Lettuce Growth Pattern Analysis Using U-Net Pre-Trained with <i>Arabidopsis</i>

To overcome the challenges related to food security, digital farming has been proposed, wherein the status of a plant using various sensors could be determined in real time. The high-throughput phenotyping platform (HTPP) and analysis with deep learning (DL) are increasingly being used but require a...

Full description

Bibliographic Details
Main Authors: Sungyul Chang, Unseok Lee, Min Jeong Hong, Yeong Deuk Jo, Jin-Baek Kim
Format: Article
Language:English
Published: MDPI AG 2021-09-01
Series:Agriculture
Subjects:
Online Access:https://www.mdpi.com/2077-0472/11/9/890
id doaj-adfb680083704348a49514dd92b23822
record_format Article
spelling doaj-adfb680083704348a49514dd92b238222021-09-25T23:33:45ZengMDPI AGAgriculture2077-04722021-09-011189089010.3390/agriculture11090890Lettuce Growth Pattern Analysis Using U-Net Pre-Trained with <i>Arabidopsis</i>Sungyul Chang0Unseok Lee1Min Jeong Hong2Yeong Deuk Jo3Jin-Baek Kim4Radiation Breeding Research Team, Advanced Radiation Technology Institute (ARTI), Korea Atomic Energy Research Institute (KAERI), 29 Geumgu-gil, Jeongeup-si 56212, Jeollabuk-do, KoreaSmart Farm Research Center, Korea Institute of Science and Technology (KIST), 679 Saimdang-ro, Gangneung 210-340, Gangwon-do, KoreaRadiation Breeding Research Team, Advanced Radiation Technology Institute (ARTI), Korea Atomic Energy Research Institute (KAERI), 29 Geumgu-gil, Jeongeup-si 56212, Jeollabuk-do, KoreaRadiation Breeding Research Team, Advanced Radiation Technology Institute (ARTI), Korea Atomic Energy Research Institute (KAERI), 29 Geumgu-gil, Jeongeup-si 56212, Jeollabuk-do, KoreaRadiation Breeding Research Team, Advanced Radiation Technology Institute (ARTI), Korea Atomic Energy Research Institute (KAERI), 29 Geumgu-gil, Jeongeup-si 56212, Jeollabuk-do, KoreaTo overcome the challenges related to food security, digital farming has been proposed, wherein the status of a plant using various sensors could be determined in real time. The high-throughput phenotyping platform (HTPP) and analysis with deep learning (DL) are increasingly being used but require a lot of resources. For botanists who have no prior knowledge of DL, the image analysis method is relatively easy to use. Hence, we aimed to explore a pre-trained <i>Arabidopsis</i> DL model to extract the projected area (PA) for lettuce growth pattern analysis. The accuracies of the extract PA of the lettuce cultivar “Nul-chung” with a pre-trained model was measured using the Jaccard Index, and the median value was 0.88 and 0.87 in two environments. Moreover, the growth pattern of green lettuce showed reproducible results in the same environment (<i>p</i> < 0.05). The pre-trained model successfully extracted the time-series PA of lettuce under two lighting conditions (<i>p</i> < 0.05), showing the potential application of a pre-trained DL model of target species in the study of traits in non-target species under various environmental conditions. Botanists and farmers would benefit from fewer challenges when applying up-to-date DL in crop analysis when few resources are available for image analysis of a target crop.https://www.mdpi.com/2077-0472/11/9/890digital farmingdeep learningimage analysisplant areagrowth pattern
collection DOAJ
language English
format Article
sources DOAJ
author Sungyul Chang
Unseok Lee
Min Jeong Hong
Yeong Deuk Jo
Jin-Baek Kim
spellingShingle Sungyul Chang
Unseok Lee
Min Jeong Hong
Yeong Deuk Jo
Jin-Baek Kim
Lettuce Growth Pattern Analysis Using U-Net Pre-Trained with <i>Arabidopsis</i>
Agriculture
digital farming
deep learning
image analysis
plant area
growth pattern
author_facet Sungyul Chang
Unseok Lee
Min Jeong Hong
Yeong Deuk Jo
Jin-Baek Kim
author_sort Sungyul Chang
title Lettuce Growth Pattern Analysis Using U-Net Pre-Trained with <i>Arabidopsis</i>
title_short Lettuce Growth Pattern Analysis Using U-Net Pre-Trained with <i>Arabidopsis</i>
title_full Lettuce Growth Pattern Analysis Using U-Net Pre-Trained with <i>Arabidopsis</i>
title_fullStr Lettuce Growth Pattern Analysis Using U-Net Pre-Trained with <i>Arabidopsis</i>
title_full_unstemmed Lettuce Growth Pattern Analysis Using U-Net Pre-Trained with <i>Arabidopsis</i>
title_sort lettuce growth pattern analysis using u-net pre-trained with <i>arabidopsis</i>
publisher MDPI AG
series Agriculture
issn 2077-0472
publishDate 2021-09-01
description To overcome the challenges related to food security, digital farming has been proposed, wherein the status of a plant using various sensors could be determined in real time. The high-throughput phenotyping platform (HTPP) and analysis with deep learning (DL) are increasingly being used but require a lot of resources. For botanists who have no prior knowledge of DL, the image analysis method is relatively easy to use. Hence, we aimed to explore a pre-trained <i>Arabidopsis</i> DL model to extract the projected area (PA) for lettuce growth pattern analysis. The accuracies of the extract PA of the lettuce cultivar “Nul-chung” with a pre-trained model was measured using the Jaccard Index, and the median value was 0.88 and 0.87 in two environments. Moreover, the growth pattern of green lettuce showed reproducible results in the same environment (<i>p</i> < 0.05). The pre-trained model successfully extracted the time-series PA of lettuce under two lighting conditions (<i>p</i> < 0.05), showing the potential application of a pre-trained DL model of target species in the study of traits in non-target species under various environmental conditions. Botanists and farmers would benefit from fewer challenges when applying up-to-date DL in crop analysis when few resources are available for image analysis of a target crop.
topic digital farming
deep learning
image analysis
plant area
growth pattern
url https://www.mdpi.com/2077-0472/11/9/890
work_keys_str_mv AT sungyulchang lettucegrowthpatternanalysisusingunetpretrainedwithiarabidopsisi
AT unseoklee lettucegrowthpatternanalysisusingunetpretrainedwithiarabidopsisi
AT minjeonghong lettucegrowthpatternanalysisusingunetpretrainedwithiarabidopsisi
AT yeongdeukjo lettucegrowthpatternanalysisusingunetpretrainedwithiarabidopsisi
AT jinbaekkim lettucegrowthpatternanalysisusingunetpretrainedwithiarabidopsisi
_version_ 1717368649708208128