International Research journal of Management Science and Technology

  ISSN 2250 - 1959 (online) ISSN 2348 - 9367 (Print) New DOI : 10.32804/IRJMST

Impact Factor* - 6.2311


**Need Help in Content editing, Data Analysis.

Research Gateway

Adv For Editing Content

   No of Download : 265    Submit Your Rating     Cite This   Download        Certificate

REVIEW ON HAND GESTURE BASED COMMUNICATION SYSTEM FOR SPEECH IMPAIRED PERSONS

    2 Author(s):  ASHLESHA RAUT, YOGESH MOTEY

Vol -  8, Issue- 12 ,         Page(s) : 54 - 59  (2017 ) DOI : https://doi.org/10.32804/IRJMST

Abstract

Communication through gesture is essential for deaf and dumb people for expressing their feeling in easier way. Millions of people are deaf and dumb around the world. People can easily listen to and learn other languages, but they don’t try to learn sign language. So there must be a solution to understand sign language of necessary text at least. In this paper various methods are discussed. The various work with their approach to solve the solution of the problem. Hand gestures play an important role which helps us to express more in less time. Now a day, Human-Machine interface has gained a lot of research attentions employing hand gestures.

1. Aarthi M Vijayalakshmi, “SIGN LANGUAGE TO SPEECH CONVERSION”, 2016 FIFTH INTERNATIONAL CONFERENCE ON RECENT TRENDS IN INFORMATION TECHNOLOGY.
2. Kamalpreet Sharma, Naresh Kumar Garg, ”Hand Gestures Recognition For Deaf And Dumb”, International Journal ofComputer Application and Technology (s), May - 2014, pp. 10-13.
3. M.Nishiyama and K.Watanabe ,“Wearable Sensing Glove With Embedded Hetero-Core Fiber-Optic Nerves for Unconstrained Hand Motion Capture” IEEE Transactions On Instrumentation and Measurement, Vol. 58, No.12, December 2009, pp. 3995-4000.
4. Xu Zhang, Xiang Chen, Associate Member, IEEE, Yun Li, Vuokko Lantz, Kongqiao Wang, and Jihai Yang, “A Framework for Hand Gesture Recognition Based on Accelerometer and EMG Sensors”, IEEE Transactions On Systems, Man, And Cybernetics—Part A: Systems And Humans, Vol. 41, No. 6, November 2011.
5. W. Tangsuksant , “American Sign Language Recognition by Using 3D Geometric Invariant Feature and ANN Classification”, IEEE International Conference on Biomedical Engineering, 2014. Y. Yorozu, M. Hirano, K. Oka, and Y. Tagawa, “Electron spectroscopy studies on magneto-optical media and plastic substrate interface,” IEEE Transl. J. Magn. Japan, vol. 2, pp. 740-741, August 1987 [Digests 9th Annual Conf. Magnetics Japan, p. 301, 1982].
6. I.Hussain, A.Kumar Talukdar, K. Kumar Sarma” Hand Gesture Recognition System with Real-Time Palm Tracking” IEEE India Conference(INDICON),2014.
7. C. S. Weerasekera, M. H. Jaward, and N. Kamrani “Robust ASL Fingerspelling Recognition Using Local Binary Patterns And Geometric Features” IEEE International Conference,2013.
8. Yeongyu Park, Jeongsoo Lee, and Joonbum Bae, “ Development of a Wearable Sensing Glove for Measuring the Motion of Fingers Using Linear Potentiometers and Flexible Wires”,  IEEE Transactions on Industrial Informatics ( Volume: 11, Issue: 1, Feb. 2015 )
9. Y. Li , “ A Sign-Component-Based Framework for Chinese Sign Language Recognition Using Accelerometer and sEMG Data” IEEE Transactions On Biomedical Engineering, Vol. 59, No. 10,pp.2695-2704,Octoboer 2012.
10. Liu Yun, Zhang Lifeng, Zhang Shujun; “A Hand Gesture Recognition Method Based on Multi-Feature Fusion and Template Matching”; International Workshop on Information and Electronics Engineering (IWIEE); Science Direct 2012.
11. Sethu Janaki V M, Satish Babu, Sreekanth S S;” Real Time Recognition of 3D Gestures in Mobile Devices”; Recent         Advances in Intelligent Computational Systems (RAICS); 2013 IEEE.
12. Ra’eesah Mangera; “Static gesture recognition using features extracted from skeletal data”; IEEE 2013.
13. S.M. Yoon, T. Schreck and G.J. Yoon; “Sparse coding based feature optimization for robust 3D object retrieval”; Electronics Letters , IEEE 2012.
14. Lei Zhang, Yanning Zhang, Wei Wei, Fei Li; “3D Total Variation Hyperspectral Compressive Sensing Using Unmixing”;Foundation for Fundamental Research; IEEE 2014.
15. Dharani Mazumdar, Anjan Kumar Talukdar, Kandarpa Kumar Sarma; “Gloved and Free Hand Tracking based Hand Gesture Recognition” ICETACS IEEE 2013.”
16. Saurabh S. Chakole ;  Vivek R. Kapur ;  Y.A. Suryawanshi,”ARM     Hardware Plaform for Vehicular Monitoring and Tracking” 2013 International Conference on Communication Systems and Network Technologies.

*Contents are provided by Authors of articles. Please contact us if you having any query.






Bank Details