Collectiveness analysis with visual attributes
Individuals within crowd scenes tend to move unconsciously in a collective manner. The nature of this phenomenon surges motivations in collectiveness analysis to quantify and detect the collective behavior within the crowds. Due to the complexity of crowd scenes, most studies focus on the collective...
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my.um.eprints.270142022-03-14T07:10:28Z http://eprints.um.edu.my/27014/ Collectiveness analysis with visual attributes Japar, Nurul Kok, Ven Jyn Chan, Chee Seng QA75 Electronic computers. Computer science Individuals within crowd scenes tend to move unconsciously in a collective manner. The nature of this phenomenon surges motivations in collectiveness analysis to quantify and detect the collective behavior within the crowds. Due to the complexity of crowd scenes, most studies focus on the collective motion of individuals. However, it requires the extraction of temporal information, i.e., motion attributes, in consecutive video frames. Based on the approach, collectiveness analysis relies on the total number of motion attributes that could not represent the total number of individuals and limits mid-level understanding within crowd scenes. Alternatively, this study proposes a novel framework for collectiveness analysis using visual attributes. It is based on visual attributes extraction approach to facilitate individual-level understanding based on still image input. By localizing individuals and classifying individuals' head pose, the proposed framework alleviates the need to rely on temporal information and explores topological relationship propagation among individuals to infer collectiveness analysis. Inclusive experiments on various crowd densities illustrate the aims of the proposed framework to infer high-level crowd analysis with visual attributes. Its efficacy is evaluated on real crowd scenes and compared with the state-of-theart approaches including achieving estimation of group with Average Difference (AD) = 1.68 and Mean Square Error (MSE) = 1.71. Its potential applicability is demonstrated in the context of crowd estimation and collectiveness analysis. (c) 2021 Elsevier B.V. All rights reserved. Elsevier 2021-11-06 Article PeerReviewed Japar, Nurul and Kok, Ven Jyn and Chan, Chee Seng (2021) Collectiveness analysis with visual attributes. Neurocomputing, 463. pp. 77-90. ISSN 0925-2312, DOI https://doi.org/10.1016/j.neucom.2021.08.038 <https://doi.org/10.1016/j.neucom.2021.08.038>. 10.1016/j.neucom.2021.08.038 |
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QA75 Electronic computers. Computer science Japar, Nurul Kok, Ven Jyn Chan, Chee Seng Collectiveness analysis with visual attributes |
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Individuals within crowd scenes tend to move unconsciously in a collective manner. The nature of this phenomenon surges motivations in collectiveness analysis to quantify and detect the collective behavior within the crowds. Due to the complexity of crowd scenes, most studies focus on the collective motion of individuals. However, it requires the extraction of temporal information, i.e., motion attributes, in consecutive video frames. Based on the approach, collectiveness analysis relies on the total number of motion attributes that could not represent the total number of individuals and limits mid-level understanding within crowd scenes. Alternatively, this study proposes a novel framework for collectiveness analysis using visual attributes. It is based on visual attributes extraction approach to facilitate individual-level understanding based on still image input. By localizing individuals and classifying individuals' head pose, the proposed framework alleviates the need to rely on temporal information and explores topological relationship propagation among individuals to infer collectiveness analysis. Inclusive experiments on various crowd densities illustrate the aims of the proposed framework to infer high-level crowd analysis with visual attributes. Its efficacy is evaluated on real crowd scenes and compared with the state-of-theart approaches including achieving estimation of group with Average Difference (AD) = 1.68 and Mean Square Error (MSE) = 1.71. Its potential applicability is demonstrated in the context of crowd estimation and collectiveness analysis. (c) 2021 Elsevier B.V. All rights reserved. |
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Japar, Nurul Kok, Ven Jyn Chan, Chee Seng |
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Japar, Nurul Kok, Ven Jyn Chan, Chee Seng |
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Japar, Nurul |
title |
Collectiveness analysis with visual attributes |
title_short |
Collectiveness analysis with visual attributes |
title_full |
Collectiveness analysis with visual attributes |
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Collectiveness analysis with visual attributes |
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Collectiveness analysis with visual attributes |
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collectiveness analysis with visual attributes |
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Elsevier |
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2021 |
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http://eprints.um.edu.my/27014/ |
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