Data used for detection and tracking of dynamic objects for visually impaired people
This paper presents in detail the methodology for the detection and tracking of dynamic objects from the article in press (A new methodology applied to dynamic object detection and tracking systems for visually impaired people [1]). In order to validate this methodology, four different architectures...
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doaj-2f428edb0fd846edabe957d8be6091002020-11-25T01:39:12ZengElsevierData in Brief2352-34092019-10-0126Data used for detection and tracking of dynamic objects for visually impaired peopleNatal Henrique Cordeiro0Emerson Carlos Pedrino1Federal Institute of São Paulo, Brazil; Federal University of São Carlos, Brazil; Corresponding author. Federal Institute of São Paulo, Brazil.Federal University of São Carlos, BrazilThis paper presents in detail the methodology for the detection and tracking of dynamic objects from the article in press (A new methodology applied to dynamic object detection and tracking systems for visually impaired people [1]). In order to validate this methodology, four different architectures have been designed in this paper. These architectures have implemented the techniques of pattern recognition, optical flow, background subtraction and color tracking to enable comparison and to see which is the most appropriate in a given environment. In this paper we also present a method created to quantify the effectiveness of each architecture implemented. Keywords: Dynamic objects, Detection, Segmentation, Tracking, Visually impaired peoplehttp://www.sciencedirect.com/science/article/pii/S2352340919307589 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Natal Henrique Cordeiro Emerson Carlos Pedrino |
spellingShingle |
Natal Henrique Cordeiro Emerson Carlos Pedrino Data used for detection and tracking of dynamic objects for visually impaired people Data in Brief |
author_facet |
Natal Henrique Cordeiro Emerson Carlos Pedrino |
author_sort |
Natal Henrique Cordeiro |
title |
Data used for detection and tracking of dynamic objects for visually impaired people |
title_short |
Data used for detection and tracking of dynamic objects for visually impaired people |
title_full |
Data used for detection and tracking of dynamic objects for visually impaired people |
title_fullStr |
Data used for detection and tracking of dynamic objects for visually impaired people |
title_full_unstemmed |
Data used for detection and tracking of dynamic objects for visually impaired people |
title_sort |
data used for detection and tracking of dynamic objects for visually impaired people |
publisher |
Elsevier |
series |
Data in Brief |
issn |
2352-3409 |
publishDate |
2019-10-01 |
description |
This paper presents in detail the methodology for the detection and tracking of dynamic objects from the article in press (A new methodology applied to dynamic object detection and tracking systems for visually impaired people [1]). In order to validate this methodology, four different architectures have been designed in this paper. These architectures have implemented the techniques of pattern recognition, optical flow, background subtraction and color tracking to enable comparison and to see which is the most appropriate in a given environment. In this paper we also present a method created to quantify the effectiveness of each architecture implemented. Keywords: Dynamic objects, Detection, Segmentation, Tracking, Visually impaired people |
url |
http://www.sciencedirect.com/science/article/pii/S2352340919307589 |
work_keys_str_mv |
AT natalhenriquecordeiro datausedfordetectionandtrackingofdynamicobjectsforvisuallyimpairedpeople AT emersoncarlospedrino datausedfordetectionandtrackingofdynamicobjectsforvisuallyimpairedpeople |
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1725049861594677248 |