Simple global thresholding neural network for shadow detection
Shadow detection based on vision sensors is widely used in image processing. Because of the variability of illumination and projection surface color, shadow detection based on a color image is a challenging problem. Aiming at solving the conflict between the complexity and robustness of current shad...
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sg-ntu-dr.10356-1537222022-01-20T03:04:38Z Simple global thresholding neural network for shadow detection Li, Guiyuan Zong, Changfu Zhang, Dong Zhu, Tianjun Li, Jianying School of Electrical and Electronic Engineering Engineering::Electrical and electronic engineering Shadow Detection Global Threshold Shadow detection based on vision sensors is widely used in image processing. Because of the variability of illumination and projection surface color, shadow detection based on a color image is a challenging problem. Aiming at solving the conflict between the complexity and robustness of current shadow detection algorithms, we established a new shadow detection network by combining the global thresholding method with a neural network, which realized the decoupling of the global threshold and binary fusion. Three public shadow detection datasets, large-scale shadow dataset of Stony Brook University (SBU), large-scale dataset with image shadow triplets (ISTD), and shadow detection for mobile robots features evaluation and datasets (SDMR), were utilized for its verification. Experimental results show that the performance of the proposed network approaches that of previous deep learning methods, both visually and in terms of objective indicators, but the proposed network has the advantages of a simple structure and good robustness. Published version This work is supported by the Scientific Study Project for Institutes of Higher Learning of Liaoning Provincial Department of Education (JP2016018), Characteristic Innovation Project of Guangdong Provincial Department of Education (2019KTSCX201), Zhaoqing Research and Development Technology and Application of Energy Conservation and Environmental Protection Ecological Governance (2020SN004), Teaching Quality and Reform of Higher Vocational Education Project of Guangdong Province (GDJG2019463), 2021 Special Projects in Key Fields of Colleges and Universities of Guangdong Province (2021ZDZX1061), and Youth Innovative Talents Project of Guangdong Provincial Department of Education (2018KQNCX290). 2022-01-20T03:04:37Z 2022-01-20T03:04:37Z 2021 Journal Article Li, G., Zong, C., Zhang, D., Zhu, T. & Li, J. (2021). Simple global thresholding neural network for shadow detection. Sensors and Materials, 33(9), 3307-3316. https://dx.doi.org/10.18494/SAM.2021.3398 0914-4935 https://hdl.handle.net/10356/153722 10.18494/SAM.2021.3398 2-s2.0-85116799674 9 33 3307 3316 en Sensors and Materials © 2021 MYU K.K. All rights reserved. This paper was published in Sensors and Materials and is made available with permission of MYU K.K. application/pdf |
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Engineering::Electrical and electronic engineering Shadow Detection Global Threshold Li, Guiyuan Zong, Changfu Zhang, Dong Zhu, Tianjun Li, Jianying Simple global thresholding neural network for shadow detection |
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Shadow detection based on vision sensors is widely used in image processing. Because of the variability of illumination and projection surface color, shadow detection based on a color image is a challenging problem. Aiming at solving the conflict between the complexity and robustness of current shadow detection algorithms, we established a new shadow detection network by combining the global thresholding method with a neural network, which realized the decoupling of the global threshold and binary fusion. Three public shadow detection datasets, large-scale shadow dataset of Stony Brook University (SBU), large-scale dataset with image shadow triplets (ISTD), and shadow detection for mobile robots features evaluation and datasets (SDMR), were utilized for its verification. Experimental results show that the performance of the proposed network approaches that of previous deep learning methods, both visually and in terms of objective indicators, but the proposed network has the advantages of a simple structure and good robustness. |
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School of Electrical and Electronic Engineering |
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School of Electrical and Electronic Engineering Li, Guiyuan Zong, Changfu Zhang, Dong Zhu, Tianjun Li, Jianying |
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Article |
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Li, Guiyuan Zong, Changfu Zhang, Dong Zhu, Tianjun Li, Jianying |
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Li, Guiyuan |
title |
Simple global thresholding neural network for shadow detection |
title_short |
Simple global thresholding neural network for shadow detection |
title_full |
Simple global thresholding neural network for shadow detection |
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Simple global thresholding neural network for shadow detection |
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Simple global thresholding neural network for shadow detection |
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simple global thresholding neural network for shadow detection |
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2022 |
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https://hdl.handle.net/10356/153722 |
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1723453409012482048 |