved in LOG.PATH
(runs/exp
by default). An example of these plots when training and validating with the UBFC-rPPG dataset and testing on the PURE dataset are shown below.
By default, this toolbox produces Bland-Altman plots as a part of its metrics evaluation process for both supervised and unsupervised methods. These plots are saved in the LOG.PATH
(runs/exp
by default). An example of these plots after training and validating with the UBFC-rPPG dataset and testing on the PURE dataset are shown below.
A python notebook for visualizing test-set neural method output predictions and labels can be found in tools/output_signal_viz
along with an associated README. The notebook, data_out_viz.ipynb
, given a .pickle
output file, generated by setting TEST.OUTPUT_SAVE_DIR
assists in plotting predicted PPG signals against ground-truth PPG signals.
The rPPG-Toolbox uses yaml file to control all parameters for training and evaluation. You can modify the existing yaml files to meet your own training and testing requirements.
Here are some explanation of parameters:
-
train_and_test
: train on the dataset and use the newly trained model to test.only_test
: you need to set INFERENCE-MODEL_PATH, and it will use pre-trained model initialized with the MODEL_PATH to test.
-
PLOT_LOSSES_AND_LR
: IfTrue
, save plots of the training loss and validation loss, as well as the learning rate, toLOG.PATH
(runs/exp
by default). Currently, only a basic training loss and validation loss are plotted, but in the future additional losses utilized in certain trainer files (e.g., PhysFormer and BigSmall) will also be captured.USE_EXCLUSION_LIST
: IfTrue
, utilize a provided list to exclude preprocessed videosSELECT_TASKS
: IfTrue
, explicitly select tasks to loadDATA_PATH
: The input path of raw dataCACHED_PATH
: The output path to preprocessed data. This path also houses a directory of .csv files containing data paths to files loaded by the dataloader. This filelist (found in default at CACHED_PATH/DataFileLists). These can be viewed for users to understand which files are used in each data split (train/val/test)EXP_DATA_NAME
If it is "", the toolbox generates a EXP_DATA_NAME based on other defined parameters. Otherwise, it uses the user-defined EXP_DATA_NAME.BEGIN" & "END
: The portion of the dataset used for training/validation/testing. For example, if theDATASET
is PURE,BEGIN
is 0.0 andEND
is 0.8 under the TRAIN, the first 80% PURE is used for training the network. If theDATASET
is PURE,BEGIN
is 0.8 andEND
is 1.0 under the VALID, the last 20% PURE is used as the validation set. It is worth noting that validation and training sets don't have overlapping subjects.DATA_TYPE
: How to preprocess the video dataDATA_AUG
: If present, the type of generative data augmentation applied to video dataLABEL_TYPE
: How to preprocess the label dataUSE_PSUEDO_PPG_LABEL
: IfTrue
use POS generated PPG psuedo labels instead of dataset ground truth heart singal waveformDO_CHUNK
: Whether to split the raw data into smaller chunksCHUNK_LENGTH
: The length of each chunk (number of frames)DO_CROP_FACE
: Whether to perform face detectionBACKEND
: Select which backend to use for face detection. Currently, the options are HC (Haar Cascade) or RF (RetinaFace). We recommend using Haar Cascade (the config default) in order to reproduce results from the NeurIPS 2023 Datasets and Benchmarks paper that corresponds to this toolbox. If you use RetinaFace, we recommend that you experiment with parameters such asLARGE_BOX_COEF
andUSE_MEDIAN_BOX
depending on what dataset you are preprocessnig. We plan to update this README with optimal settings to use with RetinaFace in the near future.DYNAMIC_DETECTION
: IfFalse
, face detection is only performed at the first frame and the detected box is used to crop the video for all of the subsequent frames. IfTrue
, face detection is performed at a specific frequency which is defined byDYNAMIC_DETECTION_FREQUENCY
.DYNAMIC_DETECTION_FREQUENCY
: The frequency of face detection (number of frames) if DYNAMIC_DETECTION isTrue
USE_MEDIAN_FACE_BOX
: IfTrue
andDYNAMIC_DETECTION
isTrue
, use the detected face boxs throughout each video to create a single, median face box per video.LARGE_FACE_BOX
: Whether to enlarge the rectangle of the detected face region in case the detected box is not large enough for some special cases (e.g., motion videos)LARGE_BOX_COEF
: The coefficient to scale the face box ifLARGE_FACE_BOX
isTrue
.INFO
: This is a collection of parameters based on attributes of a dataset, such as gender, motion types, and skin color, that help select videos for inclusion in training, validation, or testing. Currently, only the MMPD dataset is supported for parameter-based video inclusion. Please refer to one of the config files involving the MMPD dataset for an example of using these parameters.EXCLUSION_LIST
: A list that specifies videos to exclude, typically based on a unique identifier to a video such as the combination of a subject ID and a task ID. This is only used ifUSE_EXCLUSION_LIST
is set toTrue
. Currently this parameter is only tested with the UBFC-Phys dataset. Please refer to one of the config files involving the UBFC-Phys dataset for an example of using this parameter.TASK_LIST
: A list to specify tasks to include when loading a dataset, allowing for selective inclusion of a subset of tasks or a single task in a dataset if desired. This is only used ifSELECT_TASKS
is set toTrue
. Currently this parameter is only tested with the UBFC-Phys dataset. Please refer to one of the config files involving the UBFC-Phys dataset for an example of using this parameter.
-
- 'BA' metric corresponds to the generation of a Bland-Altman plot to graphically compare two measurement techniques (e.g., differences between measured and ground truth heart rates versus mean of measured and ground truth heart rates). This metric saves the plot in the
LOG.PATH
(runs/exp
by default).
- 'BA' metric corresponds to the generation of a Bland-Altman plot to graphically compare two measurement techniques (e.g., differences between measured and ground truth heart rates versus mean of measured and ground truth heart rates). This metric saves the plot in the
-
USE_SMALLER_WINDOW
: IfTrue
, use an evaluation window smaller than the video length for evaluation.
-
STEP 1: Create a new python file in
dataset/data_loader
, e.g. MyLoader.py -
STEP 2: Implement the required functions, including:
def preprocess_dataset(self, config_preprocess):
@staticmethod def read_video(video_file):
@staticmethod def read_wave(bvp_file):
-
STEP 3:[Optional] Override optional functions. In principle, all functions in BaseLoader can be override, but we do not recommend you to override __len__, __get_item__,save,load.
-
STEP 4:Set or add configuration parameters. To set paramteters, create new yaml files in configs/ . Adding parameters requires modifying config.py, adding new parameters' definition and initial values.
-
STEP 1: Define a model in a new python file in
neural_methods/model
, e.g. NewModel.py. -
STEP 2: Implement the corresponding training/testing routines in a file
neural_methods/trainer
, e.g. NewModelTrainer.py. Ensure to implement the following functions:def __init__(self, config, data_loader):
def train(self, data_loader):
def valid(self, data_loader):
def test(self, data_loader)
def save_model(index)
-
STEP 3: Add logic to
main.py
to use the models in the followingtrain_and_test
andtest
functions. -
STEP 4: Create new yaml files in configs/ corresponding to the new algorithm.
-
STEP 1: Define a algorithm in a new python file in
unsupervised_methods/methods
, e.g. NewMethod.py. -
STEP 2: Add logic to
main.py
to use the models in the followingunsupervised_method_inference
function. -
STEP 4: Create new yaml files in configs/ corresponding to the new algorithm.
Supervised rPPG training requires high fidelity synchronous PPG waveform labels. However not all datasets contain such high quality labels. In these cases we offer the option to train on synchronous PPG "pseudo" labels derived through a signal processing methodology. These labels are produced by using POS-generated PPG waveforms, which are then bandpass filtered around the normal heart-rate frequencies, and finally amplitude normalized using a Hilbert-signal envelope. The tight filtering and envelope normalization results in a strong periodic proxy signal, but at the cost of limited signal morphology.
The usage of synthetic data in the training of machine learning models for medical applications is becoming a key tool that warrants further research. In addition to providing support for the fully synthetic dataset SCAMPS, we provide provide support for synthetic, motion-augmented versions of the UBFC-rPPG, PURE, SCAMPS, and UBFC-Phys datasets for further exploration toward the use of synthetic data for training rPPG models. The synthetic, motion-augmented datasets are generated using the MA-rPPG Video Toolbox, an open-source motion augmentation pipeline targeted for increasing motion diversity in rPPG videos. You can generate and utilize the aforementioned motion-augmented datasets using the steps below.
-
STEP 1: Follow the instructions in the README of the MA-rPPG Video Toolbox GitHub repo to generate any of the supported motion-augmented datasets. NOTE: You will have to have an original, unaugmented version of a dataset and driving video to generate a motion-augmented dataset. More information can be found here.
-
STEP 2: Using any config file of your choice in this toolbox, modify the
DATA_AUG
parameter (set to'None'
by default) to'Motion'
. Currently, onlytrain_configs
that utilize the UBFC-rPPG or PURE datasets have this parameter visible, but you can also modify other config files to add theDATA_AUG
parameter below theDATA_TYPE
parameter that is visible in all config files. This will enable the proper funciton for loading motion-augmented data that is in the.npy
format. -
STEP 3: Run the corresponding config file. Your saved model's filename will have
MA
appended to the corresponding data splits that are motion-augmented.
If you use the aforementioned functionality, please remember to cite the following in addition to citing the rPPG-Toolbox:
- Paruchuri, A., Liu, X., Pan, Y., Patel, S., McDuff, D., & Sengupta, S. (2023). Motion Matters: Neural Motion Transfer for Better Camera Physiological Sensing. arXiv preprint arXiv:2303.12059.
Refer to this BibTeX for quick inclusion into a .bib
file.
We implement BigSmall as an example to show how this toolbox may be extended to support physiological multitasking. If you use this functionality please cite the following publication:
- Narayanswamy, G., Liu, Y., Yang, Y., Ma, C., Liu, X., McDuff, D., Patel, S. "BigSmall: Efficient Multi-Task Learning For Physiological Measurements" https://arxiv.org/abs/2303.11573
The BigSmall mode multi-tasks pulse (PPG regression), respiration (regression), and facial action (multilabel AU classification). The model is trained and evaluated (in this toolbox) on the AU label subset (described in the BigSmall publication) of the BP4D+ dataset, using a 3-fold cross validation method (using the same folds as in the BigSmall publication).
-
STEP 1: Download the BP4D+ by emailing the authors found here.
-
STEP 2: Modify
./configs/train_configs/BP4D_BP4D_BIGSMALL_FOLD1.yaml
to train the first fold (config files also exist for the 2nd and 3rd fold). -
STEP 3: Run
python main.py --config_file ./configs/train_configs/BP4D_BP4D_BIGSMALL_FOLD1.yaml
Best practice for rPPG model evaluation involves training and validating a model on one dataset and then evaluating (testing) the performance on additional datasets (Eg. training on PURE and testing on UBFC). Data splits used for training, validation, and testing are saved as .csv filelists with the default directory path set as CACHED_PATH/DataFileLists
(this are generally auto generated). In cases where users would like to define their own data splits (Eg. for intra-dataset cross validation), the following steps can be used to achieve this.
-
STEP 1: Collect all file paths for the data splits's input files (An example file path would be of format
CACHED_PATH/PREPROCESSED_DATASET/*input*.npy
, eg.405_input9.npy
). Ensure the corresponding*label*.npy
files exists in the same directory as the input files. -
STEP 2: Add all file paths to a .csv with column name
input_files
. We suggest creating a pandas dataframe and then saving this out to the csv. This .csv file is the file list for your custom data split. The file can be named anything as long as it has an .csv extension. -
STEP 3: In the desired experiment config file, enter the file path of the .csv file list using keyword
FILE_LIST_PATH
in theDATA
field of the desired train/valid/test split. The dataloader will load input and label files specified in this file path.
If you find our paper or this toolbox useful for your research, please cite our work.
@article{liu2022rppg,
title={rPPG-Toolbox: Deep Remote PPG Toolbox},
author={Liu, Xin and Narayanswamy, Girish and Paruchuri, Akshay and Zhang, Xiaoyu and Tang, Jiankai and Zhang, Yuzhe and Wang, Yuntao and Sengupta, Soumyadip and Patel, Shwetak and McDuff, Daniel},
journal={arXiv preprint arXiv:2210.00716},
year={2022}
}
This research project is supported by a Google PhD Fellowship for Xin Liu and a research grant from Cisco for the University of Washington as well as a career start-up funding grant from the Department of Computer Science at UNC Chapel Hill. This research is also supported by Tsinghua University Initiative Scientific Research Program, Beijing Natural Science Foundation, and the Natural Science Foundation of China (NSFC). We also would like to acknowledge all the contributors from the open-source community.