Sign Language Translation with Transformers (COLING'2020, ECCV'20 SLRTP Workshop)

Overview

transformer-slt

This repository gathers data and code supporting the experiments in the paper Better Sign Language Translation with STMC-Transformer.

Installation

This code is based on OpenNMT v1.0.0 and requires all of its dependencies (torch==1.6.0). Additional requirements are NLTK for NMT evaluation metrics.

The recommended way to install is shown below:

# create a new virtual environment
virtualenv --python=python3 venv
source venv/bin/activate

# clone the repo
git clone https://github.com/kayoyin/transformer-slt.git
cd transformer-slt

# install python dependencies
pip install -r requirements.txt

# install OpenNMT-py
python setup.py install

Sample Usage

Data processing

onmt_preprocess -train_src data/phoenix2014T.train.gloss -train_tgt data/phoenix2014T.train.de -valid_src data/phoenix2014T.dev.gloss -valid_tgt data/phoenix2014T.dev.de -save_data data/dgs -lower 

Training

python  train.py -data data/dgs -save_model model -keep_checkpoint 1 \
          -layers 2 -rnn_size 512 -word_vec_size 512 -transformer_ff 2048 -heads 8  \
          -encoder_type transformer -decoder_type transformer -position_encoding \
          -max_generator_batches 2 -dropout 0.1 \
          -early_stopping 3 -early_stopping_criteria accuracy ppl \
          -batch_size 2048 -accum_count 3 -batch_type tokens -normalization tokens \
          -optim adam -adam_beta2 0.998 -decay_method noam -warmup_steps 3000 -learning_rate 0.5 \
          -max_grad_norm 0 -param_init 0  -param_init_glorot \
          -label_smoothing 0.1 -valid_steps 100 -save_checkpoint_steps 100 \
          -world_size 1 -gpu_ranks 0

Inference

python translate.py -model model [model2 model3 ...] -src data/phoenix2014T.test.gloss -output pred.txt -gpu 0 -replace_unk -beam_size 4

Scoring

# BLEU-1,2,3,4
python tools/bleu.py 1 pred.txt data/phoenix2014T.test.de
python tools/bleu.py 2 pred.txt data/phoenix2014T.test.de
python tools/bleu.py 3 pred.txt data/phoenix2014T.test.de
python tools/bleu.py 4 pred.txt data/phoenix2014T.test.de

# ROUGE
python tools/rouge.py pred.txt data/phoenix2014T.test.de

# METEOR
python tools/meteor.py pred.txt data/phoenix2014T.test.de

To dos:

  • Add configurations & steps to recreate paper results

Reference

Please cite the paper below if you found the resources in this repository useful:

@inproceedings{yin-read-2020-better,
    title = "Better Sign Language Translation with {STMC}-Transformer",
    author = "Yin, Kayo  and
      Read, Jesse",
    booktitle = "Proceedings of the 28th International Conference on Computational Linguistics",
    month = dec,
    year = "2020",
    address = "Barcelona, Spain (Online)",
    publisher = "International Committee on Computational Linguistics",
    url = "https://www.aclweb.org/anthology/2020.coling-main.525",
    doi = "10.18653/v1/2020.coling-main.525",
    pages = "5975--5989",
    abstract = "Sign Language Translation (SLT) first uses a Sign Language Recognition (SLR) system to extract sign language glosses from videos. Then, a translation system generates spoken language translations from the sign language glosses. This paper focuses on the translation system and introduces the STMC-Transformer which improves on the current state-of-the-art by over 5 and 7 BLEU respectively on gloss-to-text and video-to-text translation of the PHOENIX-Weather 2014T dataset. On the ASLG-PC12 corpus, we report an increase of over 16 BLEU. We also demonstrate the problem in current methods that rely on gloss supervision. The video-to-text translation of our STMC-Transformer outperforms translation of GT glosses. This contradicts previous claims that GT gloss translation acts as an upper bound for SLT performance and reveals that glosses are an inefficient representation of sign language. For future SLT research, we therefore suggest an end-to-end training of the recognition and translation models, or using a different sign language annotation scheme.",
}
Owner
Kayo Yin
Grad student at CMU LTI @neulab researching multilingual NLP (spoken + signed languages)
Kayo Yin
Generate Cartoon Images using Generative Adversarial Network

AvatarGAN ✨ Generate Cartoon Images using DC-GAN Deep Convolutional GAN is a generative adversarial network architecture. It uses a couple of guidelin

Aakash Jhawar 50 Dec 29, 2022
TraND: Transferable Neighborhood Discovery for Unsupervised Cross-domain Gait Recognition.

TraND This is the code for the paper "Jinkai Zheng, Xinchen Liu, Chenggang Yan, Jiyong Zhang, Wu Liu, Xiaoping Zhang and Tao Mei: TraND: Transferable

Jinkai Zheng 32 Apr 04, 2022
Deep Learning ❤️ OneFlow

Deep Learning with OneFlow made easy 🚀 ! Carefree? carefree-learn aims to provide CAREFREE usages for both users and developers. User Side Computer V

21 Oct 27, 2022
Fantasy Points Prediction and Dream Team Formation

Fantasy-Points-Prediction-and-Dream-Team-Formation Collected Data from open source resources that have over 100 Parameters for predicting cricket play

Akarsh Singh 2 Sep 13, 2022
Code for a real-time distributed cooperative slam(RDC-SLAM) system for ROS compatible platforms.

RDC-SLAM This repository contains code for a real-time distributed cooperative slam(RDC-SLAM) system for ROS compatible platforms. The system takes in

40 Nov 19, 2022
Standalone pre-training recipe with JAX+Flax

Sabertooth Sabertooth is standalone pre-training recipe based on JAX+Flax, with data pipelines implemented in Rust. It runs on CPU, GPU, and/or TPU, b

Nikita Kitaev 26 Nov 28, 2022
Chinese Mandarin tts text-to-speech 中文 (普通话) 语音 合成 , by fastspeech 2 , implemented in pytorch, using waveglow as vocoder,

Chinese mandarin text to speech based on Fastspeech2 and Unet This is a modification and adpation of fastspeech2 to mandrin(普通话). Many modifications t

291 Jan 02, 2023
SmallInitEmb - LayerNorm(SmallInit(Embedding)) in a Transformer to improve convergence

SmallInitEmb LayerNorm(SmallInit(Embedding)) in a Transformer I find that when t

PENG Bo 11 Dec 25, 2022
Implementation for HFGI: High-Fidelity GAN Inversion for Image Attribute Editing

HFGI: High-Fidelity GAN Inversion for Image Attribute Editing High-Fidelity GAN Inversion for Image Attribute Editing Update: We released the inferenc

Tengfei Wang 371 Dec 30, 2022
hySLAM is a hybrid SLAM/SfM system designed for mapping

HySLAM Overview hySLAM is a hybrid SLAM/SfM system designed for mapping. The system is based on ORB-SLAM2 with some modifications and refactoring. Raú

Brian Hopkinson 15 Oct 10, 2022
Towards Ultra-Resolution Neural Style Transfer via Thumbnail Instance Normalization

Towards Ultra-Resolution Neural Style Transfer via Thumbnail Instance Normalization Official PyTorch implementation for our URST (Ultra-Resolution Sty

czczup 148 Dec 27, 2022
PyTorch implementation of ENet

PyTorch-ENet PyTorch (v1.1.0) implementation of ENet: A Deep Neural Network Architecture for Real-Time Semantic Segmentation, ported from the lua-torc

David Silva 333 Dec 29, 2022
This repository contains code from the paper "TTS-GAN: A Transformer-based Time-Series Generative Adversarial Network"

TTS-GAN: A Transformer-based Time-Series Generative Adversarial Network This repository contains code from the paper "TTS-GAN: A Transformer-based Tim

Intelligent Multimodal Computing and Sensing Laboratory (IMICS Lab) - Texas State University 108 Dec 29, 2022
Introduction to Statistics and Basics of Mathematics for Data Science - The Hacker's Way

HackerMath for Machine Learning “Study hard what interests you the most in the most undisciplined, irreverent and original manner possible.” ― Richard

Amit Kapoor 1.4k Dec 22, 2022
make ASCII Art by Deep Learning

DeepAA This is convolutional neural networks generating ASCII art. This repository is under construction. This work is accepted by NIPS 2017 Workshop,

OsciiArt 1.4k Dec 28, 2022
A static analysis library for computing graph representations of Python programs suitable for use with graph neural networks.

python_graphs This package is for computing graph representations of Python programs for machine learning applications. It includes the following modu

Google Research 258 Dec 29, 2022
Deep learning operations reinvented (for pytorch, tensorflow, jax and others)

This video in better quality. einops Flexible and powerful tensor operations for readable and reliable code. Supports numpy, pytorch, tensorflow, and

Alex Rogozhnikov 6.2k Jan 01, 2023
Companion repo of the UCC 2021 paper "Predictive Auto-scaling with OpenStack Monasca"

Predictive Auto-scaling with OpenStack Monasca Giacomo Lanciano*, Filippo Galli, Tommaso Cucinotta, Davide Bacciu, Andrea Passarella 2021 IEEE/ACM 14t

Giacomo Lanciano 0 Dec 07, 2022
CAMPARI: Camera-Aware Decomposed Generative Neural Radiance Fields

CAMPARI: Camera-Aware Decomposed Generative Neural Radiance Fields Paper | Supplementary | Video | Poster If you find our code or paper useful, please

26 Nov 29, 2022
3D Pose Estimation for Vehicles

3D Pose Estimation for Vehicles Introduction This work generates 4 key-points and 2 key-edges from vertices and edges of vehicles as ground truth. The

Jingyi Wang 1 Nov 01, 2021