Hand Gesture Image Recognitions Using CNN Algorithm for Smart Interaction
Author(s):
Sachin.V.Suryawanshi, Prajwal.P.Kasture, Suraj.S.Malge, Sushilkumar.S.Salve
Keywords:
convolution neural network (CNN), Hand Gesture, MobileNet, Sign.
Abstract
Sign language is one way to communicate with deaf people. Hand gestures are one of the typical methods used in sign language. One should learn sign language to interact with them. Learning usually takes place in peer groups. There are few study materials available for sign learning. Because of this, the process of learning sign language is very difficult task. This project presents a solution that will not only automatically recognize hand gestures but also convert it into text output so that the impaired person can easily communicate with normal people. In this paper, we propose a convolution neural network (CNN) method to recognize hand gestures. To achieve the desired level of performance, The skin model and the calibration of hand position and orientation are applied to obtain the training and testing data for the CNN. Since the light condition seriously affects the skin color, we adopt a Gaussian Mixture model (GMM) to train the skin model, which is used to robustly filter out non-skin colors in an image. Then the calibrated images are used to train the CNN.
Article Details
Unique Paper ID: 154626

Publication Volume & Issue: Volume 8, Issue 11

Page(s): 721 - 724
Article Preview & Download


Share This Article

Join our RMS

Conference Alert

NCSEM 2024

National Conference on Sustainable Engineering and Management - 2024

Last Date: 15th March 2024

Call For Paper

Volume 10 Issue 10

Last Date for paper submitting for March Issue is 25 June 2024

About Us

IJIRT.org enables door in research by providing high quality research articles in open access market.

Send us any query related to your research on editor@ijirt.org

Social Media

Google Verified Reviews