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Redesigned skip-network for crowd counting with dilated convolution and backward connection
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Metadata
Document Title
Redesigned skip-network for crowd counting with dilated convolution and backward connection
Author
Sooksatra S., Kondo T., Bunnun P., Yoshitaka A.
Name from Authors Collection
Scopus Author ID
25648808200
Affiliations
School of Information and Communication Technology, Sirindhorn International Institute of Technology, Thammasat University, Pathum Thani, 12120, Thailand; School of Information Science, Japan Advanced Institute of Science and Technology, Ishikawa, 923-1211, Japan; National Electronic and Computer Technology Center, National Science and Technology Development Agency, Pathum Thani, 12120, Thailand
Type
Article
Source Title
Journal of Imaging
ISSN
2313433X
Year
2020
Volume
6
Issue
5
Open Access
Gold, Green
Publisher
MDPI AG
DOI
10.3390/JIMAGING6050028
Abstract
Crowd counting is a challenging task dealing with the variation of an object scale and a crowd density. Existing works have emphasized on skip connections by integrating shallower layers with deeper layers, where each layer extracts features in a different object scale and crowd density. However, only high-level features are emphasized while ignoring low-level features. This paper proposes an estimation network by passing high-level features to shallow layers and emphasizing its low-level feature. Since an estimation network is a hierarchical network, a high-level feature is also emphasized by an improved low-level feature. Our estimation network consists of two identical networks for extracting a high-level feature and estimating the final result. To preserve semantic information, dilated convolution is employed without resizing the feature map. Our method was tested in three datasets for counting humans and vehicles in a crowd image. The counting performance is evaluated by mean absolute error and root mean squared error indicating the accuracy and robustness of an estimation network, respectively. The experimental result shows that our network outperforms other related works in a high crowd density and is effective for reducing over-counting error in the overall case. © 2020 by the authors.
Funding Sponsor
National Science and Technology Development Agency; Thammasat University
License
CC BY
Rights
Author
Publication Source
Scopus