All Projects → DirtyHarryLYL → Hake Action Torch

DirtyHarryLYL / Hake Action Torch

Licence: apache-2.0
HAKE-Action in PyTorch

Projects that are alternatives of or similar to Hake Action Torch

Hake Action
As a part of the HAKE project, includes the reproduced SOTA models and the corresponding HAKE-enhanced versions (CVPR2020).
Stars: ✭ 72 (-2.7%)
Mutual labels:  action-recognition, activity-recognition
Awesome Activity Prediction
Paper list of activity prediction and related area
Stars: ✭ 147 (+98.65%)
Mutual labels:  action-recognition, activity-recognition
M Pact
A one stop shop for all of your activity recognition needs.
Stars: ✭ 85 (+14.86%)
Mutual labels:  action-recognition, activity-recognition
Timeception
Timeception for Complex Action Recognition, CVPR 2019 (Oral Presentation)
Stars: ✭ 153 (+106.76%)
Mutual labels:  action-recognition, activity-recognition
Step
STEP: Spatio-Temporal Progressive Learning for Video Action Detection. CVPR'19 (Oral)
Stars: ✭ 196 (+164.86%)
Mutual labels:  action-recognition, activity-recognition
Robust-Deep-Learning-Pipeline
Deep Convolutional Bidirectional LSTM for Complex Activity Recognition with Missing Data. Human Activity Recognition Challenge. Springer SIST (2020)
Stars: ✭ 20 (-72.97%)
Mutual labels:  activity-recognition, action-recognition
Hake
HAKE: Human Activity Knowledge Engine (CVPR'18/19/20, NeurIPS'20)
Stars: ✭ 132 (+78.38%)
Mutual labels:  action-recognition, activity-recognition
C3d Keras
C3D for Keras + TensorFlow
Stars: ✭ 171 (+131.08%)
Mutual labels:  action-recognition, activity-recognition
Video Caffe
Video-friendly caffe -- comes with the most recent version of Caffe (as of Jan 2019), a video reader, 3D(ND) pooling layer, and an example training script for C3D network and UCF-101 data
Stars: ✭ 172 (+132.43%)
Mutual labels:  action-recognition, activity-recognition
Squeeze-and-Recursion-Temporal-Gates
Code for : [Pattern Recognit. Lett. 2021] "Learn to cycle: Time-consistent feature discovery for action recognition" and [IJCNN 2021] "Multi-Temporal Convolutions for Human Action Recognition in Videos".
Stars: ✭ 62 (-16.22%)
Mutual labels:  activity-recognition, action-recognition
Awesome Action Recognition
A curated list of action recognition and related area resources
Stars: ✭ 3,202 (+4227.03%)
Mutual labels:  action-recognition, activity-recognition
Fight detection
Real time Fight Detection Based on 2D Pose Estimation and RNN Action Recognition
Stars: ✭ 65 (-12.16%)
Mutual labels:  action-recognition
Video Classification 3d Cnn Pytorch
Video classification tools using 3D ResNet
Stars: ✭ 874 (+1081.08%)
Mutual labels:  action-recognition
Tsn Pytorch
Temporal Segment Networks (TSN) in PyTorch
Stars: ✭ 895 (+1109.46%)
Mutual labels:  action-recognition
Hcn Prototypeloss Pytorch
Hierarchical Co-occurrence Network with Prototype Loss for Few-shot Learning (PyTorch)
Stars: ✭ 17 (-77.03%)
Mutual labels:  action-recognition
Training toolbox caffe
Training Toolbox for Caffe
Stars: ✭ 51 (-31.08%)
Mutual labels:  action-recognition
Action recognition tf
Action recognition.基于C3D的视频动作识别
Stars: ✭ 16 (-78.38%)
Mutual labels:  action-recognition
Awesome Knowledge Management
A curated list of amazingly awesome articles, people, applications, software libraries and projects related to the knowledge management space
Stars: ✭ 758 (+924.32%)
Mutual labels:  knowledge-base
Two Stream Action Recognition
Using two stream architecture to implement a classic action recognition method on UCF101 dataset
Stars: ✭ 705 (+852.7%)
Mutual labels:  action-recognition
Stock Knowledge Graph
利用网络上公开的数据构建一个小型的证券知识图谱/知识库
Stars: ✭ 1,182 (+1497.3%)
Mutual labels:  knowledge-base

HAKE-Action-Torch

Seven-in-One: CVPR'18 (Part States), CVPR'19 (interactiveness), CVPR'20 (PaStaNet, Dj-RN, SymNet), NeurIPS'20 (IDN), TPAMI(Extended TIN).

HAKE-Action-Torch (PyTorch) is a project to open the SOTA action understanding studies based on our project: Human Activity Knowledge Engine. It includes SOTA models and their corresponding HAKE-enhanced versions based on our six papers (CVPR'18/19/20, NeurIPS'20). The TensorFlow version of HAKE-Action is here.

Currently, it is manintained by Yong-Lu Li, Xinpeng Liu and Zhanke Zhou, Hongwei Fan.

News: (2021.2.7) Upgraded HAKE-Activity2Vec is released! Images/Videos --> human box + ID + skeleton + part states + action + representation. [Description]

Full demo: [YouTube], [bilibili]

(2021.1.15) Our extended version of TIN (Transferable Interactiveness Network) is accepted by TPAMI!

(2020.10.27) The code of IDN (Paper) in NeurIPS'20 is released!

Project

HAKE-Action-Torch
  ├──Master Branch                          # Unified pipeline; CVPR'18/20, PaStanet and Part States.
  ├──IDN-(Integrating-Decomposing-Network)  # NeurIPS'20, HOI Analysis: Integrating and Decomposing Human-Object Interaction.
  ├──DJ-RN-Torch                            # CVPR'20, Detailed 2D-3D Joint Representation for Human-Object Interaction.
  ├──TIN-Torch                              # CVPR'19, Transferable Interactiveness Knowledge for Human-Object Interaction Detection.
  └──SymNet-Torch                           # CVPR'20, Symmetry and Group in Attribute-Object Compositions.

Papers

Results on HICO-DET with different object detections.

Method Detector HAKE Full(def) Rare(def) None-Rare(def) Full(ko) Rare(ko) None-Rare(ko)
TIN COCO - 17.54 13.80 18.65 19.75 15.70 20.96
TIN COCO HAKE-HICO-DET 22.12 20.19 22.69 24.06 22.19 24.62
TIN COCO HAKE-Large 22.66 21.17 23.09 24.53 23.00 24.99
TIN-PAMI COCO - 20.93 18.95 21.32 23.02 20.96 23.42
DJ-RN COCO - 21.34 18.53 22.18 23.69 20.64 24.60
IDN COCO - 23.36 22.47 23.63 26.43 25.01 26.85
IDN COCO+HICO-DET - 26.29 22.61 27.39 28.24 24.47 29.37
TIN GT Pairs - 34.26 22.90 37.65 - - -
IDN GT Pairs - 43.98 40.27 45.09 - - -

Results on V-COCO.

As VCOCO is built on COCO, thus finetuning detector on VCOCO basically contributes marhinally to performance. |Method | HAKE | AP(role) | |:---:|:---:|:---:| |TIN|-|47.8| |TIN| HAKE-Large | 51.0| |TIN-PAMI|-|49.1| |IDN|-|53.3|

Results on Ambiguous-HOI.

Method mAP
TIN 8.22
DJ-RN 10.37

Results on PaStaNet-HOI

Method mAP
TIN-PAMI 15.38

Modules

Unified Model

Coming soon.

Activity2Vec (CVPR'20)

The independent Torch version is in: Activity2Vec (A2V).

IDN (NeurIPS'20)

The independent Torch version is in: IDN.

DJ-RN (CVPR'20)

The independent Torch version is in: DJ-RN-Torch

TIN (CVPR'19)

The independent Torch version is in: TIN-Torch

SymNet (CVPR'20)

Coming soon.

Citation

If you find our works useful, please consider citing:

---IDN:
@inproceedings{li2020hoi,
  title={HOI Analysis: Integrating and Decomposing Human-Object Interaction},
  author={Li, Yong-Lu and Liu, Xinpeng and Wu, Xiaoqian and Li, Yizhuo and Lu, Cewu},
  booktitle={NeurIPS},
  year={2020}
}
---HAKE:
@inproceedings{li2020pastanet,
  title={PaStaNet: Toward Human Activity Knowledge Engine},
  author={Li, Yong-Lu and Xu, Liang and Liu, Xinpeng and Huang, Xijie and Xu, Yue and Wang, Shiyi and Fang, Hao-Shu and Ma, Ze and Chen, Mingyang and Lu, Cewu},
  booktitle={CVPR},
  year={2020}
}
@inproceedings{lu2018beyond,
  title={Beyond holistic object recognition: Enriching image understanding with part states},
  author={Lu, Cewu and Su, Hao and Li, Yonglu and Lu, Yongyi and Yi, Li and Tang, Chi-Keung and Guibas, Leonidas J},
  booktitle={CVPR},
  year={2018}
}
---DJ-RN
@inproceedings{li2020detailed,
  title={Detailed 2D-3D Joint Representation for Human-Object Interaction},
  author={Li, Yong-Lu and Liu, Xinpeng and Lu, Han and Wang, Shiyi and Liu, Junqi and Li, Jiefeng and Lu, Cewu},
  booktitle={CVPR},
  year={2020}
}
---TIN
@inproceedings{li2019transferable,
  title={Transferable Interactiveness Knowledge for Human-Object Interaction Detection},
  author={Li, Yong-Lu and Zhou, Siyuan and Huang, Xijie and Xu, Liang and Ma, Ze and Fang, Hao-Shu and Wang, Yanfeng and Lu, Cewu},
  booktitle={CVPR},
  year={2019}
}
---SymNet
@inproceedings{li2020symmetry,
  title={Symmetry and Group in Attribute-Object Compositions},
  author={Li, Yong-Lu and Xu, Yue and Mao, Xiaohan and Lu, Cewu},
  booktitle={CVPR},
  year={2020}
}

TODO

  • [ ] TIN-based element analysis
  • [x] Refined Activity2Vec
  • [ ] Extended DJ-RN
  • [ ] SymNet in Torch
  • [ ] Unified model (better A2V, early/late fusion, new representation)

HAKE

HAKE[website] is a new large-scale knowledge base and engine for human activity understanding. HAKE provides elaborate and abundant body part state labels for active human instances in a large scale of images and videos. With HAKE, we boost the action understanding performance on widely-used human activity benchmarks. Now we are still enlarging and enriching it, and looking forward to working with outstanding researchers around the world on its applications and further improvements. If you have any pieces of advice or interests, please feel free to contact Yong-Lu Li ([email protected]).

If you get any problems or if you find any bugs, don't hesitate to comment on GitHub or make a pull request!

HAKE-Action-Torch is freely available for free non-commercial use, and may be redistributed under these conditions. For commercial queries, please drop an e-mail. We will send the detail agreement to you.

Note that the project description data, including the texts, logos, images, and/or trademarks, for each open source project belongs to its rightful owner. If you wish to add or remove any projects, please contact us at [email protected].