Playable Video Generation

Overview

Playable Video Generation




Playable Video Generation
Willi Menapace, Stéphane Lathuilière, Sergey Tulyakov, Aliaksandr Siarohin, Elisa Ricci

Paper: ArXiv
Supplementary: Website
Demo: Try it Live

Abstract: This paper introduces the unsupervised learning problem of playable video generation (PVG). In PVG, we aim at allowing a user to control the generated video by selecting a discrete action at every time step as when playing a video game. The difficulty of the task lies both in learning semantically consistent actions and in generating realistic videos conditioned on the user input. We propose a novel framework for PVG that is trained in a self-supervised manner on a large dataset of unlabelled videos. We employ an encoder-decoder architecture where the predicted action labels act as bottleneck. The network is constrained to learn a rich action space using, as main driving loss, a reconstruction loss on the generated video. We demonstrate the effectiveness of the proposed approach on several datasets with wide environment variety.

Overview



Figure 1. Illustration of the proposed CADDY model for playable video generation.


Given a set of completely unlabeled videos, we jointly learn a set of discrete actions and a video generation model conditioned on the learned actions. At test time, the user can control the generated video on-the-fly providing action labels as if he or she was playing a videogame. We name our method CADDY. Our architecture for unsupervised playable video generation is composed by several components. An encoder E extracts frame representations from the input sequence. A temporal model estimates the successive states using a recurrent dynamics network R and an action network A which predicts the action label corresponding to the current action performed in the input sequence. Finally, a decoder D reconstructs the input frames. The model is trained using reconstruction as the main driving loss.

Requirements

We recommend the use of Linux and of one or more CUDA compatible GPUs. We provide both a Conda environment and a Dockerfile to configure the required libraries.

Conda

The environment can be installed and activated with:

conda env create -f env.yml

conda activate video-generation

Docker

Use the Dockerfile to build the docker image:

docker build -t video-generation:1.0 .

Run the docker image mounting the root directory to /video-generation in the docker container:

docker run -it --gpus all --ipc=host -v /path/to/directory/video-generation:/video-generation video-generation:1.0 /bin/bash

Preparing Datasets

BAIR

Coming soon

Atari Breakout

Download the breakout_160_ours.tar.gz archive from Google Drive and extract it under the data folder.

Tennis

The Tennis dataset is automatically acquired from Youtube by running

./get_tennis_dataset.sh

This requires an installation of youtube-dl (Download). Please run youtube-dl -U to update the utility to the latest version. The dataset will be created at data/tennis_v4_256_ours.

Custom Datasets

Custom datasets can be created from a user-provided folder containing plain videos. Acquired video frames are sampled at the specified resolution and framerate. ffmpeg is used for the extraction and supports multiple input formats. By default only mp4 files are acquired.

python -m dataset.acquisition.convert_video_directory --video_directory --output_directory --target_size [--fps --video_extension --processes ]

As an example the following command transforms all mp4 videos in the tmp/my_videos directory into a 256x256px dataset sampled at 10fps and saves it in the data/my_videos folder python -m dataset.acquisition.convert_video_directory --video_directory tmp/my_videos --output_directory data/my_videos --target_size 256 256 --fps 10

Using Pretrained Models

Pretrained models in .pth.tar format are available for all the datasets and can be downloaded at the following link: Google Drive

Please place each directory under the checkpoints folder. Training and inference scripts automatically make use of the latest.pth.tar checkpoint when present in the checkpoints subfolder corresponding to the configuration in use.

Playing

When a latest.pth.tar checkpoint is present under the checkpoints folder corresponding to the current configuration, the model can be interactively used to generate videos with the following commands:

  • Bair: python play.py --config configs/01_bair.yaml

  • Breakout: python play.py configs/breakout/02_breakout.yaml

  • Tennis: python play.py --config configs/03_tennis.yaml

A full screen window will appear and actions can be provided using number keys in the range [1, actions_count]. Number key 0 resets the generation process.

The inference process is lightweight and can be executed even in browser as in our Live Demo.

Training

The models can be trained with the following commands:

python train.py --config configs/

The training process generates multiple files under the results and checkpoint directories a sub directory with the name corresponding to the one specified in the configuration file. In particular, the folder under the results directory will contain an images folder showing qualitative results obtained during training. The checkpoints subfolder will contain regularly saved checkpoints and the latest.pth.tar checkpoint representing the latest model parameters.

The training can be completely monitored through Weights and Biases by running before execution of the training command: wandb init

Training the model in full resolution on our datasets required the following GPU resources:

  • BAIR: 4x2080Ti 44GB
  • Breakout: 1x2080Ti 11GB
  • Tennis: 2x2080 16GB

Lower resolution versions of the model can be trained with a single 8GB GPU.

Evaluation

Evaluation requires two steps. First, an evaluation dataset must be built. Second, evaluation is carried out on the evaluation dataset. To build the evaluation dataset please issue:

python build_evaluation_dataset.py --config configs/

The command creates a reconstruction of the test portion of the dataset under the results//evaluation_dataset directory. To run evaluation issue:

python evaluate_dataset.py --config configs/evaluation/configs/

Evaluation results are saved under the evaluation_results directory the folder specified in the configuration file with the name data.yml.

Owner
Willi Menapace
Hi, I'm Willi Menapace, Ph.D Student and passionate deep learning practitioner. Here you can find some of the projects I am allowed to publish.
Willi Menapace
SmartSim Infrastructure Library.

Home Install Documentation Slack Invite Cray Labs SmartSim SmartSim makes it easier to use common Machine Learning (ML) libraries like PyTorch and Ten

Cray Labs 139 Jan 01, 2023
Element selection for functional materials discovery by integrated machine learning of atomic contributions to properties

Element selection for functional materials discovery by integrated machine learning of atomic contributions to properties 8.11.2021 Andrij Vasylenko I

Leverhulme Research Centre for Functional Materials Design 4 Dec 20, 2022
MAterial del programa Misión TIC 2022

Mision TIC 2022 Esta iniciativa, aparece como respuesta frente a los retos de la Cuarta Revolución Industrial, y tiene como objetivo la formación de 1

6 May 25, 2022
Chinese license plate recognition

AgentCLPR 简介 一个基于 ONNXRuntime、AgentOCR 和 License-Plate-Detector 项目开发的中国车牌检测识别系统。 车牌识别效果 支持多种车牌的检测和识别(其中单层车牌识别效果较好): 单层车牌: [[[[373, 282], [69, 284],

AgentMaker 26 Dec 25, 2022
Model-free Vehicle Tracking and State Estimation in Point Cloud Sequences

Model-free Vehicle Tracking and State Estimation in Point Cloud Sequences 1. Introduction This project is for paper Model-free Vehicle Tracking and St

TuSimple 92 Jan 03, 2023
Putting NeRF on a Diet: Semantically Consistent Few-Shot View Synthesis

Putting NeRF on a Diet: Semantically Consistent Few-Shot View Synthesis Website | ICCV paper | arXiv | Twitter This repository contains the official i

Ajay Jain 73 Dec 27, 2022
Material for my PyConDE & PyData Berlin 2022 Talk "5 Steps to Speed Up Your Data-Analysis on a Single Core"

5 Steps to Speed Up Your Data-Analysis on a Single Core Material for my talk at the PyConDE & PyData Berlin 2022 Description Your data analysis pipeli

Jonathan Striebel 9 Dec 12, 2022
Official implementation of DreamerPro: Reconstruction-Free Model-Based Reinforcement Learning with Prototypical Representations in TensorFlow 2

DreamerPro Official implementation of DreamerPro: Reconstruction-Free Model-Based Reinforcement Learning with Prototypical Representations in TensorFl

22 Nov 01, 2022
All materials of Cassandra Event, Udyam'22

Cassandra 2022 Workspace Workshop Materials Workshop-1 Workshop-2 Workshop-3 Workshop-4 Assignments Assignment-1 Assignment-2 Assignment-3 Resources P

36 Dec 31, 2022
Deep generative models of 3D grids for structure-based drug discovery

What is liGAN? liGAN is a research codebase for training and evaluating deep generative models for de novo drug design based on 3D atomic density grid

Matt Ragoza 152 Jan 03, 2023
Pull sensitive data from users on windows including discord tokens and chrome data.

⭐ For a 🍪 Pegasus Pull sensitive data from users on windows including discord tokens and chrome data. Features 🟩 Discord tokens 🟩 Geolocation data

Addi 44 Dec 31, 2022
Panoptic SegFormer: Delving Deeper into Panoptic Segmentation with Transformers

Panoptic SegFormer: Delving Deeper into Panoptic Segmentation with Transformers Results results on COCO val Backbone Method Lr Schd PQ Config Download

155 Dec 20, 2022
FTIR-Deep Learning - FTIR Deep Learning With Python

CANDIY-spectrum Human analyis of chemical spectra such as Mass Spectra (MS), Inf

Wei Mei 1 Jan 03, 2022
A MNIST-like fashion product database. Benchmark

Fashion-MNIST Table of Contents Why we made Fashion-MNIST Get the Data Usage Benchmark Visualization Contributing Contact Citing Fashion-MNIST License

Zalando Research 10.5k Jan 08, 2023
The tl;dr on a few notable transformer/language model papers + other papers (alignment, memorization, etc).

The tl;dr on a few notable transformer/language model papers + other papers (alignment, memorization, etc).

Will Thompson 166 Jan 04, 2023
This repository contains the official implementation code of the paper Improving Multimodal Fusion with Hierarchical Mutual Information Maximization for Multimodal Sentiment Analysis, accepted at EMNLP 2021.

MultiModal-InfoMax This repository contains the official implementation code of the paper Improving Multimodal Fusion with Hierarchical Mutual Informa

Deep Cognition and Language Research (DeCLaRe) Lab 89 Dec 26, 2022
Conversational text Analysis using various NLP techniques

PyConverse Let me try first Installation pip install pyconverse Usage Please try this notebook that demos the core functionalities: basic usage noteb

Rita Anjana 158 Dec 25, 2022
Towards Boosting the Accuracy of Non-Latin Scene Text Recognition

Convolutional Recurrent Neural Network + CTCLoss | STAR-Net Code for paper "Towards Boosting the Accuracy of Non-Latin Scene Text Recognition" Depende

Sanjana Gunna 7 Aug 07, 2022
Toolbox of models, callbacks, and datasets for AI/ML researchers.

Pretrained SOTA Deep Learning models, callbacks and more for research and production with PyTorch Lightning and PyTorch Website • Installation • Main

Pytorch Lightning 1.4k Dec 30, 2022
JittorVis - Visual understanding of deep learning models

JittorVis: Visual understanding of deep learning model JittorVis is an open-source library for understanding the inner workings of Jittor models by vi

thu-vis 182 Jan 06, 2023