OpenGait is a flexible and extensible gait recognition project provided by the Shiqi Yu Group and supported in part by WATRIX.AI. The corresponding paper has been accepted by CVPR2023 as a highlight paper.
- [Mar 2024] BigGait has been accepted to CVPR2024🎉 Congratulations to Dingqiang! This is his FIRST paper!
- [Jan 2024] The code of transfomer-based SwinGait is available at here.
- [Dec 2023] A new state-of-the-art baseline, i.e., DeepGaitV2, is available at here!
- [Nov 2023] The first million-level unlabeled gait dataset, i.e., GaitLU-1M, is released and supported in datasets/GaitLU-1M.
- [Oct 2023] Several representative pose-based methods are supported in opengait/modeling/models. This feature is mainly inherited from FastPoseGait. Many thanks to the contributors😊.
- [July 2023] CCPG is supported in datasets/CCPG.
- [CVPR'24] BigGait: Learning Gait Representation You Want by Large Vision Models. Paper, and Code (coming soon).
- [AAAI'24] SkeletonGait++: Gait Recognition Using Skeleton Maps. Paper, and Code (coming soon).
- [AAAI'24] Cross-Covariate Gait Recognition: A Benchmark. Paper, Dataset, and [Code](coming soon).
- [Arxiv'23] Exploring Deep Models for Practical Gait Recognition. Paper, DeepGaitV2, and SwinGait.
- [PAMI'23] Learning Gait Representation from Massive Unlabelled Walking Videos: A Benchmark, Paper, Dataset, and Code.
- [CVPR'23] LidarGait: Benchmarking 3D Gait Recognition with Point Clouds, Paper, Dataset and Code.
- [CVPR'23] OpenGait: Revisiting Gait Recognition Toward Better Practicality, Highlight Paper, and Code.
- [ECCV'22] GaitEdge: Beyond Plain End-to-end Gait Recognition for Better Practicality, Paper, and Code.
The workflow of All-in-One-Gait involves the processes of pedestrian tracking, segmentation and recognition. See here for details.
- Multiple Dataset supported: CASIA-B, OUMVLP, SUSTech1K, HID, GREW, Gait3D, CCPG, CASIA-E, and GaitLU-1M.
- Multiple Models Support: We reproduced several SOTA methods and reached the same or even better performance.
- DDP Support: The officially recommended
Distributed Data Parallel (DDP)
mode is used during both the training and testing phases. - AMP Support: The
Auto Mixed Precision (AMP)
option is available. - Nice log: We use
tensorboard
andlogging
to log everything, which looks pretty.
Please see 0.get_started.md. We also provide the following tutorials for your reference:
Results of appearance-based gait recognition are available here.
Results of pose-based gait recognition are available here.
OpenGait Team (OGT)
- Chao Fan (樊超), 12131100@mail.sustech.edu.cn
- Chuanfu Shen (沈川福), 11950016@mail.sustech.edu.cn
- Junhao Liang (梁峻豪), 12132342@mail.sustech.edu.cn
-
GLN: Saihui Hou (侯赛辉)
-
GaitGL: Beibei Lin (林贝贝)
-
GREW: GREW TEAM
-
FastPoseGait Team: FastPoseGait Team
-
Gait3D Team: Gait3D Team
@InProceedings{Fan_2023_CVPR,
author = {Fan, Chao and Liang, Junhao and Shen, Chuanfu and Hou, Saihui and Huang, Yongzhen and Yu, Shiqi},
title = {OpenGait: Revisiting Gait Recognition Towards Better Practicality},
booktitle = {Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
month = {June},
year = {2023},
pages = {9707-9716}
}
Note: This code is only used for academic purposes, people cannot use this code for anything that might be considered commercial use.