VIMPAC: Video Pre-Training via Masked Token Prediction and Contrastive Learning

Related tags

Deep Learningvimpac
Overview

VIMPAC: Video Pre-Training via Masked Token Prediction and Contrastive Learning

This is a release of our VIMPAC paper to illustrate the implementations. The pretrained checkpoints and scripts will be soon open-sourced in HuggingFace transformers.

Authors: Hao Tan, Jie Lei, Thomas Wolf, Mohit Bansal

Data Preprocessing

Please refer to video2token folder for the detailed README file.

For pre-training, the dataset is usually large, and we suggest to use FPS=2 during extraction. For downstream tasks, we suggest using FPS=16 that enables a higher frame rate for short videos.

We recommend to store the data locally at data/video_tokens. If different paths are used, please specify the path of VIDEO_CODE_PATHS and VIDEO_ANNO_PATHS in vimpac/data.py.

Pre-Trained Weights

We provide the pre-trained weights with their links. Please download the pre-trained weight and extract them under snap/.

Pre-Training

The default pre-training uses the HowTo100M dataset. The pre-training data could be switched to Kinetics-700 and other datasets by specifying the --dataset-name argument. We have validated that the mask-then-predict task works reasonablely well on Kinetics-700 datasets. However, the average length of video clips inside K-700 is 10 seconds thus not sure supporting the long-range contrastive learning.

Small Model

We first provide the script to pre-train a small model (6 layers, 512 dimensions, 256 frame-size, and 5 clip length):

bash scripts/pretrain/small.sh 0,1,2,3

We here annotate some essential arguments inside the pre-training scripts. For a full descriptions for all the arguments, please check param.py

We also provide two debugging options:

# bash scripts/pretrain/small.sh 0,1,2,3 --tqdm        # Show progress bar.
# bash scripts/pretrain/small.sh 0,1,2,3 --debug       # Only run a few steps per epoch.

Large Model

We follow BERT to pre-train our large model in two stages. The first stage pretrains for 90 epochs using frame-size 128 and clip-length 5. The second stage pretrains for 10 epochs using frame-size 256 and clip-length 5.

Scripts for the first stage:

bash scripts/pretrain/large.sh 0,1,2,3

Then we could directly run the script for the second stage without any further changes. It will load the last snapshot from the first stage, do interpolation for larger spatial size, and continue pre-training.

bash scripts/pretrain/large_frame256cont.sh 0,1,2,3

Fine-Tuning

After run the pre-training in pre-training or download the pre-trained weights from pre-trained-weights, we fine-tune the models on several downstream tasks. The arguments in these scripts are consistent with the hyperparameters in the paper. Please refer to Table 11 and Table 12 of our paper for a detailed list of all these hyperparameters.

SSV2

bash scripts/finetune/small_ssv2.sh 0,1,2,3

Diving48

bash scripts/finetune/small_diving48.sh 0,1,2,3

UCF101

bash scripts/finetune/small_ucf101.sh 0,1,2,3

HMDB51

bash scripts/finetune/small_hmdb51.sh 0,1,2,3

Change the Input Shape

Following ViT, we support the use of different input sizes from pre-training by interpolating the positional embedding. This is done by passing the --different-shape option. Otherwise, an error will pop up if the fine-tuning input shape is different from the pre-training. A larger input shape generally improves the results. We here take SSV2 as an example.

Longer clip length (10; default 5):

bash scripts/finetune/small_ssv2.sh 0,1,2,3 --different-shape --clip-len 10 --bs-per-gpu 4

Long clip length (10; default 5) + higher frame rate (4; default 2)

bash scripts/finetune/small_ssv2.sh 0,1,2,3 --different-shape --clip-len 10 --frame-rate 4 --bs-per-gpu 4

Long clip length (10; default 5) + higher frame rate (4; default 2) + larger input size (256; default 128). Please also make sure that VQ-VAE code with input-size 256 has been extracted as in Pre-processing.

bash scripts/finetune/small_ssv2.sh 0,1,2,3 --different-shape --clip-len 10 --frame-rate 4 --frame-size 256 --bs-per-gpu 2

Large Models

We provide scripts to run large models. Frame 128:

bash scripts/finetune/large_frame128_ucf101.sh 0,1,2,3

Frame 256:

bash scripts/finetune/large_frame256_ucf101.sh 0,1,2,3

The input shape could be changed as in change input shape. Our final model use the scripts of:

bash scripts/finetune/large_frame256_ucf101.sh 0,1,2,3 --different-shape --clip-len 10 --frame-rate 4 --frame-size 256 --bs-per-gpu 2

Acknowledgement

This work was granted access to the HPC resources of IDRIS under the allocation 20XX-AD011011621R1 made by GENCI. We thank Teven Le Scao and Victor Sanh for their help on the way.

Owner
Hao Tan
NLP @ UNC Chapel Hill
Hao Tan
Two-stage CenterNet

Probabilistic two-stage detection Two-stage object detectors that use class-agnostic one-stage detectors as the proposal network. Probabilistic two-st

Xingyi Zhou 1.1k Jan 03, 2023
Progressive Domain Adaptation for Object Detection

Progressive Domain Adaptation for Object Detection Implementation of our paper Progressive Domain Adaptation for Object Detection, based on pytorch-fa

96 Nov 25, 2022
😮The official implementation of "CoNeRF: Controllable Neural Radiance Fields" 😮

CoNeRF: Controllable Neural Radiance Fields This is the official implementation for "CoNeRF: Controllable Neural Radiance Fields" Project Page Paper V

Kacper Kania 61 Dec 24, 2022
Code for Neural-GIF: Neural Generalized Implicit Functions for Animating People in Clothing(ICCV21)

NeuralGIF Code for Neural-GIF: Neural Generalized Implicit Functions for Animating People in Clothing(ICCV21) We present Neural Generalized Implicit F

Garvita Tiwari 104 Nov 18, 2022
Geometric Deep Learning Extension Library for PyTorch

Documentation | Paper | Colab Notebooks | External Resources | OGB Examples PyTorch Geometric (PyG) is a geometric deep learning extension library for

Matthias Fey 16.5k Jan 08, 2023
Real-Time SLAM for Monocular, Stereo and RGB-D Cameras, with Loop Detection and Relocalization Capabilities

ORB-SLAM2 Authors: Raul Mur-Artal, Juan D. Tardos, J. M. M. Montiel and Dorian Galvez-Lopez (DBoW2) 13 Jan 2017: OpenCV 3 and Eigen 3.3 are now suppor

Raul Mur-Artal 7.8k Dec 30, 2022
A 3D sparse LBM solver implemented using Taichi

taichi_LBM3D Background Taichi_LBM3D is a 3D lattice Boltzmann solver with Multi-Relaxation-Time collision scheme and sparse storage structure impleme

Jianhui Yang 121 Jan 06, 2023
GraphLily: A Graph Linear Algebra Overlay on HBM-Equipped FPGAs

GraphLily: A Graph Linear Algebra Overlay on HBM-Equipped FPGAs GraphLily is the first FPGA overlay for graph processing. GraphLily supports a rich se

Cornell Zhang Research Group 39 Dec 13, 2022
This is an official implementation of our CVPR 2021 paper "Bottom-Up Human Pose Estimation Via Disentangled Keypoint Regression" (https://arxiv.org/abs/2104.02300)

Bottom-Up Human Pose Estimation Via Disentangled Keypoint Regression Introduction In this paper, we are interested in the bottom-up paradigm of estima

HRNet 367 Dec 27, 2022
Breast Cancer Detection 🔬 ITI "AI_Pro" Graduation Project

BreastCancerDetection - This program is designed to predict two severity of abnormalities associated with breast cancer cells: benign and malignant. Mammograms from MIAS is preprocessed and features

6 Nov 29, 2022
Structured Edge Detection Toolbox

################################################################### # # # Structure

Piotr Dollar 779 Jan 02, 2023
Some tentative models that incorporate label propagation to graph neural networks for graph representation learning in nodes, links or graphs.

Some tentative models that incorporate label propagation to graph neural networks for graph representation learning in nodes, links or graphs.

zshicode 1 Nov 18, 2021
Cross-platform CLI tool to generate your Github profile's stats and summary.

ghs Cross-platform CLI tool to generate your Github profile's stats and summary. Preview Hop on to examples for other usecases. Jump to: Installation

HackerRank 134 Dec 20, 2022
Sample code and notebooks for Vertex AI, the end-to-end machine learning platform on Google Cloud

Google Cloud Vertex AI Samples Welcome to the Google Cloud Vertex AI sample repository. Overview The repository contains notebooks and community conte

Google Cloud Platform 560 Dec 31, 2022
A PyTorch library for Vision Transformers

VFormer A PyTorch library for Vision Transformers Getting Started Read the contributing guidelines in CONTRIBUTING.rst to learn how to start contribut

Society for Artificial Intelligence and Deep Learning 142 Nov 28, 2022
Code & Models for Temporal Segment Networks (TSN) in ECCV 2016

Temporal Segment Networks (TSN) We have released MMAction, a full-fledged action understanding toolbox based on PyTorch. It includes implementation fo

1.4k Jan 01, 2023
Discord-Protect is a simple discord bot allowing you to have some security on your discord server by ordering a captcha to the user who joins your server.

Discord-Protect Discord-Protect is a simple discord bot allowing you to have some security on your discord server by ordering a captcha to the user wh

Tir Omar 2 Oct 28, 2021
Collision risk estimation using stochastic motion models

collision_risk_estimation Collision risk estimation using stochastic motion models. This is a new approach, based on stochastic models, to predict the

Unmesh 7 Jun 26, 2022
COVINS -- A Framework for Collaborative Visual-Inertial SLAM and Multi-Agent 3D Mapping

COVINS -- A Framework for Collaborative Visual-Inertial SLAM and Multi-Agent 3D Mapping Version 1.0 COVINS is an accurate, scalable, and versatile vis

ETHZ V4RL 183 Dec 27, 2022
This was initially the repo for the project of [email protected] of Asaf Mazar, Millad Kassaie and Georgios Chochlakis named "Powered by the Will? Exploring Lay Theories of Behavior Change through Social Media"

Subreddit Analysis This repo includes tools for Subreddit analysis, originally developed for our class project of PSYC 626 in USC, titled "Powered by

Georgios Chochlakis 1 Dec 17, 2021