Driver Drowsiness Detection System

Abhishek TiwariDepartment of Computer Science and Engineering. Siddhant College of Engineering, Sudumbare, Pune, IndiaHarsh GadadeDepartment of Computer Science and Engineering. Siddhant College of Engineering, Sudumbare, Pune, IndiaPrashant TiwariDepartment of Computer Science and Engineering. Siddhant College of Engineering, Sudumbare, Pune, IndiaVikrant SakpalDepartment of Computer Science and Engineering. Siddhant College of Engineering, Sudumbare, Pune, India

Vol 7 No (2023): Volume 7, Special Issue of ICRTET- 2023 | Pages: 41-43

International Research Journal of Innovations in Engineering and Technology

OPEN ACCESS | Research Article | Published Date: 16-07-2023

doi Logo IRJIET.ICRTET10

Abstract

This report considers an overview of speech recognition technology, Software development, and its applications. The first section deals with the description of speech recognition process, its applications in different sectors, its flaws and finally the future of technology. Later part ofreport covers the speech recognition process, and the code for the software and it is working. Speech Recognition is the process of automatically recognizing a certain word spoken by a particular speaker based on individual information included in speech waves. In this project, we will use algorithms for the speech recognition which will implement on JAVA for platform independent facility this system can be used for any security system in which the person authentication is required.

Keywords

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Citation of this Article

Abhishek Tiwari, Harsh Gadade, Prashant Tiwari, Vikrant Sakpal, “Driver Drowsiness Detection System” in proceeding of International Conference of Recent Trends in Engineering & Technology ICRTET - 2023, Organized by SCOE, Sudumbare, Pune, India, Published in IRJIET, Volume 7, Special issue of ICRTET-2023, pp 41-43, June 2023.

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