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]).

[CVPR 2020] GAN Compression: Efficient Architectures for Interactive Conditional GANs

GAN Compression project | paper | videos | slides [NEW!] GAN Compression is accepted by T-PAMI! We released our T-PAMI version in the arXiv v4! [NEW!]

MIT HAN Lab 1k Jan 07, 2023
Code for "Reconstructing 3D Human Pose by Watching Humans in the Mirror", CVPR 2021 oral

Reconstructing 3D Human Pose by Watching Humans in the Mirror Qi Fang*, Qing Shuai*, Junting Dong, Hujun Bao, Xiaowei Zhou CVPR 2021 Oral The videos a

ZJU3DV 178 Dec 13, 2022
DeepLearning Anomalies Detection with Bluetooth Sensor Data

Final Year Project. Constructing models to create offline anomalies detection using Travel Time Data collected from Bluetooth sensors along the route.

1 Jan 10, 2022
Addon and nodes for working with structural biology and molecular data in Blender.

Molecular Nodes 🧬 🔬 💻 Buy Me a Coffee to Keep Development Going! Join a Community of Blender SciVis People! What is Molecular Nodes? Molecular Node

Brady Johnston 456 Jan 08, 2023
[CVPR 2021] "The Lottery Tickets Hypothesis for Supervised and Self-supervised Pre-training in Computer Vision Models" Tianlong Chen, Jonathan Frankle, Shiyu Chang, Sijia Liu, Yang Zhang, Michael Carbin, Zhangyang Wang

The Lottery Tickets Hypothesis for Supervised and Self-supervised Pre-training in Computer Vision Models Codes for this paper The Lottery Tickets Hypo

VITA 59 Dec 28, 2022
A simple Python configuration file operator.

A simple Python configuration file operator This project provides a common way to read configurations using config42. Installation It is possible to i

Scott Lau 2 Nov 08, 2021
Disturbing Target Values for Neural Network regularization: attacking the loss layer to prevent overfitting

Disturbing Target Values for Neural Network regularization: attacking the loss layer to prevent overfitting 1. Classification Task PyTorch implementat

Yongho Kim 0 Apr 24, 2022
Face uncertainty quantification or estimation using PyTorch.

Face-uncertainty-pytorch This is a demo code of face uncertainty quantification or estimation using PyTorch. The uncertainty of face recognition is af

Kaen 3 Sep 16, 2022
deep-table implements various state-of-the-art deep learning and self-supervised learning algorithms for tabular data using PyTorch.

deep-table implements various state-of-the-art deep learning and self-supervised learning algorithms for tabular data using PyTorch.

63 Oct 17, 2022
TalkNet 2: Non-Autoregressive Depth-Wise Separable Convolutional Model for Speech Synthesis with Explicit Pitch and Duration Prediction.

TalkNet 2 [WIP] TalkNet 2: Non-Autoregressive Depth-Wise Separable Convolutional Model for Speech Synthesis with Explicit Pitch and Duration Predictio

Rishikesh (ऋषिकेश) 69 Dec 17, 2022
Official implementation for TTT++: When Does Self-supervised Test-time Training Fail or Thrive

TTT++ This is an official implementation for TTT++: When Does Self-supervised Test-time Training Fail or Thrive? TL;DR: Online Feature Alignment + Str

VITA lab at EPFL 39 Dec 25, 2022
PG2Net: Personalized and Group PreferenceGuided Network for Next Place Prediction

PG2Net PG2Net:Personalized and Group Preference Guided Network for Next Place Prediction Datasets Experiment results on two Foursquare check-in datase

Urban Mobility 5 Dec 20, 2022
Certified Patch Robustness via Smoothed Vision Transformers

Certified Patch Robustness via Smoothed Vision Transformers This repository contains the code for replicating the results of our paper: Certified Patc

Madry Lab 35 Dec 14, 2022
NLG evaluation via Statistical Measures of Similarity: BaryScore, DepthScore, InfoLM

NLG evaluation via Statistical Measures of Similarity: BaryScore, DepthScore, InfoLM Automatic Evaluation Metric described in the papers BaryScore (EM

Pierre Colombo 28 Dec 28, 2022
The VeriNet toolkit for verification of neural networks

VeriNet The VeriNet toolkit is a state-of-the-art sound and complete symbolic interval propagation based toolkit for verification of neural networks.

9 Dec 21, 2022
Workshop Materials Delivered on 28/02/2022

intro-to-cnn-p1 Repo for hosting workshop materials delivered on 28/02/2022 Questions you will answer in this workshop Learning Objectives What are co

Beginners Machine Learning 5 Feb 28, 2022
Augmentation for Single-Image-Super-Resolution

SRAugmentation Augmentation for Single-Image-Super-Resolution Implimentation CutBlur Cutout CutMix Cutup CutMixup Blend RGBPermutation Identity OneOf

Yubo 6 Jun 27, 2022
Pytorch implementation of the paper "Enhancing Content Preservation in Text Style Transfer Using Reverse Attention and Conditional Layer Normalization"

Pytorch implementation of the paper "Enhancing Content Preservation in Text Style Transfer Using Reverse Attention and Conditional Layer Normalization"

Dongkyu Lee 4 Sep 18, 2022
Source code for Fathony, Sahu, Willmott, & Kolter, "Multiplicative Filter Networks", ICLR 2021.

Multiplicative Filter Networks This repository contains a PyTorch MFN implementation and code to perform & reproduce experiments from the ICLR 2021 pa

Bosch Research 66 Jan 04, 2023
PyTorch implementation of Octave Convolution with pre-trained Oct-ResNet and Oct-MobileNet models

octconv.pytorch PyTorch implementation of Octave Convolution in Drop an Octave: Reducing Spatial Redundancy in Convolutional Neural Networks with Octa

Duo Li 273 Dec 18, 2022