Foreground-Action Consistency Network for Weakly Supervised Temporal Action Localization

Overview

FAC-Net

Foreground-Action Consistency Network for Weakly Supervised Temporal Action Localization
Linjiang Huang (CUHK), Liang Wang (CASIA), Hongsheng Li (CUHK)

Paper: arXiv, ICCV

Overview

We argue that existing methods for weakly-supervised temporal activity localization cannot guarantee the foreground-action consistency, that is, the foreground and actions are mutually inclusive. Therefore, we propose a novel method named Foreground-Action Consistency Network (FAC-Net) to address this issue. The experimental results on THUMOS14 are as below.

Method \ mAP(%) @0.1 @0.2 @0.3 @0.4 @0.5 @0.6 @0.7 AVG
UntrimmedNet 44.4 37.7 28.2 21.1 13.7 - - -
STPN 52.0 44.7 35.5 25.8 16.9 9.9 4.3 27.0
W-TALC 55.2 49.6 40.1 31.1 22.8 - 7.6 -
AutoLoc - - 35.8 29.0 21.2 13.4 5.8 -
CleanNet - - 37.0 30.9 23.9 13.9 7.1 -
MAAN 59.8 50.8 41.1 30.6 20.3 12.0 6.9 31.6
CMCS 57.4 50.8 41.2 32.1 23.1 15.0 7.0 32.4
BM 60.4 56.0 46.6 37.5 26.8 17.6 9.0 36.3
RPN 62.3 57.0 48.2 37.2 27.9 16.7 8.1 36.8
DGAM 60.0 54.2 46.8 38.2 28.8 19.8 11.4 37.0
TSCN 63.4 57.6 47.8 37.7 28.7 19.4 10.2 37.8
EM-MIL 59.1 52.7 45.5 36.8 30.5 22.7 16.4 37.7
BaS-Net 58.2 52.3 44.6 36.0 27.0 18.6 10.4 35.3
A2CL-PT 61.2 56.1 48.1 39.0 30.1 19.2 10.6 37.8
ACM-BANet 64.6 57.7 48.9 40.9 32.3 21.9 13.5 39.9
HAM-Net 65.4 59.0 50.3 41.1 31.0 20.7 11.1 39.8
UM 67.5 61.2 52.3 43.4 33.7 22.9 12.1 41.9
FAC-Net (Ours) 67.6 62.1 52.6 44.3 33.4 22.5 12.7 42.2

Prerequisites

Recommended Environment

  • Python 3.6
  • Pytorch 1.2
  • Tensorboard Logger
  • CUDA 10.0

Data Preparation

  1. Prepare THUMOS'14 dataset.

    • We recommend using features and annotations provided by this repo.
  2. Place the features and annotations inside a dataset/Thumos14reduced/ folder.

Usage

Training

You can easily train the model by running the provided script.

  • Refer to train_options.py. Modify the argument of dataset-root to the path of your dataset folder.

  • Run the command below.

$ python train_main.py --run-type 0 --model-id 1   # rgb stream
$ python train_main.py --run-type 1 --model-id 2   # flow stream

Make sure you use different model-id for RGB and optical flow. Models are saved in ./ckpt/dataset_name/model_id/

Evaulation

The trained model can be found here. Please change the file name to xxx.pkl (e.g., 100.pkl) and put it into ./ckpt/dataset_name/model_id/. You can evaluate the model referring to the two stream evaluation process.

Single stream evaluation

  • Run the command below.
$ python train_main.py --pretrained --run-type 2 --model-id 1 --load-epoch 100  # rgb stream
$ python train_main.py --pretrained --run-type 3 --model-id 2 --load-epoch 100  # flow stream

load-epoch refers to the epoch of the best model. The best model would not always occur at 100 epoch, please refer to the log in the same folder of saved models to set the load epoch of the best model. Make sure you set the right model-id that corresponds to the model-id during training.

Two stream evaluation

  • Run the command below using our provided models.
$ python test_main.py --rgb-model-id 1 --flow-model-id 2 --rgb-load-epoch 100 --flow-load-epoch 100

References

We referenced the repos below for the code.

If you find this code useful, please cite our paper.

@InProceedings{Huang_2021_ICCV,
    author    = {Huang, Linjiang and Wang, Liang and Li, Hongsheng},
    title     = {Foreground-Action Consistency Network for Weakly Supervised Temporal Action Localization},
    booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)},
    month     = {October},
    year      = {2021},
    pages     = {8002-8011}
}

Contact

If you have any question or comment, please contact the first author of the paper - Linjiang Huang ([email protected]).

The GitHub repository for the paper: “Time Series is a Special Sequence: Forecasting with Sample Convolution and Interaction“.

SCINet This is the original PyTorch implementation of the following work: Time Series is a Special Sequence: Forecasting with Sample Convolution and I

386 Jan 01, 2023
Pytorch implementation of "Training a 85.4% Top-1 Accuracy Vision Transformer with 56M Parameters on ImageNet"

Token Labeling: Training an 85.4% Top-1 Accuracy Vision Transformer with 56M Parameters on ImageNet (arxiv) This is a Pytorch implementation of our te

蒋子航 383 Dec 27, 2022
Codes for 'Dual Parameterization of Sparse Variational Gaussian Processes'

Dual Parameterization of Sparse Variational Gaussian Processes Documentation | Notebooks | API reference Introduction This repository is the official

AaltoML 7 Dec 23, 2022
Implementation of Neural Distance Embeddings for Biological Sequences (NeuroSEED) in PyTorch

Neural Distance Embeddings for Biological Sequences Official implementation of Neural Distance Embeddings for Biological Sequences (NeuroSEED) in PyTo

Gabriele Corso 56 Dec 23, 2022
Official Pytorch implementation of "CLIPstyler:Image Style Transfer with a Single Text Condition"

CLIPstyler Official Pytorch implementation of "CLIPstyler:Image Style Transfer with a Single Text Condition" Environment Pytorch 1.7.1, Python 3.6 $ c

203 Dec 30, 2022
Vision-Language Transformer and Query Generation for Referring Segmentation (ICCV 2021)

Vision-Language Transformer and Query Generation for Referring Segmentation Please consider citing our paper in your publications if the project helps

Henghui Ding 143 Dec 23, 2022
The repo for the paper "I3CL: Intra- and Inter-Instance Collaborative Learning for Arbitrary-shaped Scene Text Detection".

I3CL: Intra- and Inter-Instance Collaborative Learning for Arbitrary-shaped Scene Text Detection Updates | Introduction | Results | Usage | Citation |

33 Jan 05, 2023
A collection of models for image<->text generation in ACM MM 2021.

Bi-directional Image and Text Generation UMT-BITG (image & text generator) Unifying Multimodal Transformer for Bi-directional Image and Text Generatio

Multimedia Research 63 Oct 30, 2022
On the Analysis of French Phonetic Idiosyncrasies for Accent Recognition

On the Analysis of French Phonetic Idiosyncrasies for Accent Recognition With the spirit of reproducible research, this repository contains codes requ

0 Feb 24, 2022
UnsupervisedR&R: Unsupervised Pointcloud Registration via Differentiable Rendering

UnsupervisedR&R: Unsupervised Pointcloud Registration via Differentiable Rendering This repository holds all the code and data for our recent work on

Mohamed El Banani 118 Dec 06, 2022
Genetic Algorithm, Particle Swarm Optimization, Simulated Annealing, Ant Colony Optimization Algorithm,Immune Algorithm, Artificial Fish Swarm Algorithm, Differential Evolution and TSP(Traveling salesman)

scikit-opt Swarm Intelligence in Python (Genetic Algorithm, Particle Swarm Optimization, Simulated Annealing, Ant Colony Algorithm, Immune Algorithm,A

郭飞 3.7k Jan 03, 2023
Main repository for the HackBio'2021 Virtual Internship Experience for #Team-Greider ❤️

Hello 🤟 #Team-Greider The team of 20 people for HackBio'2021 Virtual Bioinformatics Internship 💝 🖨️ 👨‍💻 HackBio: https://thehackbio.com 💬 Ask us

Siddhant Sharma 7 Oct 20, 2022
Implementation of MeMOT - Multi-Object Tracking with Memory - in Pytorch

MeMOT - Pytorch (wip) Implementation of MeMOT - Multi-Object Tracking with Memory - in Pytorch. This paper is just one in a line of work, but importan

Phil Wang 15 May 09, 2022
This repository contains the code for using the H3DS dataset introduced in H3D-Net: Few-Shot High-Fidelity 3D Head Reconstruction

H3DS Dataset This repository contains the code for using the H3DS dataset introduced in H3D-Net: Few-Shot High-Fidelity 3D Head Reconstruction Access

Crisalix 72 Dec 10, 2022
TorchCV: A PyTorch-Based Framework for Deep Learning in Computer Vision

TorchCV: A PyTorch-Based Framework for Deep Learning in Computer Vision @misc{you2019torchcv, author = {Ansheng You and Xiangtai Li and Zhen Zhu a

Donny You 2.2k Jan 06, 2023
Code for the paper One Thing One Click: A Self-Training Approach for Weakly Supervised 3D Semantic Segmentation, CVPR 2021.

One Thing One Click One Thing One Click: A Self-Training Approach for Weakly Supervised 3D Semantic Segmentation (CVPR2021) Code for the paper One Thi

44 Dec 12, 2022
Implementation of ICCV19 Paper "Learning Two-View Correspondences and Geometry Using Order-Aware Network"

OANet implementation Pytorch implementation of OANet for ICCV'19 paper "Learning Two-View Correspondences and Geometry Using Order-Aware Network", by

Jiahui Zhang 225 Dec 05, 2022
A object detecting neural network powered by the yolo architecture and leveraging the PyTorch framework and associated libraries.

Yolo-Powered-Detector A object detecting neural network powered by the yolo architecture and leveraging the PyTorch framework and associated libraries

Luke Wilson 1 Dec 03, 2021
SCALoss: Side and Corner Aligned Loss for Bounding Box Regression (AAAI2022).

SCALoss PyTorch implementation of the paper "SCALoss: Side and Corner Aligned Loss for Bounding Box Regression" (AAAI 2022). Introduction IoU-based lo

TuZheng 20 Sep 07, 2022
SberSwap Video Swap base on deep learning

SberSwap Video Swap base on deep learning

Sber AI 431 Jan 03, 2023