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
[CVPR 2021] A Peek Into the Reasoning of Neural Networks: Interpreting with Structural Visual Concepts

Visual-Reasoning-eXplanation [CVPR 2021 A Peek Into the Reasoning of Neural Networks: Interpreting with Structural Visual Concepts] Project Page | Vid

Andy_Ge 54 Dec 21, 2022
Structural Constraints on Information Content in Human Brain States

Structural Constraints on Information Content in Human Brain States Code accompanying the paper "The information content of brain states is explained

Leon Weninger 3 Sep 07, 2022
Ready-to-use code and tutorial notebooks to boost your way into few-shot image classification.

Easy Few-Shot Learning Ready-to-use code and tutorial notebooks to boost your way into few-shot image classification. This repository is made for you

Sicara 399 Jan 08, 2023
UniFormer - official implementation of UniFormer

UniFormer This repo is the official implementation of "Uniformer: Unified Transf

SenseTime X-Lab 573 Jan 04, 2023
PyTorch Implementation of Temporal Output Discrepancy for Active Learning, ICCV 2021

Temporal Output Discrepancy for Active Learning PyTorch implementation of Semi-Supervised Active Learning with Temporal Output Discrepancy, ICCV 2021.

Siyu Huang 33 Dec 06, 2022
RLDS stands for Reinforcement Learning Datasets

RLDS RLDS stands for Reinforcement Learning Datasets and it is an ecosystem of tools to store, retrieve and manipulate episodic data in the context of

Google Research 135 Jan 01, 2023
Repo for "TableParser: Automatic Table Parsing with Weak Supervision from Spreadsheets" at [email protected]

TableParser Repo for "TableParser: Automatic Table Parsing with Weak Supervision from Spreadsheets" at DS3 Lab 11 Dec 13, 2022

This script scrapes and stores the availability of timeslots for Car Driving Test at all RTA Serivce NSW centres in the state.

This script scrapes and stores the availability of timeslots for Car Driving Test at all RTA Serivce NSW centres in the state. Dependencies Account wi

Balamurugan Soundararaj 21 Dec 14, 2022
Example for AUAV 2022 with obstacle avoidance.

AUAV 2022 Sample This is a sample PX4 based quadrotor path planning framework based on Ubuntu 20.04 and ROS noetic for the IEEE Autonomous UAS 2022 co

James Goppert 11 Sep 16, 2022
"NAS-Bench-301 and the Case for Surrogate Benchmarks for Neural Architecture Search".

NAS-Bench-301 This repository containts code for the paper: "NAS-Bench-301 and the Case for Surrogate Benchmarks for Neural Architecture Search". The

AutoML-Freiburg-Hannover 57 Nov 30, 2022
Implementation of CVPR'21: RfD-Net: Point Scene Understanding by Semantic Instance Reconstruction

RfD-Net [Project Page] [Paper] [Video] RfD-Net: Point Scene Understanding by Semantic Instance Reconstruction Yinyu Nie, Ji Hou, Xiaoguang Han, Matthi

Yinyu Nie 162 Jan 06, 2023
Official Repsoitory for "Activate or Not: Learning Customized Activation." [CVPR 2021]

CVPR 2021 | Activate or Not: Learning Customized Activation. This repository contains the official Pytorch implementation of the paper Activate or Not

184 Dec 27, 2022
Compare outputs between layers written in Tensorflow and layers written in Pytorch

Compare outputs of Wasserstein GANs between TensorFlow vs Pytorch This is our testing module for the implementation of improved WGAN in Pytorch Prereq

Hung Nguyen 72 Dec 20, 2022
An e-commerce company wants to segment its customers and determine marketing strategies according to these segments.

customer_segmentation_with_rfm Business Problem : An e-commerce company wants to

Buse Yıldırım 3 Jan 06, 2022
QRec: A Python Framework for quick implementation of recommender systems (TensorFlow Based)

Introduction QRec is a Python framework for recommender systems (Supported by Python 3.7.4 and Tensorflow 1.14+) in which a number of influential and

Yu 1.4k Dec 30, 2022
A set of Deep Reinforcement Learning Agents implemented in Tensorflow.

Deep Reinforcement Learning Agents This repository contains a collection of reinforcement learning algorithms written in Tensorflow. The ipython noteb

Arthur Juliani 2.2k Jan 01, 2023
A clean and robust Pytorch implementation of PPO on continuous action space.

PPO-Continuous-Pytorch I found the current implementation of PPO on continuous action space is whether somewhat complicated or not stable. And this is

XinJingHao 56 Dec 16, 2022
This is the code for Compressing BERT: Studying the Effects of Weight Pruning on Transfer Learning

This is the code for Compressing BERT: Studying the Effects of Weight Pruning on Transfer Learning It includes /bert, which is the original BERT repos

Mitchell Gordon 11 Nov 15, 2022
AfriBERTa: Exploring the Viability of Pretrained Multilingual Language Models for Low-resourced Languages

AfriBERTa: Exploring the Viability of Pretrained Multilingual Language Models for Low-resourced Languages This repository contains the code for the pa

Kelechi 40 Nov 24, 2022
Proposal, Tracking and Segmentation (PTS): A Cascaded Network for Video Object Segmentation

Proposal, Tracking and Segmentation (PTS): A Cascaded Network for Video Object Segmentation By Qiang Zhou*, Zilong Huang*, Lichao Huang, Han Shen, Yon

Forest 117 Apr 01, 2022