Background-Click Supervision for Temporal Action Localization

Related tags

Deep LearningBackTAL
Overview

Background-Click Supervision for Temporal Action Localization

This repository is the official implementation of BackTAL. In this work, we study the temporal action localization under background-click supervision, and find the performance bottleneck of the existing approaches mainly comes from the background errors. Thus, we convert existing action-click supervision to the background-click supervision and develop a novel method, called BackTAL. Extensive experiments on three benchmarks are conducted, which demonstrate the high performance of the established BackTAL and the rationality of the proposed background-click supervision.

Illustrating the architecture of the proposed BackTAL

Requirements

To install requirements:

conda env create -f environment.yaml

Data Preparation

Download

Download pre-extracted I3D features of Thumos14, ActivityNet1.2 and HACS dataset from BaiduYun with code back.

Please ensure the data structure is as below
├── data
   └── Thumos14
       ├── val
           ├── video_validation_0000051.npz
           ├── video_validation_0000052.npz
           └── ...
       └── test
           ├── video_test_0000004.npz
           ├── video_test_0000006.npz
           └── ...
   └── ActivityNet1.2
       ├── training
           ├── v___dXUJsj3yo.npz
           ├── v___wPHayoMgw.npz
           └── ...
       └── validation
           ├── v__3I4nm2zF5Y.npz
           ├── v__8KsVaJLOYI.npz
           └── ...
   └── HACS
       ├── training
           ├── v_0095rqic1n8.npz
           ├── v_62VWugDz1MY.npz
           └── ...
       └── validation
           ├── v_008gY2B8Pf4.npz
           ├── v_00BcXeG1gC0.npz
           └── ...
     

Background-Click Annotations

The raw annotations of THUMOS14 dataset are under directory './data/THUMOS14/human_anns'.

Evaluation

Pre-trained Models

You can download checkpoints for Thumos14, ActivityNet1.2 and HACS dataset from BaiduYun with code back. These models are trained on Thumos14, ActivityNet1.2 or HACS using the configuration file under the directory "./experiments/". Please put these checkpoints under directory "./checkpoints".

Evaluation

Before running the code, please activate the conda environment.

To evaluate BackTAL model on Thumos14, run:

cd ./tools
python eval.py -dataset THUMOS14 -weight_file ../checkpoints/THUMOS14.pth

To evaluate BackTAL model on ActivityNet1.2, run:

cd ./tools
python eval.py -dataset ActivityNet1.2 -weight_file ../checkpoints/ActivityNet1.2.pth

To evaluate BackTAL model on HACS, run:

cd ./tools
python eval.py -dataset HACS -weight_file ../checkpoints/HACS.pth

Results

Our model achieves the following performance:

THUMOS14

threshold 0.3 0.4 0.5 0.6 0.7
mAP 54.4 45.5 36.3 26.2 14.8

ActivityNet v1.2

threshold average-mAP 0.50 0.75 0.95
mAP 27.0 41.5 27.3 4.7

HACS

threshold average-mAP 0.50 0.75 0.95
mAP 20.0 31.5 19.5 4.7

Training

To train the BackTAL model on THUMOS14 dataset, please run this command:

cd ./tools
python train.py -dataset THUMOS14

To train the BackTAL model on ActivityNet v1.2 dataset, please run this command:

cd ./tools
python train.py -dataset ActivityNet1.2

To train the BackTAL model on HACS dataset, please run this command:

cd ./tools
python train.py -dataset HACS

Citing BackTAL

@article{yang2021background,
  title={Background-Click Supervision for Temporal Action Localization},
  author={Yang, Le and Han, Junwei and Zhao, Tao and Lin, Tianwei and Zhang, Dingwen and Chen, Jianxin},
  journal={IEEE Transactions on Pattern Analysis and Machine Intelligence},
  year={2021},
  publisher={IEEE}
}

Contact

For any discussions, please contact [email protected].

Owner
LeYang
LeYang
Implementation of NÜWA, state of the art attention network for text to video synthesis, in Pytorch

NÜWA - Pytorch (wip) Implementation of NÜWA, state of the art attention network for text to video synthesis, in Pytorch. This repository will be popul

Phil Wang 463 Dec 28, 2022
Acute ischemic stroke dataset

AISD Acute ischemic stroke dataset contains 397 Non-Contrast-enhanced CT (NCCT) scans of acute ischemic stroke with the interval from symptom onset to

Kongming Liang 21 Sep 06, 2022
🧮 Matrix Factorization for Collaborative Filtering is just Solving an Adjoint Latent Dirichlet Allocation Model after All

Accompanying source code to the paper "Matrix Factorization for Collaborative Filtering is just Solving an Adjoint Latent Dirichlet Allocation Model A

Florian Wilhelm 39 Dec 03, 2022
Implementation of ViViT: A Video Vision Transformer

ViViT: A Video Vision Transformer Unofficial implementation of ViViT: A Video Vision Transformer. Notes: This is in WIP. Model 2 is implemented, Model

Rishikesh (ऋषिकेश) 297 Jan 06, 2023
InsightFace: 2D and 3D Face Analysis Project on MXNet and PyTorch

InsightFace: 2D and 3D Face Analysis Project on MXNet and PyTorch

Deep Insight 13.2k Jan 06, 2023
This solves the autonomous driving issue which is supported by deep learning technology. Given a video, it splits into images and predicts the angle of turning for each frame.

Self Driving Car An autonomous car (also known as a driverless car, self-driving car, and robotic car) is a vehicle that is capable of sensing its env

Sagor Saha 4 Sep 04, 2021
Self-Adaptable Point Processes with Nonparametric Time Decays

NPPDecay This is our implementation for the paper Self-Adaptable Point Processes with Nonparametric Time Decays, by Zhimeng Pan, Zheng Wang, Jeff M. P

zpan 2 Sep 24, 2022
Recurrent Neural Network Tutorial, Part 2 - Implementing a RNN in Python and Theano

Please read the blog post that goes with this code! Jupyter Notebook Setup System Requirements: Python, pip (Optional) virtualenv To start the Jupyter

Denny Britz 863 Dec 15, 2022
My solution for the 7th place / 245 in the Umoja Hack 2022 challenge

Umoja Hack 2022 : Insurance Claim Challenge My solution for the 7th place / 245 in the Umoja Hack 2022 challenge Umoja Hack Africa is a yearly hackath

Souames Annis 17 Jun 03, 2022
Weakly-supervised object detection.

Wetectron Wetectron is a software system that implements state-of-the-art weakly-supervised object detection algorithms. Project CVPR'20, ECCV'20 | Pa

NVIDIA Research Projects 342 Jan 05, 2023
PyTorch Implementations for DeeplabV3 and PSPNet

Pytorch-segmentation-toolbox DOC Pytorch code for semantic segmentation. This is a minimal code to run PSPnet and Deeplabv3 on Cityscape dataset. Shor

Zilong Huang 746 Dec 15, 2022
Official repository for the ICLR 2021 paper Evaluating the Disentanglement of Deep Generative Models with Manifold Topology

Official repository for the ICLR 2021 paper Evaluating the Disentanglement of Deep Generative Models with Manifold Topology Sharon Zhou, Eric Zelikman

Stanford Machine Learning Group 34 Nov 16, 2022
Food Drinks and groceries Images Multi Lingual (FooDI-ML) dataset.

Food Drinks and groceries Images Multi Lingual (FooDI-ML) dataset.

41 Jan 04, 2023
Linescanning - Package for (pre)processing of anatomical and (linescanning) fMRI data

line scanning repository This repository contains all of the tools used during the acquisition and postprocessing of line scanning data at the Spinoza

Jurjen Heij 4 Sep 14, 2022
Repository of continual learning papers

Continual learning paper repository This repository contains an incomplete (but dynamically updated) list of papers exploring continual learning in ma

29 Jan 05, 2023
The PyTorch implementation of Directed Graph Contrastive Learning (DiGCL), NeurIPS-2021

Directed Graph Contrastive Learning The PyTorch implementation of Directed Graph Contrastive Learning (DiGCL). In this paper, we present the first con

Tong Zekun 28 Jan 08, 2023
A PyTorch based deep learning library for drug pair scoring.

Documentation | External Resources | Datasets | Examples ChemicalX is a deep learning library for drug-drug interaction, polypharmacy side effect and

AstraZeneca 597 Dec 30, 2022
Exadel CompreFace is a free and open-source face recognition GitHub project

Exadel CompreFace is a leading free and open-source face recognition system Exadel CompreFace is a free and open-source face recognition service that

Exadel 2.6k Jan 04, 2023
Efficient Deep Learning Systems course

Efficient Deep Learning Systems This repository contains materials for the Efficient Deep Learning Systems course taught at the Faculty of Computer Sc

Max Ryabinin 173 Dec 29, 2022
Autoformer: Decomposition Transformers with Auto-Correlation for Long-Term Series Forecasting

Autoformer (NeurIPS 2021) Autoformer: Decomposition Transformers with Auto-Correlation for Long-Term Series Forecasting Time series forecasting is a c

THUML @ Tsinghua University 847 Jan 08, 2023