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Abstract : This project was created intending to use computer vision to be able to recognize the Sign Language in real time with high accuracy. The reason for such a project is to help diminish the gap between those who can hear well and those hard of hearing or even deaf. This can be overcome by creating a dataset of images that correspond to the alphabets, digits or signs applied to deep neural networks. These images are labeled according to the letter being signed. They are processed through a neural network using transfer learning to help the machine “learn” what is being signed after already having been taught on larger datasets of many more images and classifications.
OpenCV, Sign language, MediaPipe Holistic Keypoints, Long Short Term Memory Neural Network
OpenCV, Sign language, MediaPipe Holistic Keypoints, Long Short Term Memory Neural Network
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