Official Code for VideoLT: Large-scale Long-tailed Video Recognition (ICCV 2021)

Overview

Pytorch Code for VideoLT

[Website][Paper]

Updates

  • [10/29/2021] Features uploaded to Google Drive, for access please send us an e-mail: zhangxing18 at fudan.edu.cn
  • [09/28/2021] Features uploaded to Aliyun Drive(deprecated), for access please send us an e-mail: zhangxing18 at fudan.edu.cn
  • [08/23/2021] Checkpoint links uploaded, sorry we are handling campus network bandwidth limitation, dataset will be released in this weeek.
  • [08/15/2021] Code released. Dataset download links and checkpoints links will be updated in a week.
  • [07/29/2021] Dataset released, visit https://videolt.github.io/ for downloading.
  • [07/23/2021] VideoLT is accepted by ICCV2021.

concept

Overview

VideoLT is a large-scale long-tailed video recognition dataset, as a step toward real-world video recognition. We provide VideoLT dataset and long-tailed baselines in this repo including:

Data Preparation

Please visit https://videolt.github.io/ to obtain download links. We provide raw videos and extracted features.

For using extracted features, please modify dataset/dutils.py and set the correct path to features.

Model Zoo

The baseline scripts and checkpoints are provided in MODELZOO.md.

FrameStack

FrameStack is simple yet effective approach for long-tailed video recognition which re-samples training data at the frame level and adopts a dynamic sampling strategy based on knowledge learned by the network. The rationale behind FrameStack is to dynamically sample more frames from videos in tail classes and use fewer frames for those from head classes.

framestack

Usage

Requirement

pip install -r requirements.txt

Prepare Data Path

  1. Modify FEATURE_NAME, PATH_TO_FEATURE and FEATURE_DIM in dataset/dutils.py.

  2. Set ROOT in dataset/dutils.py to labels folder. The directory structure is:

    labels
    |-- count-labels-train.lst
    |-- test.lst
    |-- test_videofolder.txt
    |-- train.lst
    |-- train_videofolder.txt
    |-- val_videofolder.txt
    `-- validate.lst

Train

We provide scripts for training. Please refer to MODELZOO.md.

Example training scripts:

FEATURE_NAME='ResNet101'

export CUDA_VISIBLE_DEVICES='2'
python base_main.py  \
     --augment "mixup" \
     --feature_name $FEATURE_NAME \
     --lr 0.0001 \
     --gd 20 --lr_steps 30 60 --epochs 100 \
     --batch-size 128 -j 16 \
     --eval-freq 5 \
     --print-freq 20 \
     --root_log=$FEATURE_NAME-log \
     --root_model=$FEATURE_NAME'-checkpoints' \
     --store_name=$FEATURE_NAME'_bs128_lr0.0001_lateavg_mixup' \
     --num_class=1004 \
     --model_name=NonlinearClassifier \
     --train_num_frames=60 \
     --val_num_frames=150 \
     --loss_func=BCELoss \

Note: Set args.resample, args.augment and args.loss_func can apply multiple long-tailed stratigies.

Options:

    args.resample: ['None', 'CBS','SRS']
    args.augment : ['None', 'mixup', 'FrameStack']
    args.loss_func: ['BCELoss', 'LDAM', 'EQL', 'CBLoss', 'FocalLoss']

Test

We provide scripts for testing in scripts. Modify CKPT to saved checkpoints.

Example testing scripts:

FEATURE_NAME='ResNet101'
CKPT='VideoLT_checkpoints/ResNet-101/ResNet101_bs128_lr0.0001_lateavg_mixup/ckpt.best.pth.tar'

export CUDA_VISIBLE_DEVICES='1'
python base_test.py \
     --resume $CKPT \
     --feature_name $FEATURE_NAME \
     --batch-size 128 -j 16 \
     --print-freq 20 \
     --num_class=1004 \
     --model_name=NonlinearClassifier \
     --train_num_frames=60 \
     --val_num_frames=150 \
     --loss_func=BCELoss \

Citing

If you find VideoLT helpful for your research, please consider citing:

@misc{zhang2021videolt,
title={VideoLT: Large-scale Long-tailed Video Recognition}, 
author={Xing Zhang and Zuxuan Wu and Zejia Weng and Huazhu Fu and Jingjing Chen and Yu-Gang Jiang and Larry Davis},
year={2021},
eprint={2105.02668},
archivePrefix={arXiv},
primaryClass={cs.CV}
}
Owner
Skye
Soul Programmer & Science Enthusiast
Skye
It's a implement of this paper:Relation extraction via Multi-Level attention CNNs

Relation Classification via Multi-Level Attention CNNs It's a implement of this paper:Relation Classification via Multi-Level Attention CNNs. Training

Aybss 2 Nov 04, 2022
Implementation of MA-Trace - a general-purpose multi-agent RL algorithm for cooperative environments.

Off-Policy Correction For Multi-Agent Reinforcement Learning This repository is the official implementation of Off-Policy Correction For Multi-Agent R

4 Aug 18, 2022
Code for "CloudAAE: Learning 6D Object Pose Regression with On-line Data Synthesis on Point Clouds" @ICRA2021

CloudAAE This is an tensorflow implementation of "CloudAAE: Learning 6D Object Pose Regression with On-line Data Synthesis on Point Clouds" Files log:

Gee 35 Nov 14, 2022
Code for "Intra-hour Photovoltaic Generation Forecasting based on Multi-source Data and Deep Learning Methods."

pv_predict_unet-lstm Code for "Intra-hour Photovoltaic Generation Forecasting based on Multi-source Data and Deep Learning Methods." IEEE Transactions

FolkScientistInDL 8 Oct 08, 2022
PyTorch implementation of our ICCV2021 paper: StructDepth: Leveraging the structural regularities for self-supervised indoor depth estimation

StructDepth PyTorch implementation of our ICCV2021 paper: StructDepth: Leveraging the structural regularities for self-supervised indoor depth estimat

SJTU-ViSYS 112 Nov 28, 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
The Dual Memory is build from a simple CNN for the deep memory and Linear Regression fro the fast Memory

Simple-DMA a simple Dual Memory Architecture for classifications. based on the paper Dual-Memory Deep Learning Architectures for Lifelong Learning of

1 Jan 27, 2022
A Keras implementation of YOLOv3 (Tensorflow backend)

keras-yolo3 Introduction A Keras implementation of YOLOv3 (Tensorflow backend) inspired by allanzelener/YAD2K. Quick Start Download YOLOv3 weights fro

7.1k Jan 03, 2023
:fire: 2D and 3D Face alignment library build using pytorch

Face Recognition Detect facial landmarks from Python using the world's most accurate face alignment network, capable of detecting points in both 2D an

Adrian Bulat 6k Dec 31, 2022
SCAN: Learning to Classify Images without Labels, incl. SimCLR. [ECCV 2020]

Learning to Classify Images without Labels This repo contains the Pytorch implementation of our paper: SCAN: Learning to Classify Images without Label

Wouter Van Gansbeke 1.1k Dec 30, 2022
3D-Reconstruction 基于深度学习方法的单目多视图三维重建

基于深度学习方法的单目多视图三维重建 Part I 三维重建 代码:Part1 技术文档:[Markdown] [PDF] 原始图像:Original Images 点云结果:Point Cloud Results-1

HMT_Curo 19 Dec 26, 2022
7th place solution of Human Protein Atlas - Single Cell Classification on Kaggle

kaggle-hpa-2021-7th-place-solution Code for 7th place solution of Human Protein Atlas - Single Cell Classification on Kaggle. A description of the met

8 Jul 09, 2021
LSTMs (Long Short Term Memory) RNN for prediction of price trends

Price Prediction with Recurrent Neural Networks LSTMs BTC-USD price prediction with deep learning algorithm. Artificial Neural Networks specifically L

5 Nov 12, 2021
Framework to build and train RL algorithms

RayLink RayLink is a RL framework used to build and train RL algorithms. RayLink was used to build a RL framework, and tested in a large-scale multi-a

Bytedance Inc. 32 Oct 07, 2022
Chinese named entity recognization with BiLSTM using Keras

Chinese named entity recognization (Bilstm with Keras) Project Structure ./ ├── README.md ├── data │   ├── README.md │   ├── data 数据集 │   │   ├─

1 Dec 17, 2021
User-friendly bulk RNAseq deconvolution using simulated annealing

Welcome to cellanneal - The user-friendly application for deconvolving omics data sets. cellanneal is an application for deconvolving biological mixtu

11 Dec 16, 2022
Code for "The Box Size Confidence Bias Harms Your Object Detector"

The Box Size Confidence Bias Harms Your Object Detector - Code Disclaimer: This repository is for research purposes only. It is designed to maintain r

Johannes G. 24 Dec 07, 2022
A "gym" style toolkit for building lightweight Neural Architecture Search systems

A "gym" style toolkit for building lightweight Neural Architecture Search systems

Jack Turner 12 Nov 05, 2022
LinkNet - This repository contains our Torch7 implementation of the network developed by us at e-Lab.

LinkNet This repository contains our Torch7 implementation of the network developed by us at e-Lab. You can go to our blogpost or read the article Lin

e-Lab 158 Nov 11, 2022
[CVPR 2020] Transform and Tell: Entity-Aware News Image Captioning

Transform and Tell: Entity-Aware News Image Captioning This repository contains the code to reproduce the results in our CVPR 2020 paper Transform and

Alasdair Tran 85 Dec 13, 2022