Deep-Learning-Based Rice Phenological Stage Recognition
Crop phenology is an important attribute of crops, not only reflecting the growth and development of crops, but also affecting crop yield. By observing the phenological stages, agricultural production losses can be reduced and corresponding systems and plans can be formulated according to their changes, having guiding significance for agricultural production activities. Traditionally, crop phenological stages are determined mainly by manual analysis of remote sensing data collected by UAVs, which is time-consuming, labor-intensive, and may lead to data loss. To cope with this problem, this paper proposes a deep-learning-based method for rice phenological stage recognition. Firstly, we use a weather station equipped with RGB cameras to collect image data of the whole life cycle of rice and build a dataset. Secondly, we use object detection technology to clean the dataset and divide it into six subsets. Finally, we use ResNet-50 as the backbone network to extract spatial feature information from image data and achieve accurate recognition of six rice phenological stages, including seedling, tillering, booting jointing, heading flowering, grain filling, and maturity. Compared with the existing solutions, our method guarantees long-term, continuous, and accurate phenology monitoring. The experimental results show that our method can achieve an accuracy of around 87.33%, providing a new research direction for crop phenological stage recognition.
Main Authors: | , , , , , , , |
---|---|
Format: | Article/Letter to editor biblioteca |
Language: | English |
Subjects: | ResNet, Yolov5, deep learning, phenology, weather stations, |
Online Access: | https://research.wur.nl/en/publications/deep-learning-based-rice-phenological-stage-recognition |
Tags: |
Add Tag
No Tags, Be the first to tag this record!
|
id |
dig-wur-nl-wurpubs-617153 |
---|---|
record_format |
koha |
spelling |
dig-wur-nl-wurpubs-6171532025-01-14 Qin, Jiale Hu, Tianci Yuan, Jianghao Liu, Qingzhi Wang, Wensheng Liu, Jie Guo, Leifeng Song, Guozhu Article/Letter to editor Remote Sensing 15 (2023) 11 ISSN: 2072-4292 Deep-Learning-Based Rice Phenological Stage Recognition 2023 Crop phenology is an important attribute of crops, not only reflecting the growth and development of crops, but also affecting crop yield. By observing the phenological stages, agricultural production losses can be reduced and corresponding systems and plans can be formulated according to their changes, having guiding significance for agricultural production activities. Traditionally, crop phenological stages are determined mainly by manual analysis of remote sensing data collected by UAVs, which is time-consuming, labor-intensive, and may lead to data loss. To cope with this problem, this paper proposes a deep-learning-based method for rice phenological stage recognition. Firstly, we use a weather station equipped with RGB cameras to collect image data of the whole life cycle of rice and build a dataset. Secondly, we use object detection technology to clean the dataset and divide it into six subsets. Finally, we use ResNet-50 as the backbone network to extract spatial feature information from image data and achieve accurate recognition of six rice phenological stages, including seedling, tillering, booting jointing, heading flowering, grain filling, and maturity. Compared with the existing solutions, our method guarantees long-term, continuous, and accurate phenology monitoring. The experimental results show that our method can achieve an accuracy of around 87.33%, providing a new research direction for crop phenological stage recognition. en application/pdf https://research.wur.nl/en/publications/deep-learning-based-rice-phenological-stage-recognition 10.3390/rs15112891 https://edepot.wur.nl/635361 ResNet Yolov5 deep learning phenology weather stations https://creativecommons.org/licenses/by/4.0/ https://creativecommons.org/licenses/by/4.0/ Wageningen University & Research |
institution |
WUR NL |
collection |
DSpace |
country |
Países bajos |
countrycode |
NL |
component |
Bibliográfico |
access |
En linea |
databasecode |
dig-wur-nl |
tag |
biblioteca |
region |
Europa del Oeste |
libraryname |
WUR Library Netherlands |
language |
English |
topic |
ResNet Yolov5 deep learning phenology weather stations ResNet Yolov5 deep learning phenology weather stations |
spellingShingle |
ResNet Yolov5 deep learning phenology weather stations ResNet Yolov5 deep learning phenology weather stations Qin, Jiale Hu, Tianci Yuan, Jianghao Liu, Qingzhi Wang, Wensheng Liu, Jie Guo, Leifeng Song, Guozhu Deep-Learning-Based Rice Phenological Stage Recognition |
description |
Crop phenology is an important attribute of crops, not only reflecting the growth and development of crops, but also affecting crop yield. By observing the phenological stages, agricultural production losses can be reduced and corresponding systems and plans can be formulated according to their changes, having guiding significance for agricultural production activities. Traditionally, crop phenological stages are determined mainly by manual analysis of remote sensing data collected by UAVs, which is time-consuming, labor-intensive, and may lead to data loss. To cope with this problem, this paper proposes a deep-learning-based method for rice phenological stage recognition. Firstly, we use a weather station equipped with RGB cameras to collect image data of the whole life cycle of rice and build a dataset. Secondly, we use object detection technology to clean the dataset and divide it into six subsets. Finally, we use ResNet-50 as the backbone network to extract spatial feature information from image data and achieve accurate recognition of six rice phenological stages, including seedling, tillering, booting jointing, heading flowering, grain filling, and maturity. Compared with the existing solutions, our method guarantees long-term, continuous, and accurate phenology monitoring. The experimental results show that our method can achieve an accuracy of around 87.33%, providing a new research direction for crop phenological stage recognition. |
format |
Article/Letter to editor |
topic_facet |
ResNet Yolov5 deep learning phenology weather stations |
author |
Qin, Jiale Hu, Tianci Yuan, Jianghao Liu, Qingzhi Wang, Wensheng Liu, Jie Guo, Leifeng Song, Guozhu |
author_facet |
Qin, Jiale Hu, Tianci Yuan, Jianghao Liu, Qingzhi Wang, Wensheng Liu, Jie Guo, Leifeng Song, Guozhu |
author_sort |
Qin, Jiale |
title |
Deep-Learning-Based Rice Phenological Stage Recognition |
title_short |
Deep-Learning-Based Rice Phenological Stage Recognition |
title_full |
Deep-Learning-Based Rice Phenological Stage Recognition |
title_fullStr |
Deep-Learning-Based Rice Phenological Stage Recognition |
title_full_unstemmed |
Deep-Learning-Based Rice Phenological Stage Recognition |
title_sort |
deep-learning-based rice phenological stage recognition |
url |
https://research.wur.nl/en/publications/deep-learning-based-rice-phenological-stage-recognition |
work_keys_str_mv |
AT qinjiale deeplearningbasedricephenologicalstagerecognition AT hutianci deeplearningbasedricephenologicalstagerecognition AT yuanjianghao deeplearningbasedricephenologicalstagerecognition AT liuqingzhi deeplearningbasedricephenologicalstagerecognition AT wangwensheng deeplearningbasedricephenologicalstagerecognition AT liujie deeplearningbasedricephenologicalstagerecognition AT guoleifeng deeplearningbasedricephenologicalstagerecognition AT songguozhu deeplearningbasedricephenologicalstagerecognition |
_version_ |
1822264141011746816 |