Official Pytorch implementation for Deep Contextual Video Compression, NeurIPS 2021

Related tags

Deep LearningDCVC
Overview

Introduction

Official Pytorch implementation for Deep Contextual Video Compression, NeurIPS 2021

Prerequisites

  • Python 3.8 and conda, get Conda
  • CUDA 11.0
  • Environment
    conda create -n $YOUR_PY38_ENV_NAME python=3.8
    conda activate $YOUR_PY38_ENV_NAME
    
    pip install torch==1.7.1+cu110 torchvision==0.8.2+cu110 torchaudio==0.7.2 -f https://download.pytorch.org/whl/torch_stable.html
    python -m pip install -r requirements.txt
    

Test dataset

Currenlty the spatial resolution of video needs to be cropped into the integral times of 64.

The dataset format can be seen in dataset_config_example.json.

For example, one video of HEVC Class B can be prepared as:

  • Crop the original YUV via ffmpeg:
    ffmpeg -pix_fmt yuv420p  -s 1920x1080 -i  BasketballDrive_1920x1080_50.yuv -vf crop=1920:1024:0:0 BasketballDrive_1920x1024_50.yuv
    
  • Make the video path:
    mkdir BasketballDrive_1920x1024_50
    
  • Convert YUV to PNG:
    ffmpeg -pix_fmt yuv420p -s 1920x1024 -i BasketballDrive_1920x1024_50.yuv   -f image2 BasketballDrive_1920x1024_50/im%05d.png
    

At last, the folder structure of dataset is like:

/media/data/HEVC_B/
    * BQTerrace_1920x1024_60/
        - im00001.png
        - im00002.png
        - im00003.png
        - ...
    * BasketballDrive_1920x1024_50/
        - im00001.png
        - im00002.png
        - im00003.png
        - ...
    * ...
/media/data/HEVC_D
/media/data/HEVC_C/
...

Pretrained models

  • Download CompressAI models

    cd checkpoints/
    python download_compressai_models.py
    cd ..
    
  • Download DCVC models and put them into /checkpoints folder.

Test DCVC

Example of test the PSNR model:

python test_video.py --i_frame_model_name cheng2020-anchor  --i_frame_model_path  checkpoints/cheng2020-anchor-3-e49be189.pth.tar  checkpoints/cheng2020-anchor-4-98b0b468.pth.tar   checkpoints/cheng2020-anchor-5-23852949.pth.tar   checkpoints/cheng2020-anchor-6-4c052b1a.pth.tar  --test_config     dataset_config_example.json  --cuda true --cuda_device 0,1,2,3   --worker 4   --output_json_result_path  DCVC_result_psnr.json    --model_type psnr  --recon_bin_path recon_bin_folder_psnr --model_path checkpoints/model_dcvc_quality_0_psnr.pth  checkpoints/model_dcvc_quality_1_psnr.pth checkpoints/model_dcvc_quality_2_psnr.pth checkpoints/model_dcvc_quality_3_psnr.pth

Example of test the MSSSIM model:

python test_video.py --i_frame_model_name bmshj2018-hyperprior  --i_frame_model_path  checkpoints/bmshj2018-hyperprior-ms-ssim-3-92dd7878.pth.tar checkpoints/bmshj2018-hyperprior-ms-ssim-4-4377354e.pth.tar    checkpoints/bmshj2018-hyperprior-ms-ssim-5-c34afc8d.pth.tar    checkpoints/bmshj2018-hyperprior-ms-ssim-6-3a6d8229.pth.tar   --test_config   dataset_config_example.json  --cuda true --cuda_device 0,1,2,3   --worker 4   --output_json_result_path  DCVC_result_msssim.json  --model_type msssim  --recon_bin_path recon_bin_folder_msssim --model_path checkpoints/model_dcvc_quality_0_msssim.pth checkpoints/model_dcvc_quality_1_msssim.pth checkpoints/model_dcvc_quality_2_msssim.pth checkpoints/model_dcvc_quality_3_msssim.pth

It is recommended that the --worker number is equal to your GPU number.

Acknowledgement

The implementation is based on CompressAI and PyTorchVideoCompression. The model weights of intra coding come from CompressAI.

Citation

If you find this work useful for your research, please cite:

@article{li2021deep,
  title={Deep Contextual Video Compression},
  author={Li, Jiahao and Li, Bin and Lu, Yan},
  journal={Advances in Neural Information Processing Systems},
  volume={34},
  year={2021}
}
Visualizing Yolov5's layers using GradCam

YOLO-V5 GRADCAM I constantly desired to know to which part of an object the object-detection models pay more attention. So I searched for it, but I di

Pooya Mohammadi Kazaj 200 Jan 01, 2023
“袋鼯麻麻——智能购物平台”能够精准地定位识别每一个商品

“袋鼯麻麻——智能购物平台”能够精准地定位识别每一个商品,并且能够返回完整地购物清单及顾客应付的实际商品总价格,极大地降低零售行业实际运营过程中巨大的人力成本,提升零售行业无人化、自动化、智能化水平。

thomas-yanxin 192 Jan 05, 2023
Explainability for Vision Transformers (in PyTorch)

Explainability for Vision Transformers (in PyTorch) This repository implements methods for explainability in Vision Transformers

Jacob Gildenblat 442 Jan 04, 2023
Western-3DSlicer-Modules - Point-Set Registrations for Ultrasound Probe Calibrations

Point-Set Registrations for Ultrasound Probe Calibrations -Undergraduate Thesis-

Matteo Tanzi 0 May 04, 2022
Use of Attention Gates in a Convolutional Neural Network / Medical Image Classification and Segmentation

Attention Gated Networks (Image Classification & Segmentation) Pytorch implementation of attention gates used in U-Net and VGG-16 models. The framewor

Ozan Oktay 1.6k Dec 30, 2022
ONNX-PackNet-SfM: Python scripts for performing monocular depth estimation using the PackNet-SfM model in ONNX

Python scripts for performing monocular depth estimation using the PackNet-SfM model in ONNX

Ibai Gorordo 14 Dec 09, 2022
Dynamic Neural Representational Decoders for High-Resolution Semantic Segmentation

Dynamic Neural Representational Decoders for High-Resolution Semantic Segmentation Requirements This repository needs mmsegmentation Training To train

Adelaide Intelligent Machines (AIM) Group 7 Sep 12, 2022
DROPO: Sim-to-Real Transfer with Offline Domain Randomization

DROPO: Sim-to-Real Transfer with Offline Domain Randomization Gabriele Tiboni, Karol Arndt, Ville Kyrki. This repository contains the code for the pap

Gabriele Tiboni 8 Dec 19, 2022
PyTorch implementation of InstaGAN: Instance-aware Image-to-Image Translation

InstaGAN: Instance-aware Image-to-Image Translation Warning: This repo contains a model which has potential ethical concerns. Remark that the task of

Sangwoo Mo 827 Dec 29, 2022
Perturb-and-max-product: Sampling and learning in discrete energy-based models

Perturb-and-max-product: Sampling and learning in discrete energy-based models This repo contains code for reproducing the results in the paper Pertur

Vicarious 2 Mar 14, 2022
the official code for ICRA 2021 Paper: "Multimodal Scale Consistency and Awareness for Monocular Self-Supervised Depth Estimation"

G2S This is the official code for ICRA 2021 Paper: Multimodal Scale Consistency and Awareness for Monocular Self-Supervised Depth Estimation by Hemang

NeurAI 4 Jul 27, 2022
(ImageNet pretrained models) The official pytorch implemention of the TPAMI paper "Res2Net: A New Multi-scale Backbone Architecture"

Res2Net The official pytorch implemention of the paper "Res2Net: A New Multi-scale Backbone Architecture" Our paper is accepted by IEEE Transactions o

Res2Net Applications 928 Dec 29, 2022
Sandbox for training deep learning networks

Deep learning networks This repo is used to research convolutional networks primarily for computer vision tasks. For this purpose, the repo contains (

Oleg Sémery 2.7k Jan 01, 2023
Python script that analyses the given datasets and comes up with the best polynomial regression representation with the smallest polynomial degree possible

Python script that analyses the given datasets and comes up with the best polynomial regression representation with the smallest polynomial degree possible, to be the most reliable with the least com

Nikolas B Virionis 2 Aug 01, 2022
This is an example of object detection on Micro bacterium tuberculosis using Mask-RCNN

Mask-RCNN on Mycobacterium tuberculosis This is an example of object detection on Mycobacterium Tuberculosis using Mask RCNN. Implement of Mask R-CNN

Jun-En Ding 1 Sep 16, 2021
End-To-End Memory Network using Tensorflow

MemN2N Implementation of End-To-End Memory Networks with sklearn-like interface using Tensorflow. Tasks are from the bAbl dataset. Get Started git clo

Dominique Luna 339 Oct 27, 2022
Tools for the Cleveland State Human Motion and Control Lab

Introduction This is a collection of tools that are helpful for gait analysis. Some are specific to the needs of the Human Motion and Control Lab at C

CSU Human Motion and Control Lab 88 Dec 16, 2022
Breaking Shortcut: Exploring Fully Convolutional Cycle-Consistency for Video Correspondence Learning

Breaking Shortcut: Exploring Fully Convolutional Cycle-Consistency for Video Correspondence Learning Yansong Tang *, Zhenyu Jiang *, Zhenda Xie *, Yue

Zhenyu Jiang 12 Nov 16, 2022
📚 A collection of Jupyter notebooks for learning and experimenting with OpenVINO 👓

A collection of ready-to-run Python* notebooks for learning and experimenting with OpenVINO developer tools. The notebooks are meant to provide an introduction to OpenVINO basics and teach developers

OpenVINO Toolkit 840 Jan 03, 2023
Style-based Neural Drum Synthesis with GAN inversion

Style-based Drum Synthesis with GAN Inversion Demo TensorFlow implementation of a style-based version of the adversarial drum synth (ADS) from the pap

Sound and Music Analysis (SoMA) Group 29 Nov 19, 2022