Optimized Feature Extraction for Precise Sign Gesture Recognition Using Self-improved Genetic Algorithm

Over the past two years, gesture recognition has become the powerful communication source to the hearing-impaired society. Furthermore, it is supportive in creating interaction between the human and the computer. However, the intricacy against the gesture recognition arises when the environment is r...

Full description

Bibliographic Details
Main Authors: Rajesh Kaluri, Pradeep Reddy CH
Format: Article
Language:English
Published: Taiwan Association of Engineering and Technology Innovation 2018-01-01
Series:International Journal of Engineering and Technology Innovation
Subjects:
GA
Online Access:http://ojs.imeti.org/index.php/IJETI/article/view/492
id doaj-ad9bf73768814f7f97f5ecf324ecffae
record_format Article
spelling doaj-ad9bf73768814f7f97f5ecf324ecffae2020-11-24T21:44:57ZengTaiwan Association of Engineering and Technology InnovationInternational Journal of Engineering and Technology Innovation2223-53292226-809X2018-01-0181291Optimized Feature Extraction for Precise Sign Gesture Recognition Using Self-improved Genetic AlgorithmRajesh KaluriPradeep Reddy CHOver the past two years, gesture recognition has become the powerful communication source to the hearing-impaired society. Furthermore, it is supportive in creating interaction between the human and the computer. However, the intricacy against the gesture recognition arises when the environment is relatively complex. In this paper, recognition algorithm with feature selection based on Self-Improved Genetic Algorithm (SIGA) is proposed to promote proficient gesture recognition.  Furthermore, the recognition process of this paper includes segmentation, feature extraction and feed- forward neural network classification. Subsequent to the gesture recognition experiment, the performance analysis of the proposed SIGA is compared with the conventional methods as reported in the literature along with standard Genetic Algorithm (GA). In addition, the effect of optimization and the feature sensitivity is also demonstrated. Thus, this method makes aggregate performance against the conventional algorithms. http://ojs.imeti.org/index.php/IJETI/article/view/492gesture sign recognitionGASIGAfeed- forward neural network
collection DOAJ
language English
format Article
sources DOAJ
author Rajesh Kaluri
Pradeep Reddy CH
spellingShingle Rajesh Kaluri
Pradeep Reddy CH
Optimized Feature Extraction for Precise Sign Gesture Recognition Using Self-improved Genetic Algorithm
International Journal of Engineering and Technology Innovation
gesture sign recognition
GA
SIGA
feed- forward neural network
author_facet Rajesh Kaluri
Pradeep Reddy CH
author_sort Rajesh Kaluri
title Optimized Feature Extraction for Precise Sign Gesture Recognition Using Self-improved Genetic Algorithm
title_short Optimized Feature Extraction for Precise Sign Gesture Recognition Using Self-improved Genetic Algorithm
title_full Optimized Feature Extraction for Precise Sign Gesture Recognition Using Self-improved Genetic Algorithm
title_fullStr Optimized Feature Extraction for Precise Sign Gesture Recognition Using Self-improved Genetic Algorithm
title_full_unstemmed Optimized Feature Extraction for Precise Sign Gesture Recognition Using Self-improved Genetic Algorithm
title_sort optimized feature extraction for precise sign gesture recognition using self-improved genetic algorithm
publisher Taiwan Association of Engineering and Technology Innovation
series International Journal of Engineering and Technology Innovation
issn 2223-5329
2226-809X
publishDate 2018-01-01
description Over the past two years, gesture recognition has become the powerful communication source to the hearing-impaired society. Furthermore, it is supportive in creating interaction between the human and the computer. However, the intricacy against the gesture recognition arises when the environment is relatively complex. In this paper, recognition algorithm with feature selection based on Self-Improved Genetic Algorithm (SIGA) is proposed to promote proficient gesture recognition.  Furthermore, the recognition process of this paper includes segmentation, feature extraction and feed- forward neural network classification. Subsequent to the gesture recognition experiment, the performance analysis of the proposed SIGA is compared with the conventional methods as reported in the literature along with standard Genetic Algorithm (GA). In addition, the effect of optimization and the feature sensitivity is also demonstrated. Thus, this method makes aggregate performance against the conventional algorithms.
topic gesture sign recognition
GA
SIGA
feed- forward neural network
url http://ojs.imeti.org/index.php/IJETI/article/view/492
work_keys_str_mv AT rajeshkaluri optimizedfeatureextractionforprecisesigngesturerecognitionusingselfimprovedgeneticalgorithm
AT pradeepreddych optimizedfeatureextractionforprecisesigngesturerecognitionusingselfimprovedgeneticalgorithm
_version_ 1725907559060078592