This repo is the official implementation of [CVPR 2023] paper: "Human Pose Estimation in Extremely Low-light Conditions".
Human Pose Estimation in Extremely Low-light Conditions
Sohyun Lee1*, Jaesung Rim1*, Boseung Jeong1, Geonu Kim1, Byungju Woo2, Haechan Lee1, Sunghyun Cho1, Suha Kwak1
POSTECH1 ADD2
CVPR 2023
We study human pose estimation in extremely low-light images. This task is challenging due to the difficulty of collecting real low-light images with accurate labels, and severely corrupted inputs that degrade prediction quality significantly. To address the first issue, we develop a dedicated camera system and build a new dataset of real lowlight images with accurate pose labels. Thanks to our camera system, each low-light image in our dataset is coupled with an aligned well-lit image, which enables accurate pose labeling and is used as privileged information during training. We also propose a new model and a new training strategy that fully exploit the privileged information to learn representation insensitive to lighting conditions. Our method demonstrates outstanding performance on real extremely low-light images, and extensive analyses validate that both of our model and dataset contribute to the success.
If you find our code or paper useful, please consider citing our paper:
@inproceedings{lee2023human,
title={Human pose estimation in extremely low-light conditions},
author={Lee, Sohyun and Rim, Jaesung and Jeong, Boseung and Kim, Geonu and Woo, Byungju and Lee, Haechan and Cho, Sunghyun and Kwak, Suha},
booktitle={Proceedings of the {IEEE/CVF} Conference on Computer Vision and Pattern Recognition (CVPR)},
year={2023}
}
This repository is developed and tested on
- Ubuntu 20.04
- Conda 4.9.2
- CUDA 11.4
- Python 3.7.11
- PyTorch 1.9.0
- Required environment is presented in the 'exlpose.yaml' file
- Clone this repo
~$ git clone https://github.com/sohyun-l/ExLPose
~$ cd ExLPose
~/ExLPose$ conda env create --file exlpose.yaml
~/ExLPose$ conda activate exlpose.yaml
(exlpose) ~/ExLPose$ cd pytorch-cpn/256.192.model
(exlpose) ~/ExLPose/pytorch-cpn/256.192.model$ python train.py
BEST_MODEL_PATH = './Final_model.pth.tar'