A simple machine learning python sign language detection project.

Overview

SST Coursework 2022

About the app

A python application that utilises the tensorflow object detection algorithm to achieve automatic detection of american sign language gestures.

This app was created to allow for the more seamless integration of American Sign Language(ASL) into our daily lives through the use of a machine learning model in order to construct a realtime ASL translator in python. The translator features autocorrect features, as well as an intuitive gui to help with the usage of the app.

The app utilises a machine learning model that was trained through transfer learning with pre-trained object detection models from the Tensorflow model zoo. The Tensorflow object detection library is utilised to allow for the real time detection of hand gestures from the webcam. Jupyter notebooks used for dataset collection and model training can be found under the Training programs folder in Tensorflow/workspace. A list of dependencies used in this project can be found in the requirements.txt file. All reference material used during the creation of this projects can be found in the credits section below. The dataset used for the training of the machine learning model can be found here.

Disclaimer: This is a prototype machine learning app built on a limited dataset with limited computational power, we are unable to guarantee 100% accuracy in the detection of hand gestures

Installation Steps

Step 1. Clone this repository

Step 2. Open a new terminal window and cd into the program directory

# In a new terminal window
cd {your program directory here}

Step 3. Create a virtual environment

pip install virtualenv
virtualenv venv 

Step 4. Activate the virtual environment

source venv/bin/activate # Mac
.\venv\Scripts\activate # Windows 

Step 5. Install dependencies

pip install numpy six cython
pip install -r requirements.txt 

Step 6. Run the app

python3 app.py

Using the program

Buttons

Next word: Use this button to move on to the next word in the sentence

Backspace: Use this button to remove the last letter that you entered into a word

Reset: Use this button to reset the sentence and start a new sentence

Enable Autocorrect: Use this button to toggle the autocorrect function of the program

Detection

In order for a letter to be detected and appended into the word, the hand gesture corresponding to the letter would have to be held inside the recognition box for 1 second.

This program recognises a modified version of conventional ASL that has a greater variation between the shapes of hand gestures to allow for more accurate differentiation of ASL gestures. A guide to this modified version of ASL can be found below.

alt text

For the greatest accuracy in the detection of ASL gestures, it is recomended that the hand gesture is done with a light coloured background. Detection of characters works best when the hand being used for the gesture is placed like in the sample images above.

Credits

Contributers

Below is a list of people who helped with the creation of this project

Special Thanks to Kaggle for providing us with an extensive dataset on which to train the machine learning model.

Special Thanks to Alexander Chow for providing us with a tutorial on which to base our training code

Developed with ❤️ by Jovan Ang, Jerald Tee and Xavier Koh
Owner
Xavier Koh
Xavier Koh
Graphsignal is a machine learning model monitoring platform.

Graphsignal is a machine learning model monitoring platform. It helps ML engineers, MLOps teams and data scientists to quickly address issues with data and models as well as proactively analyze model

Graphsignal 143 Dec 05, 2022
Repository for DCA0305, an undergraduate course about Machine Learning Workflows and Pipelines

Federal University of Rio Grande do Norte Technology Center Department of Computer Engineering and Automation Machine Learning Based Systems Design Re

Ivanovitch Silva 81 Oct 18, 2022
Scikit learn library models to account for data and concept drift.

liquid_scikit_learn Scikit learn library models to account for data and concept drift. This python library focuses on solving data drift and concept d

7 Nov 18, 2021
This is an implementation of the proximal policy optimization algorithm for the C++ API of Pytorch

This is an implementation of the proximal policy optimization algorithm for the C++ API of Pytorch. It uses a simple TestEnvironment to test the algorithm

Martin Huber 59 Dec 09, 2022
A Tools that help Data Scientists and ML engineers train and deploy ML models.

Domino Research This repo contains projects under active development by the Domino R&D team. We build tools that help Data Scientists and ML engineers

Domino Data Lab 73 Oct 17, 2022
A statistical library designed to fill the void in Python's time series analysis capabilities, including the equivalent of R's auto.arima function.

pmdarima Pmdarima (originally pyramid-arima, for the anagram of 'py' + 'arima') is a statistical library designed to fill the void in Python's time se

alkaline-ml 1.3k Dec 22, 2022
A machine learning web application for binary classification using streamlit

Machine Learning web App This is a machine learning web application for binary classification using streamlit options this application contains 3 clas

abdelhak mokri 1 Dec 20, 2021
A toolbox to iNNvestigate neural networks' predictions!

iNNvestigate neural networks! Table of contents Introduction Installation Usage and Examples More documentation Contributing Releases Introduction In

Maximilian Alber 1.1k Jan 05, 2023
AutoTabular automates machine learning tasks enabling you to easily achieve strong predictive performance in your applications.

AutoTabular AutoTabular automates machine learning tasks enabling you to easily achieve strong predictive performance in your applications. With just

wenqi 2 Jun 26, 2022
🔬 A curated list of awesome machine learning strategies & tools in financial market.

🔬 A curated list of awesome machine learning strategies & tools in financial market.

GeorgeZou 1.6k Dec 30, 2022
My project contrasts K-Nearest Neighbors and Random Forrest Regressors on Real World data

kNN-vs-RFR My project contrasts K-Nearest Neighbors and Random Forrest Regressors on Real World data In many areas, rental bikes have been launched to

1 Oct 28, 2021
An easier way to build neural search on the cloud

Jina is geared towards building search systems for any kind of data, including text, images, audio, video and many more. With the modular design & multi-layer abstraction, you can leverage the effici

Jina AI 17k Jan 01, 2023
Random Forest Classification for Neural Subtypes

Random Forest classifier for neural subtypes extracted from extracellular recordings from human brain organoids.

Michael Zabolocki 1 Jan 31, 2022
Open-Source CI/CD platform for ML teams. Deliver ML products, better & faster. ⚡️🧑‍🔧

Deliver ML products, better & faster Giskard is an Open-Source CI/CD platform for ML teams. Inspect ML models visually from your Python notebook 📗 Re

Giskard 335 Jan 04, 2023
Greykite: A flexible, intuitive and fast forecasting library

The Greykite library provides flexible, intuitive and fast forecasts through its flagship algorithm, Silverkite.

LinkedIn 1.4k Jan 15, 2022
A simple machine learning package to cluster keywords in higher-level groups.

Simple Keyword Clusterer A simple machine learning package to cluster keywords in higher-level groups. Example: "Senior Frontend Engineer" -- "Fronte

Andrea D'Agostino 10 Dec 18, 2022
虚拟货币(BTC、ETH)炒币量化系统项目。在一版本的基础上加入了趋势判断

🎉 第二版本 🎉 (现货趋势网格) 介绍 在第一版本的基础上 趋势判断,不在固定点位开单,选择更优的开仓点位 优势: 🎉 简单易上手 安全(不用将api_secret告诉他人) 如何启动 修改app目录下的authorization文件

幸福村的码农 250 Jan 07, 2023
A machine learning toolkit dedicated to time-series data

tslearn The machine learning toolkit for time series analysis in Python Section Description Installation Installing the dependencies and tslearn Getti

2.3k Dec 29, 2022
This is the code repository for LRM Stochastic watershed model.

LRM-Squannacook Input data for generating stochastic streamflows are observed and simulated timeseries of streamflow. their format needs to be CSV wit

1 Feb 14, 2022
Breast-Cancer-Classification - Using SKLearn breast cancer dataset which contains 569 examples and 32 features classifying has been made with 6 different algorithms

Breast-Cancer-Classification - Using SKLearn breast cancer dataset which contains 569 examples and 32 features classifying has been made with 6 different algorithms

Mert Sezer Ardal 1 Jan 31, 2022