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Review Article|01 Jun 2021|OPEN
Applications of deep-learning approaches in horticultural research: a review 
Biyun Yang1 and Yong Xu,1,2 ,
1College of Mechanical and Electronic Engineering, Fujian Agriculture and Forestry University, 350002 Fuzhou, China
2Institute of Machine Learning and Intelligent Science, Fujian University of Technology, 33 Xuefu South Road, 350118 Fuzhou, China
*Corresponding author. E-mail: y.xu@fafu.edu.cn

Horticulture Research 8,
Article number: 123 (2021)
doi: https://doi.org/10.1038/s41438-021-00560-9
Views: 271

Received: 03 Aug 2020
Revised: 13 Mar 2021
Accepted: 22 Mar 2021
Published online: 01 Jun 2021

Abstract

Deep learning is known as a promising multifunctional tool for processing images and other big data. By assimilating large amounts of heterogeneous data, deep-learning technology provides reliable prediction results for complex and uncertain phenomena. Recently, it has been increasingly used by horticultural researchers to make sense of the large datasets produced during planting and postharvest processes. In this paper, we provided a brief introduction to deep-learning approaches and reviewed 71 recent research works in which deep-learning technologies were applied in the horticultural domain for variety recognition, yield estimation, quality detection, stress phenotyping detection, growth monitoring, and other tasks. We described in detail the application scenarios reported in the relevant literature, along with the applied models and frameworks, the used data, and the overall performance results. Finally, we discussed the current challenges and future trends of deep learning in horticultural research. The aim of this review is to assist researchers and provide guidance for them to fully understand the strengths and possible weaknesses when applying deep learning in horticultural sectors. We also hope that this review will encourage researchers to explore some significant examples of deep learning in horticultural science and will promote the advancement of intelligent horticulture.