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Iris movement based wheel chair control using raspberry pi

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TLDR
This paper enlists some of the already existing methods along with some add-ons to improve the existing system for quadriplegia rehabilitation, and designs a system, which will be designed using Raspberry Pi and IR Camera Module.
Abstract
Paralysis is considered as a major curse in this world. The number of persons who are paralyzed and therefore dependent on others due to loss of self-mobility is growing with the population. Quadriplegia is a form of Paralysis in which you can only move your eyes. Much work has been done to help disabled persons to live independently. Various methods are used for the same and this paper enlists some of the already existing methods along with some add-ons to improve the existing system. Add-ons include a system, which will be designed using Raspberry Pi and IR Camera Module. OpenCV will be used for image processing and Python is used for programming the Raspberry Pi.

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Journal ArticleDOI

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Journal ArticleDOI

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Book ChapterDOI

Inductive Machine Learning with Image Processing for Objects Detection of a Robotic Arm with Raspberry PI

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Book ChapterDOI

Development of Solar-Powered Microcontroller-Relay-Based Control System Omnidirectional Wheelchair

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