Solar-Powered Deep Learning-Based Recognition System of Daily Used Objects and Human Faces for Assistance of the Visually Impaired
This paper introduces a novel low-cost solar-powered wearable assistive technology (AT) device, whose aim is to provide continuous, real-time object recognition to ease the finding of the objects for visually impaired (VI) people in daily life. The system consists of three major components: a miniat...
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doaj-4780c997e3b84e5da24de71cc0659b9d2020-11-25T04:02:59ZengMDPI AGEnergies1996-10732020-11-01136104610410.3390/en13226104Solar-Powered Deep Learning-Based Recognition System of Daily Used Objects and Human Faces for Assistance of the Visually ImpairedBernardo Calabrese0Ramiro Velázquez1Carolina Del-Valle-Soto2Roberto de Fazio3Nicola Ivan Giannoccaro4Paolo Visconti5Facultad de Ingeniería, Universidad Panamericana, Aguascalientes 20290, MexicoFacultad de Ingeniería, Universidad Panamericana, Aguascalientes 20290, MexicoFacultad de Ingeniería, Universidad Panamericana, Zapopan 45010, MexicoDepartment of Innovation Engineering, University of Salento, 73100 Lecce, ItalyDepartment of Innovation Engineering, University of Salento, 73100 Lecce, ItalyFacultad de Ingeniería, Universidad Panamericana, Aguascalientes 20290, MexicoThis paper introduces a novel low-cost solar-powered wearable assistive technology (AT) device, whose aim is to provide continuous, real-time object recognition to ease the finding of the objects for visually impaired (VI) people in daily life. The system consists of three major components: a miniature low-cost camera, a system on module (SoM) computing unit, and an ultrasonic sensor. The first is worn on the user’s eyeglasses and acquires real-time video of the nearby space. The second is worn as a belt and runs deep learning-based methods and spatial algorithms which process the video coming from the camera performing objects’ detection and recognition. The third assists on positioning the objects found in the surrounding space. The developed device provides audible descriptive sentences as feedback to the user involving the objects recognized and their position referenced to the user gaze. After a proper power consumption analysis, a wearable solar harvesting system, integrated with the developed AT device, has been designed and tested to extend the energy autonomy in the different operating modes and scenarios. Experimental results obtained with the developed low-cost AT device have demonstrated an accurate and reliable real-time object identification with an 86% correct recognition rate and 215 ms average time interval (in case of high-speed SoM operating mode) for the image processing. The proposed system is capable of recognizing the 91 objects offered by the Microsoft Common Objects in Context (COCO) dataset plus several custom objects and human faces. In addition, a simple and scalable methodology for using image datasets and training of Convolutional Neural Networks (CNNs) is introduced to add objects to the system and increase its repertory. It is also demonstrated that comprehensive trainings involving 100 images per targeted object achieve 89% recognition rates, while fast trainings with only 12 images achieve acceptable recognition rates of 55%.https://www.mdpi.com/1996-1073/13/22/6104assistive technologyconvolutional neural networks (CNN)deep learningfaster R-CNNmobile computingobject recognition |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Bernardo Calabrese Ramiro Velázquez Carolina Del-Valle-Soto Roberto de Fazio Nicola Ivan Giannoccaro Paolo Visconti |
spellingShingle |
Bernardo Calabrese Ramiro Velázquez Carolina Del-Valle-Soto Roberto de Fazio Nicola Ivan Giannoccaro Paolo Visconti Solar-Powered Deep Learning-Based Recognition System of Daily Used Objects and Human Faces for Assistance of the Visually Impaired Energies assistive technology convolutional neural networks (CNN) deep learning faster R-CNN mobile computing object recognition |
author_facet |
Bernardo Calabrese Ramiro Velázquez Carolina Del-Valle-Soto Roberto de Fazio Nicola Ivan Giannoccaro Paolo Visconti |
author_sort |
Bernardo Calabrese |
title |
Solar-Powered Deep Learning-Based Recognition System of Daily Used Objects and Human Faces for Assistance of the Visually Impaired |
title_short |
Solar-Powered Deep Learning-Based Recognition System of Daily Used Objects and Human Faces for Assistance of the Visually Impaired |
title_full |
Solar-Powered Deep Learning-Based Recognition System of Daily Used Objects and Human Faces for Assistance of the Visually Impaired |
title_fullStr |
Solar-Powered Deep Learning-Based Recognition System of Daily Used Objects and Human Faces for Assistance of the Visually Impaired |
title_full_unstemmed |
Solar-Powered Deep Learning-Based Recognition System of Daily Used Objects and Human Faces for Assistance of the Visually Impaired |
title_sort |
solar-powered deep learning-based recognition system of daily used objects and human faces for assistance of the visually impaired |
publisher |
MDPI AG |
series |
Energies |
issn |
1996-1073 |
publishDate |
2020-11-01 |
description |
This paper introduces a novel low-cost solar-powered wearable assistive technology (AT) device, whose aim is to provide continuous, real-time object recognition to ease the finding of the objects for visually impaired (VI) people in daily life. The system consists of three major components: a miniature low-cost camera, a system on module (SoM) computing unit, and an ultrasonic sensor. The first is worn on the user’s eyeglasses and acquires real-time video of the nearby space. The second is worn as a belt and runs deep learning-based methods and spatial algorithms which process the video coming from the camera performing objects’ detection and recognition. The third assists on positioning the objects found in the surrounding space. The developed device provides audible descriptive sentences as feedback to the user involving the objects recognized and their position referenced to the user gaze. After a proper power consumption analysis, a wearable solar harvesting system, integrated with the developed AT device, has been designed and tested to extend the energy autonomy in the different operating modes and scenarios. Experimental results obtained with the developed low-cost AT device have demonstrated an accurate and reliable real-time object identification with an 86% correct recognition rate and 215 ms average time interval (in case of high-speed SoM operating mode) for the image processing. The proposed system is capable of recognizing the 91 objects offered by the Microsoft Common Objects in Context (COCO) dataset plus several custom objects and human faces. In addition, a simple and scalable methodology for using image datasets and training of Convolutional Neural Networks (CNNs) is introduced to add objects to the system and increase its repertory. It is also demonstrated that comprehensive trainings involving 100 images per targeted object achieve 89% recognition rates, while fast trainings with only 12 images achieve acceptable recognition rates of 55%. |
topic |
assistive technology convolutional neural networks (CNN) deep learning faster R-CNN mobile computing object recognition |
url |
https://www.mdpi.com/1996-1073/13/22/6104 |
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