Sign-Language-To-Text-Conversion and ASL-Recognition-System
About Sign-Language-To-Text-Conversion
emnikhil/Sign-Language-To-Text-Conversion
Sign Language to Text Conversion is a real-time system that uses a camera to capture hand gestures and translates them into text, words, and sentences using Computer Vision and Machine Learning.
This project offers a real-time system that translates American Sign Language (ASL) fingerspelling into written text. By using a standard camera, it captures hand gestures and converts them into individual letters, which can then be combined to form words and sentences. It is designed for individuals who need to communicate with Deaf and Mute people who primarily use sign language.
About ASL-Recognition-System
Muhib-Mehdi/ASL-Recognition-System
The ASL Recognition System is a real‑time American Sign Language (ASL) gesture‑recognition application built with Python, TensorFlow Lite, OpenCV, and MediaPipe. It captures hand landmarks from a webcam, processes them through a lightweight neural network, and instantly translates the gestures into alphabet letters (A‑Z).
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