Flooded rice variables from high-resolution multispectral images and machine learning algorithms

被引:3
|
作者
Eugenio, Fernando Coelho [1 ]
Grohs, Mara [2 ]
Schuh, Mateus Sabadi [3 ]
Venancio, Luan Peroni [4 ]
Schons, Cristine [3 ]
Badin, Tiago Luis [3 ]
Mallmann, Caroline Lorenci [5 ]
Fernandes, Pablo [3 ]
da Silva, Sally Deborah Pereira [3 ,6 ]
Fantinel, Roberta Aparecida [3 ]
机构
[1] Fed Univ Jequitinhonha & Mucuri Valleys UFVJM, Rua Gloria 187, BR-39100000 Diamantina, MG, Brazil
[2] Rice Inst Rio Grandense IRGA, BR-96506750 Cachoeira Do Sul, RS, Brazil
[3] Univ Fed Santa Maria, Forest Engn Postgrad Program, Santa Maria, RS, Brazil
[4] Univ Fed Vicosa, Dept Agr Engn, Vicosa, MG, Brazil
[5] Univ Fed Santa Maria, Geog & Geosci Dept, BR-7105900 Santa Maria, RS, Brazil
[6] Univ Fed Santa Maria, Cidade Univ,Predio 44,Sala 5255, Santa Maria, RS, Brazil
关键词
Precision agriculture; UAV; Artificial intelligence; Predictive modeling; Phenology; LEAF-AREA INDEX; HYPERSPECTRAL VEGETATION INDEXES; UNMANNED AERIAL VEHICLE; NITROGEN CONCENTRATION; PRECISION AGRICULTURE; CHLOROPHYLL CONTENT; YIELD ESTIMATION; GRAIN-YIELD; PADDY RICE; GREEN LAI;
D O I
10.1016/j.rsase.2023.100998
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Remote spectral detection via orbital, aerial or terrestrial platforms is considered a valuable tool for non-destructive real-time estimation of the Leaf Area Index (LAI), the status of plant N, and grain yield. In this context, this study aims to build predictive models from very high-resolution multispectral images as input variables with Machine Learning (ML) algorithms to generate indirect estimates of LAI, Narea, and grain yield for flooded rice culture. Multispectral images were acquired through a Sequoia & REG; camera aboard the Phantom 4 & REG; Pro platform, during five phenological crop stages. In addition to the spectral bands, nine vegetation indices were taken as predictors of the response variables derived from the site survey. The Spearman's test demonstrated a more significant correlation at the end of the vegetative stage (V7) and the beginning of the reproductive stage (R1) to predict the studied variables. Furthermore, the Support Vector Machine (SVM) models showed high fit and good generalization capability in flooded rice cultivation, reinforcing the excellent combination capacity between remote sensing via Remotely Piloted Aircraft Systems (RPAS) and machine learning in precision agriculture applications.
引用
收藏
页数:16
相关论文
共 50 条
  • [21] Multispectral Remote Sensing for Yield Estimation Using High-Resolution Imagery from an Unmanned Aerial Vehicle
    Aboutalebi, Mahyar
    Torres-Rua, Alfonso F.
    Allen, Niel
    AUTONOMOUS AIR AND GROUND SENSING SYSTEMS FOR AGRICULTURAL OPTIMIZATION AND PHENOTYPING III, 2018, 10664
  • [22] Estimation of evapotranspiration from UAV high-resolution images for irrigation systems in rice fields on the northern coast of Peru
    Ramos-Fernandez, Lia
    Quispe-Tito, David
    Altamirano-Gutierrez, Lisette
    Cruz-Grimaldo, Camila
    Quille-Mamani, Javier Alvaro
    Carbonell-Rivera, Juan Pedro
    Torralba, Jesus
    Ruiz, Luis Angel
    SCIENTIA AGROPECUARIA, 2024, 15 (01) : 7 - 21
  • [23] High-Resolution Mangrove Forests Classification with Machine Learning Using Worldview and UAV Hyperspectral Data
    Jiang, Yufeng
    Zhang, Li
    Yan, Min
    Qi, Jianguo
    Fu, Tianmeng
    Fan, Shunxiang
    Chen, Bowei
    REMOTE SENSING, 2021, 13 (08)
  • [24] Detection of fallen logs from high-resolution UAV Images
    Panagiotidis, D.
    Abdollahnejad, Azadeh
    Surovy, Peter
    Kuzelka, Karel
    NEW ZEALAND JOURNAL OF FORESTRY SCIENCE, 2019, 49 (01)
  • [25] Comparing Supervised and Semi-supervised Machine Learning Methods for Mapping Aquatic Weeds, as Biomass Resource from High-Resolution UAV Images
    Clement Nyamekye
    Linda Boamah Appiah
    Richard Arthur
    Gabriel Osei
    Samuel Anim Ofosu
    Samuel Kwofie
    Benjamin Ghansah
    Dieter Bryniok
    Remote Sensing in Earth Systems Sciences, 2024, 7 (3) : 206 - 217
  • [26] Implementing Deep Learning algorithms for urban tree detection and geolocation with high-resolution aerial, satellite, and ground-level images
    Velasquez-Camacho, Luisa
    Etxegarai, Maddi
    de-Miguel, Sergio
    COMPUTERS ENVIRONMENT AND URBAN SYSTEMS, 2023, 105
  • [27] A Comparison of Hybrid Machine Learning Algorithms for the Retrieval of Wheat Biophysical Variables from Sentinel-2
    Upreti, Deepak
    Huang, Wenjiang
    Kong, Weiping
    Pascucci, Simone
    Pignatti, Stefano
    Zhou, Xianfeng
    Ye, Huichun
    Casa, Raffaele
    REMOTE SENSING, 2019, 11 (05)
  • [28] Disease Incidence and Severity of Cercospora Leaf Spot in Sugar Beet Assessed by Multispectral Unmanned Aerial Images and Machine Learning
    Barreto, Abel
    Yamati, Facundo Ramon Ispizua
    Varrelmann, Mark
    Paulus, Stefan
    Mahlein, Anne-Katrin
    PLANT DISEASE, 2023, : 188 - 200
  • [29] Fusion of UAV-Acquired Visible Images and Multispectral Data by Applying Machine-Learning Methods in Crop Classification
    Zheng, Zuojun
    Yuan, Jianghao
    Yao, Wei
    Kwan, Paul
    Yao, Hongxun
    Liu, Qingzhi
    Guo, Leifeng
    AGRONOMY-BASEL, 2024, 14 (11):
  • [30] Machine learning powered high-resolution co-seismic landslide detection
    Wang, Haojie
    Zhang, Limin
    Wang, Lin
    Fan, Ruilin
    Zhou, Shengyang
    Qiang, Yejia
    Peng, Ming
    GONDWANA RESEARCH, 2023, 123 : 217 - 237