CVPR2021: Temporal Context Aggregation Network for Temporal Action Proposal Refinement

Overview

Temporal Context Aggregation Network - Pytorch

This repo holds the pytorch-version codes of paper: "Temporal Context Aggregation Network for Temporal Action Proposal Refinement", which is accepted in CVPR 2021.

[Arxiv Preprint]

Update

  • 2021.07.02: Update proposals, checkpoints, features for TCANet!
  • 2021.05.31: Repository for TCANet

Contents

Paper Introduction

image

Temporal action proposal generation aims to estimate temporal intervals of actions in untrimmed videos, which is a challenging yet important task in the video understanding field. The proposals generated by current methods still suffer from inaccurate temporal boundaries and inferior confidence used for retrieval owing to the lack of efficient temporal modeling and effective boundary context utilization. In this paper, we propose Temporal Context Aggregation Network (TCANet) to generate high-quality action proposals through "local and global" temporal context aggregation and complementary as well as progressive boundary refinement. Specifically, we first design a Local-Global Temporal Encoder (LGTE), which adopts the channel grouping strategy to efficiently encode both "local and global" temporal inter-dependencies. Furthermore, both the boundary and internal context of proposals are adopted for frame-level and segment-level boundary regressions, respectively. Temporal Boundary Regressor (TBR) is designed to combine these two regression granularities in an end-to-end fashion, which achieves the precise boundaries and reliable confidence of proposals through progressive refinement. Extensive experiments are conducted on three challenging datasets: HACS, ActivityNet-v1.3, and THUMOS-14, where TCANet can generate proposals with high precision and recall. By combining with the existing action classifier, TCANet can obtain remarkable temporal action detection performance compared with other methods. Not surprisingly, the proposed TCANet won the 1st place in the CVPR 2020 - HACS challenge leaderboard on temporal action localization task.

Prerequisites

These code is implemented in Pytorch 1.5.1 + Python3.

Code and Data Preparation

Get the code

Clone this repo with git, please use:

git clone https://github.com/qingzhiwu/Temporal-Context-Aggregation-Network-Pytorch.git

Download Datasets

We support experiments with publicly available dataset HACS for temporal action proposal generation now. To download this dataset, please use official HACS downloader to download videos from the YouTube.

To extract visual feature, we adopt Slowfast model pretrained on the training set of HACS. Please refer this repo Slowfast to extract features.

For convenience of training and testing, we provide the rescaled feature at here Google Cloud or Baidu Yun[Code:x3ve].

In Baidu Yun Link, we provide:

-- features/: SlowFast features for training, validation and testing.
-- checkpoint/: Pre-trained TCANet model for SlowFast features provided by us.
-- proposals/: BMN proposals processed by us.
-- classification/: The best classification results we used in paper and 2020 HACS challenge.

Training and Testing of TCANet

All configurations of TCANet are saved in opts.py, where you can modify training and model parameter.

1. Unzip Proposals

tar -jxvf hacs.bmn.pem.slowfast101.t200.wd1e-5.warmup.pem_input_100.tar.bz2 -C ./
tar -jxvf hacs.bmn.pem.slowfast101.t200.wd1e-5.warmup.pem_input.tar.bz2 -C ./

2. Unzip Features

# for training features
cd features/
cat slowfast101.epoch9.87.52.finetune.pool.t.keep.t.s8.training.tar.bz2.*>slowfast101.epoch9.87.52.finetune.pool.t.keep.t.s8.training.tar.gz
tar -zxvf slowfast101.epoch9.87.52.finetune.pool.t.keep.t.s8.training.tar.gz
tar -jxvf slowfast101.epoch9.87.52.finetune.pool.t.keep.t.s8.training.tar.bz2 -C .

# for validation features
cd features/
cat slowfast101.epoch9.87.52.finetune.pool.t.keep.t.s8.validation.tar.bz2.*>slowfast101.epoch9.87.52.finetune.pool.t.keep.t.s8.validation.tar.gz
tar -zxvf slowfast101.epoch9.87.52.finetune.pool.t.keep.t.s8.validation.tar.gz
tar -jxvf slowfast101.epoch9.87.52.finetune.pool.t.keep.t.s8.validation.tar.bz2 -C .

# for testing features
cd features/
cat slowfast101.epoch9.87.52.finetune.pool.t.keep.t.s8.testing.tar.bz2.*>slowfast101.epoch9.87.52.finetune.pool.t.keep.t.s8.testing.tar.gz
tar -zxvf slowfast101.epoch9.87.52.finetune.pool.t.keep.t.s8.testing.tar.gz
tar -jxvf slowfast101.epoch9.87.52.finetune.pool.t.keep.t.s8.testing.tar.bz2 -C .

4. Training of TCANet

python3 main_tcanet.py --mode train \
--checkpoint_path ./checkpoint/ \
--video_anno /path/to/HACS_segments_v1.1.1.json \
--feature_path /path/to/feature/ \
--train_proposals_path /path/to/pem_input_100/in/proposals \ 
--test_proposals_path /path/to/pem_input/in/proposals 

We also provide trained TCANet model in ./checkpoint in our BaiduYun Link.

6. Testing of TCANet

# We split the dataset into 4 parts, and inference these parts on 4 gpus
python3 main_tcanet.py  --mode inference --part_idx 0 --gpu 0 --classifier_result /path/to/classifier/{}94.32.json
python3 main_tcanet.py  --mode inference --part_idx 1 --gpu 1 --classifier_result /path/to/classifier/{}94.32.json
python3 main_tcanet.py  --mode inference --part_idx 2 --gpu 2 --classifier_result /path/to/classifier/{}94.32.json
python3 main_tcanet.py  --mode inference --part_idx 3 --gpu 3 --classifier_result /path/to/classifier/{}94.32.json

7. Post processing and generate final results

python3 main_tcanet.py  --mode inference --part_idx -1

Other Info

Citation

Please cite the following paper if you feel TCANet useful to your research

@inproceedings{qing2021temporal,
  title={Temporal Context Aggregation Network for Temporal Action Proposal Refinement},
  author={Qing, Zhiwu and Su, Haisheng and Gan, Weihao and Wang, Dongliang and Wu, Wei and Wang, Xiang and Qiao, Yu and Yan, Junjie and Gao, Changxin and Sang, Nong},
  booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition},
  pages={485--494},
  year={2021}
}

Contact

For any question, please file an issue or contact

Zhiwu Qing: [email protected]
Owner
Zhiwu Qing
Zhiwu Qing
Python Multi-Agent Reinforcement Learning framework

- Please pay attention to the version of SC2 you are using for your experiments. - Performance is *not* always comparable between versions. - The re

whirl 1.3k Jan 05, 2023
Garbage classification using structure data.

垃圾分类模型使用说明 1.包含以下数据文件 文件 描述 data/MaterialMapping.csv 物体以及其归类的信息 data/TestRecords 光谱原始测试数据 CSV 文件 data/TestRecordDesc.zip CSV 文件描述文件 data/Boundaries.cs

wenqi 1 Dec 10, 2021
A collection of SOTA Image Classification Models in PyTorch

A collection of SOTA Image Classification Models in PyTorch

sithu3 85 Dec 30, 2022
A modular, research-friendly framework for high-performance and inference of sequence models at many scales

T5X T5X is a modular, composable, research-friendly framework for high-performance, configurable, self-service training, evaluation, and inference of

Google Research 1.1k Jan 08, 2023
Post-training Quantization for Neural Networks with Provable Guarantees

Post-training Quantization for Neural Networks with Provable Guarantees Authors: Jinjie Zhang ( Yixuan Zhou 2 Nov 29, 2022

MDMM - Learning multi-domain multi-modality I2I translation

Multi-Domain Multi-Modality I2I translation Pytorch implementation of multi-modality I2I translation for multi-domains. The project is an extension to

Hsin-Ying Lee 107 Nov 04, 2022
Code for all the Advent of Code'21 challenges mostly written in python

Advent of Code 21 Code for all the Advent of Code'21 challenges mostly written in python. They are not necessarily the best or fastest solutions but j

4 May 26, 2022
LSSY量化交易系统

LSSY量化交易系统 该项目是本人3年来研究量化慢慢积累开发的一套系统,属于早期作品慢慢修改而来,仅供学习研究,回测分析,实盘交易部分未公开

55 Oct 04, 2022
[NeurIPS-2020] Self-paced Contrastive Learning with Hybrid Memory for Domain Adaptive Object Re-ID.

Self-paced Contrastive Learning (SpCL) The official repository for Self-paced Contrastive Learning with Hybrid Memory for Domain Adaptive Object Re-ID

Yixiao Ge 286 Dec 21, 2022
Code for our NeurIPS 2021 paper 'Exploiting the Intrinsic Neighborhood Structure for Source-free Domain Adaptation'

Exploiting the Intrinsic Neighborhood Structure for Source-free Domain Adaptation (NeurIPS 2021) Code for our NeurIPS 2021 paper 'Exploiting the Intri

Shiqi Yang 53 Dec 25, 2022
GNN4Traffic - This is the repository for the collection of Graph Neural Network for Traffic Forecasting

GNN4Traffic - This is the repository for the collection of Graph Neural Network for Traffic Forecasting

564 Jan 02, 2023
OoD Minimum Anomaly Score GAN - Code for the Paper 'OMASGAN: Out-of-Distribution Minimum Anomaly Score GAN for Sample Generation on the Boundary'

OMASGAN: Out-of-Distribution Minimum Anomaly Score GAN for Sample Generation on the Boundary Out-of-Distribution Minimum Anomaly Score GAN (OMASGAN) C

- 8 Sep 27, 2022
Library for machine learning stacking generalization.

stacked_generalization Implemented machine learning *stacking technic[1]* as handy library in Python. Feature weighted linear stacking is also availab

114 Jul 19, 2022
Pytorch Implementation of Value Retrieval with Arbitrary Queries for Form-like Documents.

Value Retrieval with Arbitrary Queries for Form-like Documents Introduction Pytorch Implementation of Value Retrieval with Arbitrary Queries for Form-

Salesforce 13 Sep 15, 2022
NAACL2021 - COIL Contextualized Lexical Retriever

COIL Repo for our NAACL paper, COIL: Revisit Exact Lexical Match in Information Retrieval with Contextualized Inverted List. The code covers learning

Luyu Gao 108 Dec 31, 2022
Mmdet benchmark with python

mmdet_benchmark 本项目是为了研究 mmdet 推断性能瓶颈,并且对其进行优化。 配置与环境 机器配置 CPU:Intel(R) Core(TM) i9-10900K CPU @ 3.70GHz GPU:NVIDIA GeForce RTX 3080 10GB 内存:64G 硬盘:1T

杨培文 (Yang Peiwen) 24 May 21, 2022
CNNs for Sentence Classification in PyTorch

Introduction This is the implementation of Kim's Convolutional Neural Networks for Sentence Classification paper in PyTorch. Kim's implementation of t

Shawn Ng 956 Dec 19, 2022
DeepOBS: A Deep Learning Optimizer Benchmark Suite

DeepOBS - A Deep Learning Optimizer Benchmark Suite DeepOBS is a benchmarking suite that drastically simplifies, automates and improves the evaluation

Aaron Bahde 7 May 12, 2020
Local trajectory planner based on a multilayer graph framework for autonomous race vehicles.

Graph-Based Local Trajectory Planner The graph-based local trajectory planner is python-based and comes with open interfaces as well as debug, visuali

TUM - Institute of Automotive Technology 160 Jan 04, 2023
Minimal diffusion models - Minimal code and simple experiments to play with Denoising Diffusion Probabilistic Models (DDPMs)

Minimal code and simple experiments to play with Denoising Diffusion Probabilist

Rithesh Kumar 16 Oct 06, 2022