Contextual Information and Covariance Descriptors for People Surveillance: An Application for Safety of Construction Workers

<p>Abstract</p> <p>In computer science, contextual information can be used both to reduce computations and to increase accuracy. This paper discusses how it can be exploited for people surveillance in very cluttered environments in terms of perspective (i.e., weak scene calibration...

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Main Authors: Prati Andrea, Gualdi Giovanni, Cucchiara Rita
Format: Article
Language:English
Published: SpringerOpen 2011-01-01
Series:EURASIP Journal on Image and Video Processing
Online Access:http://jivp.eurasipjournals.com/content/2011/684819
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spelling doaj-b9142c28b8aa4e47adb91b5af6a43c892020-11-25T00:35:18ZengSpringerOpenEURASIP Journal on Image and Video Processing1687-51761687-52812011-01-0120111684819Contextual Information and Covariance Descriptors for People Surveillance: An Application for Safety of Construction WorkersPrati AndreaGualdi GiovanniCucchiara Rita<p>Abstract</p> <p>In computer science, contextual information can be used both to reduce computations and to increase accuracy. This paper discusses how it can be exploited for people surveillance in very cluttered environments in terms of perspective (i.e., weak scene calibration) and appearance of the objects of interest (i.e., relevance feedback on the training of a classifier). These techniques are applied to a pedestrian detector that uses a LogitBoost classifier, appropriately modified to work with covariance descriptors which lie on Riemannian manifolds. On each detected pedestrian, a similar classifier is employed to obtain a precise localization of the head. Two novelties on the algorithms are proposed in this case: polar image transformations to better exploit the circular feature of the head appearance and multispectral image derivatives that catch not only luminance but also chrominance variations. The complete approach has been tested on the surveillance of a construction site to detect workers that do not wear the hard hat: in such scenarios, the complexity and dynamics are very high, making pedestrian detection a real challenge.</p>http://jivp.eurasipjournals.com/content/2011/684819
collection DOAJ
language English
format Article
sources DOAJ
author Prati Andrea
Gualdi Giovanni
Cucchiara Rita
spellingShingle Prati Andrea
Gualdi Giovanni
Cucchiara Rita
Contextual Information and Covariance Descriptors for People Surveillance: An Application for Safety of Construction Workers
EURASIP Journal on Image and Video Processing
author_facet Prati Andrea
Gualdi Giovanni
Cucchiara Rita
author_sort Prati Andrea
title Contextual Information and Covariance Descriptors for People Surveillance: An Application for Safety of Construction Workers
title_short Contextual Information and Covariance Descriptors for People Surveillance: An Application for Safety of Construction Workers
title_full Contextual Information and Covariance Descriptors for People Surveillance: An Application for Safety of Construction Workers
title_fullStr Contextual Information and Covariance Descriptors for People Surveillance: An Application for Safety of Construction Workers
title_full_unstemmed Contextual Information and Covariance Descriptors for People Surveillance: An Application for Safety of Construction Workers
title_sort contextual information and covariance descriptors for people surveillance: an application for safety of construction workers
publisher SpringerOpen
series EURASIP Journal on Image and Video Processing
issn 1687-5176
1687-5281
publishDate 2011-01-01
description <p>Abstract</p> <p>In computer science, contextual information can be used both to reduce computations and to increase accuracy. This paper discusses how it can be exploited for people surveillance in very cluttered environments in terms of perspective (i.e., weak scene calibration) and appearance of the objects of interest (i.e., relevance feedback on the training of a classifier). These techniques are applied to a pedestrian detector that uses a LogitBoost classifier, appropriately modified to work with covariance descriptors which lie on Riemannian manifolds. On each detected pedestrian, a similar classifier is employed to obtain a precise localization of the head. Two novelties on the algorithms are proposed in this case: polar image transformations to better exploit the circular feature of the head appearance and multispectral image derivatives that catch not only luminance but also chrominance variations. The complete approach has been tested on the surveillance of a construction site to detect workers that do not wear the hard hat: in such scenarios, the complexity and dynamics are very high, making pedestrian detection a real challenge.</p>
url http://jivp.eurasipjournals.com/content/2011/684819
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AT gualdigiovanni contextualinformationandcovariancedescriptorsforpeoplesurveillanceanapplicationforsafetyofconstructionworkers
AT cucchiararita contextualinformationandcovariancedescriptorsforpeoplesurveillanceanapplicationforsafetyofconstructionworkers
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