Drowsy driver mobile application: Development of a novel scleral-area detection method

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Abstract

A reliable and practical app for mobile devices was developed to detect driver drowsiness. It consisted of two main components: a Haar cascade classifier, provided by a computer vision framework called OpenCV, for face/eye detection; and a dedicated JAVA software code for image processing that was applied over a masked region circumscribing the eye. A binary threshold was performed over the masked region to provide a quantitative measure of the number of white pixels in the sclera, which represented the state of eye opening. A continuously low white-pixel count would indicate drowsiness, thereby triggering an alarm to alert the driver. This system was successfully implemented on: (1) a static face image, (2) two subjects under laboratory conditions, and (3) a subject in a vehicle environment.

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Mohammad, F., Mahadas, K., & Hung, G. K. (2017). Drowsy driver mobile application: Development of a novel scleral-area detection method. Computers in Biology and Medicine, 89, 76–83. https://doi.org/10.1016/j.compbiomed.2017.07.027

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