Person Detection for an Orthogonally Placed Monocular Camera
Counting of passengers entering and exiting means of transport is one of the basic functionalities of passenger flow monitoring systems. Exact numbers of passengers are important in areas such as public transport surveillance, passenger flow prediction, transport planning, and transport vehicle load...
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Series: | Journal of Advanced Transportation |
Online Access: | http://dx.doi.org/10.1155/2020/8843113 |
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doaj-ab89d915122f41daa3d999c58961fa752020-11-25T04:03:48ZengHindawi-WileyJournal of Advanced Transportation0197-67292042-31952020-01-01202010.1155/2020/88431138843113Person Detection for an Orthogonally Placed Monocular CameraPavel Skrabanek0Petr Dolezel1Zdenek Nemec2Dominik Stursa3Faculty of Mechanical Engineering, Brno University of Technology, Brno, Czech RepublicFaculty of Electrical Engineering and Informatics, University of Pardubice, Pardubice, Czech RepublicFaculty of Electrical Engineering and Informatics, University of Pardubice, Pardubice, Czech RepublicFaculty of Electrical Engineering and Informatics, University of Pardubice, Pardubice, Czech RepublicCounting of passengers entering and exiting means of transport is one of the basic functionalities of passenger flow monitoring systems. Exact numbers of passengers are important in areas such as public transport surveillance, passenger flow prediction, transport planning, and transport vehicle load monitoring. To allow mass utilization of passenger flow monitoring systems, their cost must be low. As the overall price is mainly given by prices of the used sensor and processing unit, we propose the utilization of a visible spectrum camera and data processing algorithms of low time complexity to ensure a low price of the final product. To guarantee the anonymity of passengers, we suggest orthogonal scanning of a scene. As the precision of the counting is relevantly influenced by the precision of passenger recognition, we focus on the development of an appropriate recognition method. We present two opposite approaches which can be used for the passenger recognition in means of transport with and without entrance steps, or with split level flooring. The first approach is the utilization of an appropriate convolutional neural network (ConvNet), which is currently the prevailing approach in computer vision. The second approach is the utilization of histograms of oriented gradients (HOG) features in combination with a support vector machine classifier. This approach is a representative of classical methods. We study both approaches in terms of practical applications, where real-time processing of data is one of the basic assumptions. Specifically, we examine classification performance and time complexity of the approaches for various topologies and settings, respectively. For this purpose, we form and make publicly available a large-scale, class-balanced dataset of labelled RGB images. We demonstrate that, compared to ConvNets, the HOG-based passenger recognition is more suitable for practical applications. For an appropriate setting, it defeats the ConvNets in terms of time complexity while keeping excellent classification performance. To allow verification of theoretical findings, we construct an engineering prototype of the system.http://dx.doi.org/10.1155/2020/8843113 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Pavel Skrabanek Petr Dolezel Zdenek Nemec Dominik Stursa |
spellingShingle |
Pavel Skrabanek Petr Dolezel Zdenek Nemec Dominik Stursa Person Detection for an Orthogonally Placed Monocular Camera Journal of Advanced Transportation |
author_facet |
Pavel Skrabanek Petr Dolezel Zdenek Nemec Dominik Stursa |
author_sort |
Pavel Skrabanek |
title |
Person Detection for an Orthogonally Placed Monocular Camera |
title_short |
Person Detection for an Orthogonally Placed Monocular Camera |
title_full |
Person Detection for an Orthogonally Placed Monocular Camera |
title_fullStr |
Person Detection for an Orthogonally Placed Monocular Camera |
title_full_unstemmed |
Person Detection for an Orthogonally Placed Monocular Camera |
title_sort |
person detection for an orthogonally placed monocular camera |
publisher |
Hindawi-Wiley |
series |
Journal of Advanced Transportation |
issn |
0197-6729 2042-3195 |
publishDate |
2020-01-01 |
description |
Counting of passengers entering and exiting means of transport is one of the basic functionalities of passenger flow monitoring systems. Exact numbers of passengers are important in areas such as public transport surveillance, passenger flow prediction, transport planning, and transport vehicle load monitoring. To allow mass utilization of passenger flow monitoring systems, their cost must be low. As the overall price is mainly given by prices of the used sensor and processing unit, we propose the utilization of a visible spectrum camera and data processing algorithms of low time complexity to ensure a low price of the final product. To guarantee the anonymity of passengers, we suggest orthogonal scanning of a scene. As the precision of the counting is relevantly influenced by the precision of passenger recognition, we focus on the development of an appropriate recognition method. We present two opposite approaches which can be used for the passenger recognition in means of transport with and without entrance steps, or with split level flooring. The first approach is the utilization of an appropriate convolutional neural network (ConvNet), which is currently the prevailing approach in computer vision. The second approach is the utilization of histograms of oriented gradients (HOG) features in combination with a support vector machine classifier. This approach is a representative of classical methods. We study both approaches in terms of practical applications, where real-time processing of data is one of the basic assumptions. Specifically, we examine classification performance and time complexity of the approaches for various topologies and settings, respectively. For this purpose, we form and make publicly available a large-scale, class-balanced dataset of labelled RGB images. We demonstrate that, compared to ConvNets, the HOG-based passenger recognition is more suitable for practical applications. For an appropriate setting, it defeats the ConvNets in terms of time complexity while keeping excellent classification performance. To allow verification of theoretical findings, we construct an engineering prototype of the system. |
url |
http://dx.doi.org/10.1155/2020/8843113 |
work_keys_str_mv |
AT pavelskrabanek persondetectionforanorthogonallyplacedmonocularcamera AT petrdolezel persondetectionforanorthogonallyplacedmonocularcamera AT zdeneknemec persondetectionforanorthogonallyplacedmonocularcamera AT dominikstursa persondetectionforanorthogonallyplacedmonocularcamera |
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