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Book ChapterDOI

Predicting American Sign Language from Hand Gestures Using Image Processing and Deep Learning

TLDR
Using image processing techniques like RGB to binary image conversion, skin detection, edge detection to extract the important features of the gesture and provide them as inputs to Convolution Neural Networks to improve the accuracy in predicting American Sign Language alphabets (ASL).
Abstract: 
The use of computer vision along with machine learning techniques resulted in a breakthrough in medical and social fields One such intervention is the sign language detection, enabling communication for differently-abled people Hand gestures are the common method used for this This paper deals with using image processing techniques like RGB to binary image conversion, skin detection, edge detection to extract the important features of the gesture and provide them as inputs to Convolution Neural Networks (CNN) to improve the accuracy in predicting American Sign Language alphabets (ASL) Using the preprocessed image data set of the hand gesture in our proposed mechanism has predicted the alphabets with higher accuracy up to 99% as compared to the model trained with original data set of images

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References
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Patent

Gesture recognition system

TL;DR: A gesture recognition system includes: elements for detecting and generating a signal corresponding a number of markers arranged on an object, elements for processing the signal from the detecting elements, members for detecting position of the markers in the signal as mentioned in this paper.

Finger Detection for Sign Language Recognition

TL;DR: An efficient and fast algorithm for identification of the number of fingers opened in a gesture representing an alphabet of the American Sign Language using Boundary Tracing and Finger Tip Detection is introduced.
Proceedings ArticleDOI

Hand gesture recognition using deep learning

TL;DR: A technique which commands computer using six static and eight dynamic hand gestures, the three main steps are: hand shape recognition, tracing of detected hand, and converting the data into the required command.
Journal ArticleDOI

Hand Gesture Recognition in Automotive Human–Machine Interaction Using Depth Cameras

TL;DR: This review describes current Machine Learning approaches to hand gesture recognition with depth data from time-of-flight sensors and confirms that Convolutional Neural Networks and Long Short-Term Memory yield most reliable results.
Journal ArticleDOI

Hand gesture recognition using DWT and F-ratio based feature descriptor

TL;DR: This study demonstrates the development of vision based static hand gesture recognition system using web camera in real-time applications and proposes a discrete wavelet transform (DWT) and Fisher ratio (Fisher ratio) based feature extraction technique to classify the hand gestures in an uncontrolled environment.
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