A Sparse Deep Transfer Learning Model and Its Application for Smart Agriculture
The introduction of deep transfer learning (DTL) further reduces the requirement of data and expert knowledge in various uses of applications, helping DNN-based models effectively reuse information. However, it often transfers all parameters from the source network that might be useful to the task....
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2021-01-01
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Series: | Wireless Communications and Mobile Computing |
Online Access: | http://dx.doi.org/10.1155/2021/9957067 |
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doaj-22f5005c92e249a49890cd8c4a8e99112021-07-05T00:02:37ZengHindawi-WileyWireless Communications and Mobile Computing1530-86772021-01-01202110.1155/2021/9957067A Sparse Deep Transfer Learning Model and Its Application for Smart AgricultureZhikui Chen0Xu Zhang1Shi Chen2Fangming Zhong3The School of Software TechnologyThe School of Software TechnologyEmporia State UniversityThe School of Software TechnologyThe introduction of deep transfer learning (DTL) further reduces the requirement of data and expert knowledge in various uses of applications, helping DNN-based models effectively reuse information. However, it often transfers all parameters from the source network that might be useful to the task. The redundant trainable parameters restrict DTL in low-computing-power devices and edge computing, while small effective networks with fewer parameters have difficulty transferring knowledge due to structural differences in design. For the challenge of how to transfer a simplified model from a complex network, in this paper, an algorithm is proposed to realize a sparse DTL, which only transfers and retains the most necessary structure to reduce the parameters of the final model. Sparse transfer hypothesis is introduced, in which a compressing strategy is designed to construct deep sparse networks that distill useful information in the auxiliary domain, improving the transfer efficiency. The proposed method is evaluated on representative datasets and applied for smart agriculture to train deep identification models that can effectively detect new pests using few data samples.http://dx.doi.org/10.1155/2021/9957067 |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Zhikui Chen Xu Zhang Shi Chen Fangming Zhong |
spellingShingle |
Zhikui Chen Xu Zhang Shi Chen Fangming Zhong A Sparse Deep Transfer Learning Model and Its Application for Smart Agriculture Wireless Communications and Mobile Computing |
author_facet |
Zhikui Chen Xu Zhang Shi Chen Fangming Zhong |
author_sort |
Zhikui Chen |
title |
A Sparse Deep Transfer Learning Model and Its Application for Smart Agriculture |
title_short |
A Sparse Deep Transfer Learning Model and Its Application for Smart Agriculture |
title_full |
A Sparse Deep Transfer Learning Model and Its Application for Smart Agriculture |
title_fullStr |
A Sparse Deep Transfer Learning Model and Its Application for Smart Agriculture |
title_full_unstemmed |
A Sparse Deep Transfer Learning Model and Its Application for Smart Agriculture |
title_sort |
sparse deep transfer learning model and its application for smart agriculture |
publisher |
Hindawi-Wiley |
series |
Wireless Communications and Mobile Computing |
issn |
1530-8677 |
publishDate |
2021-01-01 |
description |
The introduction of deep transfer learning (DTL) further reduces the requirement of data and expert knowledge in various uses of applications, helping DNN-based models effectively reuse information. However, it often transfers all parameters from the source network that might be useful to the task. The redundant trainable parameters restrict DTL in low-computing-power devices and edge computing, while small effective networks with fewer parameters have difficulty transferring knowledge due to structural differences in design. For the challenge of how to transfer a simplified model from a complex network, in this paper, an algorithm is proposed to realize a sparse DTL, which only transfers and retains the most necessary structure to reduce the parameters of the final model. Sparse transfer hypothesis is introduced, in which a compressing strategy is designed to construct deep sparse networks that distill useful information in the auxiliary domain, improving the transfer efficiency. The proposed method is evaluated on representative datasets and applied for smart agriculture to train deep identification models that can effectively detect new pests using few data samples. |
url |
http://dx.doi.org/10.1155/2021/9957067 |
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