Browse Articles

Article|01 Aug 2020|OPEN
Growth monitoring of greenhouse lettuce based on a convolutional neural network
Lingxian Zhang1,2 , , Zanyu Xu1 , Dan Xu3 , Juncheng Ma3 , and Yingyi Chen1 , Zetian Fu,1
1China Agricultural University, Beijing 100083, China
2Key Laboratory of Agricultural Informationization Standardization, Ministry of Agriculture and Rural Affairs, Beijing, China
3Institute of Environment and Sustainable Development in Agriculture, Chinese Academy of Agricultural Sciences, Beijing 100081, China
*Corresponding author. E-mail: zhanglx@cau.edu.cn,majuncheng@caas.cn

Horticulture Research 7,
Article number: 124 (2020)
doi: https://doi.org/10.1038/s41438-020-00345-6
Views: 824

Received: 29 Jan 2020
Revised: 20 Apr 2020
Accepted: 21 May 2020
Published online: 01 Aug 2020

Abstract

Growth-related traits, such as aboveground biomass and leaf area, are critical indicators to characterize the growth of greenhouse lettuce. Currently, nondestructive methods for estimating growth-related traits are subject to limitations in that the methods are susceptible to noise and heavily rely on manually designed features. In this study, a method for monitoring the growth of greenhouse lettuce was proposed by using digital images and a convolutional neural network (CNN). Taking lettuce images as the input, a CNN model was trained to learn the relationship between images and the corresponding growth-related traits, i.e., leaf fresh weight (LFW), leaf dry weight (LDW), and leaf area (LA). To compare the results of the CNN model, widely adopted methods were also used. The results showed that the values estimated by CNN had good agreement with the actual measurements, with R2 values of 0.8938, 0.8910, and 0.9156 and normalized root mean square error (NRMSE) values of 26.00, 22.07, and 19.94%, outperforming the compared methods for all three growth-related traits. The obtained results showed that the CNN demonstrated superior estimation performance for the flat-type cultivars of Flandria and Tiberius compared with the curled-type cultivar of Locarno. Generalization tests were conducted by using images of Tiberius from another growing season. The results showed that the CNN was still capable of achieving accurate estimation of the growth-related traits, with R2 values of 0.9277, 0.9126, and 0.9251 and NRMSE values of 22.96, 37.29, and 27.60%. The results indicated that a CNN with digital images is a robust tool for the monitoring of the growth of greenhouse lettuce.