项目部分代码基于baseline仓库修改
Idea
本项目提出的噪声分离对抗模型可能已经被提出过,毕竟改动比较小。但我确实没有时间去寻论文出处,在此之前已经提出过多个Idea,大多都发现已有相关论文。例如在本项目期间想到的生成时构建树模型(仿照ACT动态自适应RNN和RNN构建树),简单的实验陆续发现已经有人做了,模型完全体的话,设计复杂程度太高,掂量自身实力,确实没有时间。所以就刚想出来把这个噪声模型先做了吧。虽然我觉得要在RNN上设计噪声分离,还是有很多底层代码需要修改
核心思路
- RNN内部的三模型架构:
- 语音识别模型:接受原始数据于噪声模型的残差作为输入,训练目标为最大化分类准确率
- 噪声语音模型:接受噪声模型输出,训练目标为最大化分类准确率
- 噪声模型:训练时直接连接上面两个模型的输出权重梯度(噪声的梯度取负数),传递到噪声模型中。
- 推理时:
- 数据进入噪声模型得到输出A,原始数据减去A得到残差B,即原声。
- 残差B进入语音识别模型进行识别,得到最终输出。 没了,比较简单的修改,能不能写出来以及能不能有效果就不知道了。能跑就行,哈哈。
An Accurate and Rapidly Calibrating Speech Neuroprosthesis
The New England Journal of Medicine (2024)
Nicholas S. Card, Maitreyee Wairagkar, Carrina Iacobacci, Xianda Hou, Tyler Singer-Clark, Francis R. Willett, Erin M. Kunz, Chaofei Fan, Maryam Vahdati Nia, Darrel R. Deo, Aparna Srinivasan, Eun Young Choi, Matthew F. Glasser, Leigh R. Hochberg, Jaimie M. Henderson, Kiarash Shahlaie, Sergey D. Stavisky*, and David M. Brandman*.
* denotes co-senior authors
Overview
This repository contains the code and data necessary to reproduce the results of the paper "An Accurate and Rapidly Calibrating Speech Neuroprosthesis" by Card et al. (2024), N Eng J Med.
The code is organized into five main directories: utils
, analyses
, data
, model_training
, and language_model
:
- The
utils
directory contains utility functions used throughout the code. - The
analyses
directory contains the code necessary to reproduce results shown in the main text and supplemental appendix. - The
data
directory contains the data necessary to reproduce the results in the paper. Download it from Dryad using the link above and place it in this directory. - The
model_training
directory contains the code necessary to train and evaluate the brain-to-text model. See the README.md in that folder for more detailed instructions. - The
language_model
directory contains the ngram language model implementation and a pretrained 1gram language model. Pretrained 3gram and 5gram language models can be downloaded here (languageModel.tar.gz
andlanguageModel_5gram.tar.gz
). Seelanguage_model/README.md
for more information.
Competition
This repository also includes baseline model training and evaluation code for the Brain-to-Text '25 Competition. The competition is hosted on Kaggle, and the code in this repository is designed to help participants train and evaluate their own models for the competition. The baseline model provided here is a custom PyTorch implementation of the RNN model used in the paper, which can be trained and evaluated using the provided data.
Data
Data Overview
The data used in this repository (which can be downloaded from Dryad, either manually from the website, or using download_data.py
) consists of various datasets for recreating figures and training/evaluating the brain-to-text model:
t15_copyTask.pkl
: This file contains the online Copy Task results required for generating Figure 2.t15_personalUse.pkl
: This file contains the Conversation Mode data required for generating Figure 4.t15_copyTask_neuralData.zip
: This dataset contains the neural data for the Copy Task.- There are 10,948 sentences from 45 sessions spanning 20 months. Each trial of data includes:
- The session date, block number, and trial number
- 512 neural features (2 features [-4.5 RMS threshold crossings and spike band power] per electrode, 256 electrodes), binned at 20 ms resolution. The data were recorded from the speech motor cortex via four high-density microelectrode arrays (64 electrodes each). The 512 features are ordered as follows in all data files:
- 0-64: ventral 6v threshold crossings
- 65-128: area 4 threshold crossings
- 129-192: 55b threshold crossings
- 193-256: dorsal 6v threshold crossings
- 257-320: ventral 6v spike band power
- 321-384: area 4 spike band power
- 385-448: 55b spike band power
- 449-512: dorsal 6v spike band power
- The ground truth sentence label
- The ground truth phoneme sequence label
- The data is split into training, validation, and test sets. The test set does not include ground truth sentence or phoneme labels.
- Data for each session/split is stored in
.hdf5
files. An example of how to load this data using the Pythonh5py
library is provided in themodel_training/evaluate_model_helpers.py
file in theload_h5py_file()
function. - Each block of data contains sentences drawn from a range of corpuses (Switchboard, OpenWebText2, a 50-word corpus, a custom frequent-word corpus, and a corpus of random word sequences). Furthermore, the majority of the data is during attempted vocalized speaking, but some of it is during attempted silent speaking.
data/t15_copyTaskData_description.csv
contains a block-by-block description of the Copy Task data, including the session date, block number, number of trials, the corpus used, and what split the data is in (train, val, or test). The speaking strategy for each block is intentionally not listed here.
- There are 10,948 sentences from 45 sessions spanning 20 months. Each trial of data includes:
t15_pretrained_rnn_baseline.zip
: This dataset contains the pretrained RNN baseline model checkpoint and args. An example of how to load this model and use it for inference is provided in themodel_training/evaluate_model.py
file.
Data Directory Structure
Please download these datasets from Dryad and place them in the data
directory. Be sure to unzip t15_copyTask_neuralData.zip
and place the resulting hdf5_data_final
folder into the data
directory. Likewise, unzip t15_pretrained_rnn_baseline.zip
and place the resulting t15_pretrained_rnn_baseline
folder into the data
directory. The final directory structure should look like this:
data/
├── t15_copyTask.pkl
├── t15_personalUse.pkl
├── hdf5_data_final/
│ ├── t15.2023.08.11/
│ │ ├── data_train.hdf5
│ ├── t15.2023.08.13/
│ │ ├── data_train.hdf5
│ │ ├── data_val.hdf5
│ │ ├── data_test.hdf5
│ ├── ...
├── t15_pretrained_rnn_baseline/
│ ├── checkpoint/
│ │ ├── args.yaml
│ │ ├── best_checkpoint
│ ├── training_log
Dependencies
- The code has only been tested on Ubuntu 22.04 with two NVIDIA RTX 4090 GPUs.
- We recommend using a conda environment to manage the dependencies. To install miniconda, follow the instructions here.
- Redis is required for communication between python processes. To install redis on Ubuntu:
- https://redis.io/docs/getting-started/installation/install-redis-on-linux/
- In terminal:
curl -fsSL https://packages.redis.io/gpg | sudo gpg --dearmor -o /usr/share/keyrings/redis-archive-keyring.gpg echo "deb [signed-by=/usr/share/keyrings/redis-archive-keyring.gpg] https://packages.redis.io/deb $(lsb_release -cs) main" | sudo tee /etc/apt/sources.list.d/redis.list sudo apt-get update sudo apt-get install redis
- Turn off autorestarting for the redis server in terminal:
sudo systemctl disable redis-server
CMake >= 3.14
andgcc >= 10.1
are required for the ngram language model installation. You can install these on linux withsudo apt-get install cmake
andsudo apt-get install build-essential
.
Python environment setup for model training and evaluation
To create a conda environment with the necessary dependencies, run the following command from the root directory of this repository:
./setup.sh
Verify it worked by activating the conda environment with the command conda activate b2txt25
.
Python environment setup for ngram language model and OPT rescoring
We use an ngram language model plus rescoring via the Facebook OPT 6.7b LLM. A pretrained 1gram language model is included in this repository at language_model/pretrained_language_models/openwebtext_1gram_lm_sil
. Pretrained 3gram and 5gram language models are available for download here (languageModel.tar.gz
and languageModel_5gram.tar.gz
). Note that the 3gram model requires ~60GB of RAM, and the 5gram model requires ~300GB of RAM. Furthermore, OPT 6.7b requires a GPU with at least ~12.4 GB of VRAM to load for inference.
Our Kaldi-based ngram implementation requires a different version of torch than our model training pipeline, so running the ngram language models requires an additional seperate python conda environment. To create this conda environment, run the following command from the root directory of this repository. For more detailed instructions, see the README.md in the language_model
subdirectory.
./setup_lm.sh
Verify it worked by activating the conda environment with the command conda activate b2txt25_lm
.