[ICCV 2021] Group-aware Contrastive Regression for Action Quality Assessment

Related tags

Deep LearningCoRe
Overview

CoRe

Created by Xumin Yu*, Yongming Rao*, Wenliang Zhao, Jiwen Lu, Jie Zhou

This is the PyTorch implementation for ICCV paper Group-aware Contrastive Regression for Action Quality Assessment arXiv.

We present a new Contrastive Regression (CoRe) framework to learn the relative scores by pair-wise comparison, which highlights the differences between videos and guides the models to learn the key hints for action quality assessment.

intro

Pretrained Model

Usage

Requirement

  • Python >= 3.6
  • Pytorch >= 1.4.0
  • torchvision >= 0.4.1
  • torch_videovision
pip install git+https://github.com/hassony2/torch_videovision

Download initial I3D

We use the Kinetics pretrained I3D model from the reposity kinetics_i3d_pytorch

Dataset Preparation

MTL-AQA

  • Please download the dataset from the repository MTL-AQA. The data structure should be:
$DATASET_ROOT
├── MTL-AQA/
    ├── new
        ├── new_total_frames_256s
            ├── 01
            ...
            └── 09
    ├── info
        ├── final_annotations_dict_with_dive_number
        ├── test_split_0.pkl
        └── train_split_0.pkl
    └── model_rgb.pth

The processed annotations are already provided in this repo. You can download the prepared dataset [BaiduYun](code:smff). Download and unzip the four zip files under MTL-AQA/, then follow the structure. If you want to prepare the data by yourself, please see MTL_helper for some helps. We provide codes for processing the data from an online video to the frames data.

AQA-7

  • Download AQA-7 Dataset:
mkdir AQA-Seven & cd AQA-Seven
wget http://rtis.oit.unlv.edu/datasets/AQA-7.zip
unzip AQA-7.zip

The data structure should be:

$DATASET_ROOT
├── Seven/
    ├── diving-out
        ├── 001
            ├── img_00001.jpg
            ...
        ...
        └── 370
    ├── gym_vault-out
        ├── 001
            ├── img_00001.jpg
            ...
    ...

    └── Split_4
        ├── split_4_test_list.mat
        └── split_4_train_list.mat

You can download he prepared dataset [BaiduYun](code:65rl). Unzip the file under Seven/

JIGSAWS

  • Please download the dataset from JIASAWS. You are required to complete a form before you use this dataset for academic research.

The training and test code for JIGSAWS is on the way.

Training and Evaluation

To train a CoRe model:

bash ./scripts/train.sh <GPUIDS>  <MTL/Seven> <exp_name>  [--resume] 

For example,

# train a model on MTL
bash ./scripts/train.sh 0,1 MTL try 

# train a model on Seven
bash ./scripts/train.sh 0,1 Seven try --Seven_cls 1

To evaluate a pretrained model:

bash ./scripts/test.sh <GPUIDS>  <MTL/Seven> <exp_name>  --ckpts <path> [--Seven_cls <int>]

For example,

# test a model on MTL
bash ./scripts/test.sh 0 MTL try --ckpts ./MTL_CoRe.pth

# test a model on Seven
bash ./scripts/test.sh 0 Seven try --Seven_cls 1 --ckpts ./Seven_CoRe_1.pth

Visualizatin Results

vis

Citation

If you find our work useful in your research, please consider citing:

@misc{yu2021groupaware,
      title={Group-aware Contrastive Regression for Action Quality Assessment}, 
      author={Xumin Yu and Yongming Rao and Wenliang Zhao and Jiwen Lu and Jie Zhou},
      year={2021},
      eprint={2108.07797},
      archivePrefix={arXiv},
      primaryClass={cs.CV}
}
Owner
Xumin Yu
Xumin Yu
A Text Attention Network for Spatial Deformation Robust Scene Text Image Super-resolution (CVPR2022)

A Text Attention Network for Spatial Deformation Robust Scene Text Image Super-resolution (CVPR2022) https://arxiv.org/abs/2203.09388 Jianqi Ma, Zheto

MA Jianqi, shiki 104 Jan 05, 2023
Demo for the paper "Overlap-aware low-latency online speaker diarization based on end-to-end local segmentation"

Streaming speaker diarization Overlap-aware low-latency online speaker diarization based on end-to-end local segmentation by Juan Manuel Coria, Hervé

Juanma Coria 187 Jan 06, 2023
Final project code: Implementing MAE with downscaled encoders and datasets, for ESE546 FA21 at University of Pennsylvania

546 Final Project: Masked Autoencoder Haoran Tang, Qirui Wu 1. Training To train the network, please run mae_pretraining.py. Please modify folder path

Haoran Tang 0 Apr 22, 2022
PRTR: Pose Recognition with Cascade Transformers

PRTR: Pose Recognition with Cascade Transformers Introduction This repository is the official implementation for Pose Recognition with Cascade Transfo

mlpc-ucsd 133 Dec 30, 2022
Learning Pixel-level Semantic Affinity with Image-level Supervision for Weakly Supervised Semantic Segmentation, CVPR 2018

Learning Pixel-level Semantic Affinity with Image-level Supervision This code is deprecated. Please see https://github.com/jiwoon-ahn/irn instead. Int

Jiwoon Ahn 337 Dec 15, 2022
A list of awesome PyTorch scholarship articles, guides, blogs, courses and other resources.

Awesome PyTorch Scholarship Resources A collection of awesome PyTorch and Python learning resources. Contributions are always welcome! Course Informat

Arnas Gečas 302 Dec 03, 2022
Microscopy Image Cytometry Toolkit

Cytokit Cytokit is a collection of tools for quantifying and analyzing properties of individual cells in large fluorescent microscopy datasets with a

Hammer Lab 106 Jan 06, 2023
This game was designed to encourage young people not to gamble on lotteries, as the probablity of correctly guessing the number is infinitesimal!

Lottery Simulator 2022 for Web Launch Application Developed by John Seong in Ontario. This game was designed to encourage young people not to gamble o

John Seong 2 Sep 02, 2022
PyTorch implementation of the Quasi-Recurrent Neural Network - up to 16 times faster than NVIDIA's cuDNN LSTM

Quasi-Recurrent Neural Network (QRNN) for PyTorch Updated to support multi-GPU environments via DataParallel - see the the multigpu_dataparallel.py ex

Salesforce 1.3k Dec 28, 2022
Moer Grounded Image Captioning by Distilling Image-Text Matching Model

Moer Grounded Image Captioning by Distilling Image-Text Matching Model Requirements Python 3.7 Pytorch 1.2 Prepare data Please use git clone --recurse

YE Zhou 60 Dec 16, 2022
Official repository for "Deep Recurrent Neural Network with Multi-scale Bi-directional Propagation for Video Deblurring".

RNN-MBP Deep Recurrent Neural Network with Multi-scale Bi-directional Propagation for Video Deblurring (AAAI-2022) by Chao Zhu, Hang Dong, Jinshan Pan

SIV-LAB 22 Aug 31, 2022
Torchserve server using a YoloV5 model running on docker with GPU and static batch inference to perform production ready inference.

Yolov5 running on TorchServe (GPU compatible) ! This is a dockerfile to run TorchServe for Yolo v5 object detection model. (TorchServe (PyTorch librar

82 Nov 29, 2022
Multi-atlas segmentation (MAS) is a promising framework for medical image segmentation

Multi-atlas segmentation (MAS) is a promising framework for medical image segmentation. Generally, MAS methods register multiple atlases, i.e., medical images with corresponding labels, to a target i

NanYoMy 13 Oct 09, 2022
A repository for interferometer controller code.

dses-interferometer-controller A repository for interferometer controller code, hardware, and simulations. See dses.science for more information on th

Eli Reed 1 Jan 17, 2022
Code for Learning to Segment The Tail (LST)

Learning to Segment the Tail [arXiv] In this repository, we release code for Learning to Segment The Tail (LST). The code is directly modified from th

47 Nov 07, 2022
Source code of our BMVC 2021 paper: AniFormer: Data-driven 3D Animation with Transformer

AniFormer This is the PyTorch implementation of our BMVC 2021 paper AniFormer: Data-driven 3D Animation with Transformer. Haoyu Chen, Hao Tang, Nicu S

24 Nov 02, 2022
Understanding the Properties of Minimum Bayes Risk Decoding in Neural Machine Translation.

Understanding Minimum Bayes Risk Decoding This repo provides code and documentation for the following paper: Müller and Sennrich (2021): Understanding

ZurichNLP 13 May 01, 2022
LBK 35 Dec 26, 2022
you can add any codes in any language by creating its respective folder (if already not available).

HACKTOBERFEST-2021-WEB-DEV Beginner-Hacktoberfest Need Your first pr for hacktoberfest 2k21 ? come on in About This is repository of Responsive Portfo

Suman Sharma 8 Oct 17, 2022
AugLiChem - The augmentation library for chemical systems.

AugLiChem Welcome to AugLiChem! The augmentation library for chemical systems. This package supports augmentation for both crystaline and molecular sy

BaratiLab 17 Jan 08, 2023