Source code for "Progressive Transformers for End-to-End Sign Language Production" (ECCV 2020)

Overview

Progressive Transformers for End-to-End Sign Language Production

Source code for "Progressive Transformers for End-to-End Sign Language Production" (Ben Saunders, Necati Cihan Camgoz, Richard Bowden - ECCV 2020)

Conference video available at https://twitter.com/BenMSaunders/status/1336638886198521857

Usage

Install required packages using the requirements.txt file.

pip install -r requirements.txt

To run, start main.py with arguments "train" and ".\Configs\Base.yaml":

python __main__.py train ./Configs/Base.yaml

An example train.log file can be found in ".\Configs\train.log" and a validation file at ".\Configs\validations.txt"

Back Translation model created from https://github.com/neccam/slt. Back Translation evaluation code coming soon.

Data

Pre-processed Phoenix14T data can be requested via email at [email protected]. If you wish to create the data yourself, please follow below:

Phoenix14T data can be downloaded from https://www-i6.informatik.rwth-aachen.de/~koller/RWTH-PHOENIX-2014-T/ and skeleton joints can be extracted using OpenPose at https://github.com/CMU-Perceptual-Computing-Lab/openpose and lifted to 3D using the 2D to 3D Inverse Kinematics code at https://github.com/gopeith/SignLanguageProcessing under 3DposeEstimator.

Prepare Phoenix14T (or other sign language dataset) data as .txt files for .skel, .gloss, .txt and .files. Data format should be parallel .txt files for "src", "trg" and "files", with each line representing a new sequence:

  • The "src" file contains source sentences, with each line representing new sentence.

  • The "trg" file contains skeleton data of each frame, with a space separating frames. The joints should be divided by 3 to match the scaling I used. Each frame contains 150 joint values and a subsequent counter value, all separated by a space. Each sequence should be separated with a new line. If your data contains 150 joints per frame, please ensure that trg_size is set to 150 in the config file.

  • The "files" file should contain the name of each sequence on a new line.

Examples can be found in /Data/tmp. Data path must be specified in config file.

Pre-Trained Model

A pre-trained Progressive Transformer checkpoint can be downloaded from https://www.dropbox.com/s/l4xmnybp7luz0l3/PreTrained_PTSLP_Model.ckpt?dl=0.

This model has a size of num_layers: 2, num_heads: 4 and embedding_dim: 512, as outlined in ./Configs/Base.yaml. It has been pre-trained on the full PHOENIX14T dataset with the data format as above. The relevant train.log and validations.txt files can be found in .\Configs.

To initialise a model from this checkpoint, pass the --ckpt ./PreTrained_PTSLP_Model.ckpt argument to either train or test modes. Additionally, to initialise the correct src_embed size, the config argument src_vocab: "./Configs/src_vocab.txt" must be set to the location of the src_vocab.txt, found under ./Configs. Please open an issue if this checkpoint cannot be downloaded or loaded.

Reference

If you use this code in your research, please cite the following papers:

@inproceedings{saunders2020progressive,
	title		=	{{Progressive Transformers for End-to-End Sign Language Production}},
	author		=	{Saunders, Ben and Camgoz, Necati Cihan and Bowden, Richard},
	booktitle   	=   	{Proceedings of the European Conference on Computer Vision (ECCV)},
	year		=	{2020}}

@inproceedings{saunders2020adversarial,
	title		=	{{Adversarial Training for Multi-Channel Sign Language Production}},
	author		=	{Saunders, Ben and Camgoz, Necati Cihan and Bowden, Richard},
	booktitle   	=   	{Proceedings of the British Machine Vision Conference (BMVC)},
	year		=	{2020}}

@inproceedings{saunders2021continuous,
	title		=	{{Continuous 3D Multi-Channel Sign Language Production via Progressive Transformers and Mixture Density Networks}},
	author		=	{Saunders, Ben and Camgoz, Necati Cihan and Bowden, Richard},
	booktitle   	=   	{International Journal of Computer Vision (IJCV)},
	year		=	{2021}}

Acknowledgements

This work received funding from the SNSF Sinergia project 'SMILE' (CRSII2 160811), the European Union's Horizon2020 research and innovation programme under grant agreement no. 762021 'Content4All' and the EPSRC project 'ExTOL' (EP/R03298X/1). This work reflects only the authors view and the Commission is not responsible for any use that may be made of the information it contains. We would also like to thank NVIDIA Corporation for their GPU grant.

Owner
PhD Student at University of Surrey Researching Sign Language Production with Computer Vision & Natural Language Processing
UMEC: Unified Model and Embedding Compression for Efficient Recommendation Systems

[ICLR 2021] "UMEC: Unified Model and Embedding Compression for Efficient Recommendation Systems" by Jiayi Shen, Haotao Wang*, Shupeng Gui*, Jianchao Tan, Zhangyang Wang, and Ji Liu

VITA 39 Dec 03, 2022
Official PyTorch implementation of "AASIST: Audio Anti-Spoofing using Integrated Spectro-Temporal Graph Attention Networks"

AASIST This repository provides the overall framework for training and evaluating audio anti-spoofing systems proposed in 'AASIST: Audio Anti-Spoofing

Clova AI Research 56 Jan 02, 2023
ScaleNet: A Shallow Architecture for Scale Estimation

ScaleNet: A Shallow Architecture for Scale Estimation Repository for the code of ScaleNet paper: "ScaleNet: A Shallow Architecture for Scale Estimatio

Axel Barroso 34 Nov 09, 2022
DeepProbLog is an extension of ProbLog that integrates Probabilistic Logic Programming with deep learning by introducing the neural predicate.

DeepProbLog DeepProbLog is an extension of ProbLog that integrates Probabilistic Logic Programming with deep learning by introducing the neural predic

KU Leuven Machine Learning Research Group 94 Dec 18, 2022
Applying curriculum to meta-learning for few shot classification

Curriculum Meta-Learning for Few-shot Classification We propose an adaptation of the curriculum training framework, applicable to state-of-the-art met

Stergiadis Manos 3 Oct 25, 2022
frida工具的缝合怪

fridaUiTools fridaUiTools是一个界面化整理脚本的工具。新人的练手作品。参考项目ZenTracer,觉得既然可以界面化,那么应该可以把功能做的更加完善一些。跨平台支持:win、mac、linux 功能缝合怪。把一些常用的frida的hook脚本简单统一输出方式后,整合进来。并且

diveking 997 Jan 09, 2023
Hitters Linear Regression - Hitters Linear Regression With Python

Hitters_Linear_Regression Kullanacağımız veri seti Carnegie Mellon Üniversitesi'

AyseBuyukcelik 2 Jan 26, 2022
Inference pipeline for our participation in the FeTA challenge 2021.

feta-inference Inference pipeline for our participation in the FeTA challenge 2021. Team name: TRABIT Installation Download the two folders in https:/

Lucas Fidon 2 Apr 13, 2022
The story of Chicken for Club Bing

Chicken Story tl;dr: The time when Microsoft banned my entire country for cheating at Club Bing. (A lot of the details are from memory so I've recreat

Eyal 142 May 16, 2022
PyTorch evaluation code for Delving Deep into the Generalization of Vision Transformers under Distribution Shifts.

Out-of-distribution Generalization Investigation on Vision Transformers This repository contains PyTorch evaluation code for Delving Deep into the Gen

Chongzhi Zhang 72 Dec 13, 2022
YOLOX is a high-performance anchor-free YOLO, exceeding yolov3~v5 with ONNX, TensorRT, ncnn, and OpenVINO supported.

Introduction YOLOX is an anchor-free version of YOLO, with a simpler design but better performance! It aims to bridge the gap between research and ind

7.7k Jan 03, 2023
Keras-tensorflow implementation of Fully Convolutional Networks for Semantic Segmentation(Unfinished)

Keras-FCN Fully convolutional networks and semantic segmentation with Keras. Models Models are found in models.py, and include ResNet and DenseNet bas

645 Dec 29, 2022
Exploring the Dual-task Correlation for Pose Guided Person Image Generation

Dual-task Pose Transformer Network The source code for our paper "Exploring Dual-task Correlation for Pose Guided Person Image Generation“ (CVPR2022)

63 Dec 15, 2022
Deep-learning-roadmap - All You Need to Know About Deep Learning - A kick-starter

Deep Learning - All You Need to Know Sponsorship To support maintaining and upgrading this project, please kindly consider Sponsoring the project deve

Instill AI 4.4k Dec 26, 2022
Implementation of Uniformer, a simple attention and 3d convolutional net that achieved SOTA in a number of video classification tasks

Uniformer - Pytorch Implementation of Uniformer, a simple attention and 3d convolutional net that achieved SOTA in a number of video classification ta

Phil Wang 90 Nov 24, 2022
Image inpainting using Gaussian Mixture Models

dmfa_inpainting Source code for: MisConv: Convolutional Neural Networks for Missing Data (to be published at WACV 2022) Estimating conditional density

Marcin Przewięźlikowski 8 Oct 09, 2022
Segmentation models with pretrained backbones. Keras and TensorFlow Keras.

Python library with Neural Networks for Image Segmentation based on Keras and TensorFlow. The main features of this library are: High level API (just

Pavel Yakubovskiy 4.2k Jan 09, 2023
3rd place solution for the Weather4cast 2021 Stage 1 Challenge

weather4cast2021_Stage1 3rd place solution for the Weather4cast 2021 Stage 1 Challenge Dependencies The code can be executed from a fresh environment

5 Aug 14, 2022
Ready-to-use code and tutorial notebooks to boost your way into few-shot image classification.

Easy Few-Shot Learning Ready-to-use code and tutorial notebooks to boost your way into few-shot image classification. This repository is made for you

Sicara 399 Jan 08, 2023
An University Project of Quera Web Crawling.

WebCrawlerProject An University Project of Quera Web Crawling. خزشگر اینستاگرام در این پروژه شما باید با استفاده از کتابخانه های زیر یک خزشگر اینستاگر

Mahdi 3 Aug 12, 2022