Litcius/Paper detail

An assistive model of obstacle detection based on deep learning: YOLOv3 for visually impaired people

Nachirat Rachburee, Wattana Punlumjeak

2021International Journal of Power Electronics and Drive Systems/International Journal of Electrical and Computer Engineering33 citationsDOIOpen Access PDF

Abstract

<span>The World Health Organization (WHO) reported in 2019 that at least 2.2 billion people were visual-impairment or blindness. The main problem of living for visually impaired people have been facing difficulties in moving even indoor or outdoor situations. Therefore, their lives are not safe and harmful. In this paper, we propose</span><span>d</span><span> an assistive application model based on deep learning: YOLOv3 with a Darknet-53 base network for visually impaired people on a smartphone. The Pascal VOC2007 and Pascal VOC2012 were used for the training set and used Pascal VOC2007 test set for validation. The assistive model was installed on a smartphone with an eSpeak synthesizer which generates the audio output to the user. The experimental result showed a high speed and also high detection accuracy. The proposed application with the help of technology will be an effective way to assist visually impaired people to interact with the surrounding environment in their daily life.</span>

Topics & Concepts

Pascal (unit)Visually impairedBlindnessComputer scienceLife spanVisual impairmentDeep learningObstacleArtificial intelligenceHuman–computer interactionPsychologyMedicineGerontologyOptometryLawProgramming languagePsychiatryPolitical scienceVideo Surveillance and Tracking MethodsTactile and Sensory InteractionsIoT and GPS-based Vehicle Safety Systems
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