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Portable offline indoor object recognition system for the visually impaired
by
Stankovic, Vladimir
, Tawfik, Ayman
, Noman, Mohammed
in
Error detection
/ indoor
/ Microsoft Azure Kinect
/ object detection
/ Object recognition
/ Time-of-Flight
/ Visual impairment
/ visually impaired
2020
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Do you wish to request the book?
Portable offline indoor object recognition system for the visually impaired
by
Stankovic, Vladimir
, Tawfik, Ayman
, Noman, Mohammed
in
Error detection
/ indoor
/ Microsoft Azure Kinect
/ object detection
/ Object recognition
/ Time-of-Flight
/ Visual impairment
/ visually impaired
2020
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Portable offline indoor object recognition system for the visually impaired
Journal Article
Portable offline indoor object recognition system for the visually impaired
2020
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Overview
This article presents an indoor assistive system that addresses the challenges faced by visually impaired individuals. The proposed system helps the visually impaired individuals to move indoor and make them independent of any external assistance. The proposed system consists of a camera with a processing unit and an accompanying Time-of-Flight sensor providing an efficient, convenient and cost-effective solution. The proposed system achieves average object detection accuracy of 73.34% and a 5% error margin in detecting the distance and length of detected objects. The performance comparison with two existing systems shows that the proposed system provides a very close performance to the benchmarks with advantages of portability easy-to-use and no requirement for cloud services.
Publisher
Cogent,Taylor & Francis Ltd,Taylor & Francis Group
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