My experiments with lip reading using GRIDcorpus dataset
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Updated
Oct 18, 2017 - Python
My experiments with lip reading using GRIDcorpus dataset
Automated Lip reading from real-time videos in tensorflow in python
Automated Lip Reading using Deep Reinforcement Learning
In this project, visual speech recognition has been attempted using 2 major machine learning techniques namely CNN and HMM. We also compare the efficiencies of Character and Word based CNN models. Miracl-VC1 Dataset was used to train all the models
Deep Learning Approach for Lip reading in Real-Time
End-to-end pipeline for lip reading at the word level using a tensorflow CNN implementation.
SYDE 522: Machine Intelligence course project on automated lip reading.
A Lip Reading Flutter Application
Our project's source code and documentation as part of the requirements for Graduation Project-2 (CCEN481) in Computer Engineering Program at Cairo University Faculty of Engineering
Repository for the paper "Lip Reading in unconstrained driving scenario with Greek words"
Speaker-Independent Speech Recognition using Visual Features
My experiments in lip reading using deep learning with the LRW dataset
Visual speech recognition with face inputs: code and models for F&G 2020 paper "Can We Read Speech Beyond the Lips? Rethinking RoI Selection for Deep Visual Speech Recognition"
A pipeline to read lips and generate speech for the read content, i.e Lip to Speech Synthesis.
An multi modal automated proctor for online exams
In this repository, I try to use k2, icefall and Lhotse for lip reading. I will modify it for the lip reading task. Many different lip-reading datasets should be added. -_-
Tracking mouth movement(Lips)
A novel lipreading system that improves on the task of speaker-independent word recognition by decoupling motion and content dynamics.
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