A Sign Language Control Based ATM Access System for the Blind Using AI/ML

Authors

  • Rajdeep Bhagat Dept. Of Computer Science and Engineering Dr. Ambedkar Institute of Technology, Bengaluru – 560056, India
  • Vanlaldika Department of Computer Science and Engineering, Dr. Ambedkar Institute of Technology, Bengaluru – 560056, Karnataka, India
  • Pratik Singh Department of Computer Science and Engineering, Dr. Ambedkar Institute of Technology, Bengaluru – 560056, Karnataka, India
  • Sushant Mani Tripathi Department of Computer Science and Engineering, Dr. Ambedkar Institute of Technology, Bengaluru – 560056, Karnataka, India
  • Sowmya C L Department of Computer Science and Engineering, Dr. Ambedkar Institute of Technology, Bengaluru – 560056, Karnataka, India

Keywords:

ATM, Blind, Image Processing, Security, Video Processing

Abstract

In Today’s World, about 285 million people are visually impaired worldwide: 39 million are blind and 246 million have low vision (severe or moderate visual impairment) preventable causes are as high as 80% of the total global visual impairment burden. Globally, uncorrected refractive errors are the main cause of visual impairment. Cataracts are the leading cause of blindness 65% of visually impaired, and 82% of blind people are over 50 years of age, although this age group comprises only 20% of the world population. Blindness can be classified into 3 types, Complete blindness, Night blindness, and Color blindness. The main problems faced by blind people: during financial transactions especially in ATMs. In the existing ATMs, Braille is inscribed on the keypad to facilitate blind. But, What if people don't know Braille, or how to insert a card? The friend accompanying him might get to know the password or someone else can come to know of his pin number. A stranger might try to help the blind win the trust and rob him. So, we propose to design and develop a safer and more secure ATM accessing system for the blind.

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References

Ebey Abraham, Akshatha Nayak and Ashna Iqbal “Real-Time Translation of Indian Sign Language using LSTM” 2019 Global Conference for Advancement in Technology (GCAT)Bangalore, India. Oct 18-20, 2019.

K. SASIREKHA*, M. NIVETHA, A. INDUMATHI and D. RENUKADEVI “ATM Machine For Blind People”.

Drish Mali, Rubash Mali, Sushila Sipai and Sanjeeb Prasad Panday (PhD)”Two Dimensional (2D) Convolutional Neural Network for Nepali Sign Language Recognition” 978-1-5386-9141- bchs0/18/$31.00 ©2018 IEEE.

Yuichiro Mori and Masahiko Toyonaga “Data-Glove for Japanese Sign Language Training System with Gyro-Sensor “2018 joint 10th conference and intelligent system and 19th International Symposism.

S Yarisha Heera, Madhuri K Murthy,Sravanti V S“Talking Hands” InternationalConference on Innovative Mechanisms for Industry Applications(ICIMIA 2017).

Abhishek B. Jani1 (Member, IEEE), Nishith A. Kotak (Member, IEEE) and Anil K. Roy(Senior Member, IEEE)”Sensor Based Hand Guesture Recognition System for English Alphabets used is Sign Language of Deaf Mute People” 978-1-5386-4707-3/18/$31.00 ©2018 IEEE.

Sanmuk Kaur “Electronic Device Control Using Hand Gesture Recognition System For Differently Abled”.

Nitipon Navaitthiporn , Preeyarat Rithcharung , Phitnaree Hattapath , C. Pintavirooj “Intelligent glove for sign language communication” The 2019 Biomedical Engineering International Conference (BMEiCON- 2019).

Meenakshi Panwar “Hand Gesture based Interface for Aiding Visually Impaired” 978-1-4673- 0255-5/12/$31.00c 2012 IEEE.

Paul D. Rosero-Montalvo; Pamela Godoy-Trujillo, Edison Flores-Bosmediano, Jorge Carrascal-Garc?a,Santiago Otero-Potosi, Henry Benitez-Pereira and Diego H. Peluffo- Ordonez “Sign Language Recognition Based on Intelligent Glove Using Machine Learning Techniques” 978-1-5386-6657-9/18/$31.00 c 2018 IEEE.

Neven Saleh, Mostafa Farghaly, Eslam Elshaaer and Amr Mousa “Smart glove-based gestures recognition system for Arabic sign language” 2020 International conference on Innovative trends in communication and Computer Engineering(ITCE2020).

Andrews Samraj and Naser Mehrdel and Shohel Sayeed “Sign Language Communication and Authentication using sensor Fusion of Hand Glove and Photometric Signal” 2017 8th International Conference on Information Technology (ICIT).

Zain Murtaza, Hadia Akmal and Wardah Afzal “Human Computer Interaction based on Gestural Recognition/Sign Language to Text Conversion”.

Dhruva N., Rupanagudi S.R., Neelkant Kashyap H.N. (2013) Novel Algorithm for Image Processing Based Hand Gesture Recognition and Its Application in Security. In: Unnikrishnan S., Surve S., Bhoir D. (eds) Advances in Computing, Communication, and Control. ICAC3 2013. Communications in Computer and Information Science, vol 361. Springer, Berlin, Heidelberg. https://doi.org/10.1007/978-3-642-36321-4_51

S. R. Rupanagudi et al., "A high speed algorithm for identifying hand gestures for an ATM input system for the blind," 2015 IEEE Bombay Section Symposium (IBSS), Mumbai, 2015, pp. 1-6, doi: 10.1109/IBSS.2015.7456642.

N. Dhruva, S. R. Rupanagudi, S. K. Sachin, B. Sthuthi, R. Pavithra and Raghavendra, "Novel segmentation algorithm for hand gesture recognition," 2013 International Mutli-Conference on Automation, Computing, Communication, Control and Compressed Sensing (iMac4s), Kottayam, 2013, pp. 383-388, doi: 10.1109/iMac4s.2013.6526441.

S. S. P G, P. S. Nayak, S. V, S. K, and S. S. G, “Blind Friendly ATM Software System”, pices, vol. 1, no. 4, pp. 36-38, Aug. 2017.

C. V. Reddy, D. M. Ramani, G. K, H. K, and S. B. P, “Gesture Recognition System for the Blind”, pices, no. PaCER 2020, pp. 189-191, Jul. 2020.

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Published

2022-06-05

How to Cite

[1]
R. Bhagat, Vanlaldika, P. Singh, S. M. Tripathi, and S. C L, “A Sign Language Control Based ATM Access System for the Blind Using AI/ML”, pices, pp. 42-46, Jun. 2022.

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Articles