Code from the paper "High-Performance Brain-to-Text Communication via Handwriting"

Overview

High-Performance Brain-to-Text Communication via Handwriting

System diagram

Overview

This repo is associated with this manuscript, preprint and dataset. The code can be used to run an offline reproduction of the main result: high-performance neural decoding of attempted handwriting movements. The jupyter notebooks included here implement all steps of the process, including labeling the neural data with HMMs, training an RNN to decode the neural data into sequences of characters, applying a language model to the RNN outputs, and summarizing the performance on held-out data.

Results from each step are saved to disk and used in future steps. Intermediate results and models are available with the data - download these to explore certain steps without needing to run all prior ones (except for Step 3, which you'll need to run on your own because it produces ~100 GB of files).

Results

Below are the main results from my original run of this code. Results are shown from both train/test partitions ('HeldOutTrials' and 'HeldOutBlocks') and were generaetd with this notebook. 95% confidence intervals are reported in brackets for each result.

HeldOutTrials

Character error rate (%) Word error rate (%)
Raw 2.78 [2.20, 3.41] 12.88 [10.28, 15.63]
Bigram LM 0.80 [0.44, 1.22] 3.64 [2.11, 5.34]
Bigram LM + GPT-2 Rescore 0.34 [0.14, 0.61] 1.97 [0.78, 3.41]

HeldOutBlocks

Character error rate (%) Word error rate (%)
Raw 5.32 [4.81, 5.86] 23.28 [21.27, 25.41]
Bigram LM 1.69 [1.32, 2.10] 6.10 [4.97, 7.25]
Bigram LM + GPT-2 Rescore 0.90 [0.62, 1.23] 3.21 [2.37, 4.11]

Train/Test Partitions

Following our manuscript, we use two separate train/test partitions (available with the data): 'HeldOutBlocks' holds out entire blocks of sentences that occur later in each session, while 'HeldOutTrials' holds out single sentences more uniformly.

'HeldOutBlocks' is more challenging because changes in neural activity accrue over time, thus requiring the RNN to be robust to neural changes that it has never seen before from held-out blocks. In 'HeldOutTrials', the RNN can train on other sentences that occur very close in time to each held-out sentence. For 'HeldOutBlocks' we found that training the RNN in the presence of artificial firing rate drifts improved generalization, while this was not necessary for 'HeldOutTrials'.

Dependencies

  • General
    • python>=3.6
    • tensorflow=1.15
    • numpy (tested with 1.17)
    • scipy (tested with 1.1.0)
    • scikit-learn (tested with 0.20)
  • Step 1: Time Warping
  • Steps 4-5: RNN Training & Inference
    • Requires a GPU (calls cuDNN for the GRU layers)
  • Step 6: Bigram Language Model
  • Step 7: GPT-2 Rescoring
Owner
Francis R. Willett
Research Scientist at the Neural Prosthetics Translational Laboratory at Stanford University.
Francis R. Willett
Py65 65816 - Add support for the 65C816 to py65

Add support for the 65C816 to py65 Py65 (https://github.com/mnaberez/py65) is a

4 Jan 04, 2023
Scikit-learn style model finetuning for NLP

Scikit-learn style model finetuning for NLP Finetune is a library that allows users to leverage state-of-the-art pretrained NLP models for a wide vari

indico 665 Dec 17, 2022
Rich Prosody Diversity Modelling with Phone-level Mixture Density Network

Phone Level Mixture Density Network for TTS This repo contains pytorch implementation of paper Rich Prosody Diversity Modelling with Phone-level Mixtu

Rishikesh (ऋषिकेश) 42 Dec 13, 2022
Twewy-discord-chatbot - Build a Discord AI Chatbot that Speaks like Your Favorite Character

Build a Discord AI Chatbot that Speaks like Your Favorite Character! This is a Discord AI Chatbot that uses the Microsoft DialoGPT conversational mode

Lynn Zheng 231 Dec 30, 2022
Code for the paper PermuteFormer

PermuteFormer This repo includes codes for the paper PermuteFormer: Efficient Relative Position Encoding for Long Sequences. Directory long_range_aren

Peng Chen 42 Mar 16, 2022
Quick insights from Zoom meeting transcripts using Graph + NLP

Transcript Analysis - Graph + NLP This program extracts insights from Zoom Meeting Transcripts (.vtt) using TigerGraph and NLTK. In order to run this

Advit Deepak 7 Sep 17, 2022
Language-Agnostic SEntence Representations

LASER Language-Agnostic SEntence Representations LASER is a library to calculate and use multilingual sentence embeddings. NEWS 2019/11/08 CCMatrix is

Facebook Research 3.2k Jan 04, 2023
Khandakar Muhtasim Ferdous Ruhan 1 Dec 30, 2021
LegalNLP - Natural Language Processing Methods for the Brazilian Legal Language

LegalNLP - Natural Language Processing Methods for the Brazilian Legal Language ⚖️ The library of Natural Language Processing for Brazilian legal lang

Felipe Maia Polo 125 Dec 20, 2022
Milaan Parmar / Милан пармар / _米兰 帕尔马 170 Dec 13, 2022
A curated list of efficient attention modules

awesome-fast-attention A curated list of efficient attention modules

Sepehr Sameni 891 Dec 22, 2022
Problem: Given a nepali news find the category of the news

Classification of category of nepali news catorgory using different algorithms Problem: Multiclass Classification Approaches: TFIDF for vectorization

pudasainishushant 2 Jan 09, 2022
Source code and dataset for ACL 2019 paper "ERNIE: Enhanced Language Representation with Informative Entities"

ERNIE Source code and dataset for "ERNIE: Enhanced Language Representation with Informative Entities" Reqirements: Pytorch=0.4.1 Python3 tqdm boto3 r

THUNLP 1.3k Dec 30, 2022
숭실대학교 컴퓨터학부 전공종합설계프로젝트

✨ 시각장애인을 위한 버스도착 알림 장치 ✨ 👀 개요 현대 사회에서 대중교통 위치 정보를 이용하여 사람들이 간단하게 이용할 대중교통의 정보를 얻고 쉽게 대중교통을 이용할 수 있다. 해당 정보는 각종 어플리케이션과 대중교통 이용시설에서 위치 정보를 제공하고 있지만 시각

taegyun 3 Jan 25, 2022
American Sign Language (ASL) to Text Converter

Signterpreter American Sign Language (ASL) to Text Converter Recommendations Although there is grayscale and gaussian blur, we recommend that you use

0 Feb 20, 2022
Code for "Semantic Role Labeling as Dependency Parsing: Exploring Latent Tree Structures Inside Arguments".

Code for "Semantic Role Labeling as Dependency Parsing: Exploring Latent Tree Structures Inside Arguments".

Yu Zhang 50 Nov 08, 2022
Conversational-AI-ChatBot - Intelligent ChatBot built with Microsoft's DialoGPT transformer to make conversations with human users!

Conversational AI ChatBot Intelligent ChatBot built with Microsoft's DialoGPT transformer to make conversations with human users! In this project? Thi

Rajkumar Lakshmanamoorthy 6 Nov 30, 2022
Codes to pre-train Japanese T5 models

t5-japanese Codes to pre-train a T5 (Text-to-Text Transfer Transformer) model pre-trained on Japanese web texts. The model is available at https://hug

Megagon Labs 37 Dec 25, 2022
1 Jun 28, 2022
Stanford CoreNLP provides a set of natural language analysis tools written in Java

Stanford CoreNLP Stanford CoreNLP provides a set of natural language analysis tools written in Java. It can take raw human language text input and giv

Stanford NLP 8.8k Jan 07, 2023