4.7 Article

Remote-sensing estimation of potato above-ground biomass based on spectral and spatial features extracted from high-definition digital camera images

相关参考文献

注意:仅列出部分参考文献,下载原文获取全部文献信息。
Article Environmental Sciences

Comparison and transferability of thermal, temporal and phenological-based in-season predictions of above-ground biomass in wheat crops from proximal crop reflectance data

Zhenhai Li et al.

Summary: Timely monitoring of above-ground biomss is important for crop growth and yield prediction. In this study, a new crop biomass algorithm was developed to estimate winter wheat biomass using phenological observations and remote sensing data. The algorithm showed good performance in different test sites and has the potential for biomass estimation at regional scales.

REMOTE SENSING OF ENVIRONMENT (2022)

Article Remote Sensing

Estimation of winter-wheat above-ground biomass using the wavelet analysis of unmanned aerial vehicle-based digital images and hyperspectral crop canopy images

Jibo Yue et al.

Summary: The study aimed to estimate winter-wheat above-ground biomass (AGB) using high-frequency information and hyperspectral variables. Results indicated that these variables increased with increasing AGB, showing promise for accurately assessing crop growth stages and biomass.

INTERNATIONAL JOURNAL OF REMOTE SENSING (2021)

Article Environmental Sciences

Crop Biomass Mapping Based on Ecosystem Modeling at Regional Scale Using High Resolution Sentinel-2 Data

Liming He et al.

Summary: The study shows that using an ecosystem model and Sentinel-2 LAI data can effectively map crop above-ground biomass, but calibration of key photosynthetic parameters and carbon allocation coefficients is necessary.

REMOTE SENSING (2021)

Article Agriculture, Multidisciplinary

Optimization of multi-source UAV RS agro-monitoring schemes designed for field-scale crop phenotyping

Wanxue Zhu et al.

Summary: This study utilized UAV data for maize phenotyping, revealing the advantages of both single-source and multi-source UAV data in different aspects. The optimal UAV combination for accurate agro-monitoring was determined to be LiDAR, RGB, and hyperspectral, highlighting the importance of UAV technologies in precision agriculture.

PRECISION AGRICULTURE (2021)

Article Biodiversity Conservation

An improved approach to estimate above-ground volume and biomass of desert shrub communities based on UAV RGB images

Peng Mao et al.

Summary: In this study, an improved approach for extracting three types of feature metrics simultaneously using UAV RGB images in a typical desert shrub area in Inner Mongolia, China was developed. The contribution of structural, textural, and spectral metrics to shrub AGV models was determined to be 86.68, 7.08, and 6.24% respectively in the proposed model. The results also showed that canopy volume played the most essential role in AGV modelling.

ECOLOGICAL INDICATORS (2021)

Article Agronomy

Remote estimation of grain yield based on UAV data in different rice cultivars under contrasting climatic zone

Bo Duan et al.

Summary: This study developed a method to predict grain yield in different rice cultivars using UAV data and vegetation indices (VIs), showing that multitemporal VIs can accurately estimate grain yield with an error below 7.1%. Adjusting the phenological stage of VIs increased the estimation accuracy in different climatic zones.

FIELD CROPS RESEARCH (2021)

Article Environmental Sciences

Improving Biomass and Grain Yield Prediction of Wheat Genotypes on Sodic Soil Using Integrated High-Resolution Multispectral, Hyperspectral, 3D Point Cloud, and Machine Learning Techniques

Malini Roy Choudhury et al.

Summary: This study utilized remote sensing techniques and machine learning to estimate the biomass and grain yield of wheat genotypes grown on moderately sodic and highly sodic soils. The research found that UAV remote sensing data showed better performance in estimating biomass and yield compared to proximal sensing data, and identified specific wheat genotypes that are more tolerant to sodic soil constraints.

REMOTE SENSING (2021)

Article Environmental Sciences

Corn Biomass Estimation by Integrating Remote Sensing and Long-Term Observation Data Based on Machine Learning Techniques

Liying Geng et al.

Summary: Accurate estimation of regional crop biomass using machine learning models, particularly XGBoost and RF, was demonstrated in this study. The study provides a reference for estimating crop biomass using MOD43A4 datasets and highlights the potential of machine learning techniques for large-scale estimation of daily crop biomass.

REMOTE SENSING (2021)

Article Engineering, Electrical & Electronic

Integrated Remote Sensing and Crop Model Approach for Impact Assessment of Aerosols on Biomass Accumulation of Maize

Hongfei Xie et al.

Summary: Using remote sensing data and crop models, this study investigated the impact of aerosols on the dynamic changes and accumulation of maize biomass in China. The results showed that aerosols significantly reduced solar radiation and actual maize biomass, with varying effects at different growth stages.

IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING (2021)

Article Imaging Science & Photographic Technology

Vegetation Structure Index (VSI): Retrieving Vegetation Structural Information from Multi-Angular Satellite Remote Sensing

Ram C. Sharma

Summary: Utilization of BRDF model parameters obtained from multi-angular remote sensing can help retrieve vegetation structural information, with potential for assessing forest above-ground biomass in the New England region. The newly proposed Vegetation Structure Index (VSI) performed efficiently, explaining a significant portion of above-ground biomass variation.

JOURNAL OF IMAGING (2021)

Article Multidisciplinary Sciences

Biomass accumulation and carbon stock in different agroforestry systems prevalent in the Himalayan foothills, India

Amit Kumar et al.

Summary: The study showed that different tree species in agroforestry systems in the Himalayan region have varying biomass accumulation and carbon allocation, with Eucalyptus tereticornis exhibiting good CO2 mitigation and carbon sequestration effects, while Populus deltoids having better results in wheat crop biomass and carbon stock.

CURRENT SCIENCE (2021)

Article Agricultural Engineering

Estimation of maize yield and effects of variable-rate nitrogen application using UAV-based RGB imagery

Meina Zhang et al.

BIOSYSTEMS ENGINEERING (2020)

Article Environmental Sciences

Graph-Based Data Fusion Applied to: Change Detection and Biomass Estimation in Rice Crops

David Alejandro Jimenez-Sierra et al.

REMOTE SENSING (2020)

Article Plant Sciences

High-Throughput Switchgrass Phenotyping and Biomass Modeling by UAV

Fei Li et al.

FRONTIERS IN PLANT SCIENCE (2020)

Article Plant Sciences

Above-ground vegetation indices and yield attributes of rice crop using unmanned aerial vehicle combined with ground truth measurements

Piyanan PIPATSITEE et al.

Notulae Botanicae Horti Agrobotanici Cluj-Napoca (2020)

Article Geography, Physical

Estimate of winter-wheat above-ground biomass based on UAV ultrahigh-ground-resolution image textures and vegetation indices

Jibo Yue et al.

ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING (2019)

Article Environmental Sciences

Exploring Bamboo Forest Aboveground Biomass Estimation Using Sentinel-2 Data

Yuyun Chen et al.

REMOTE SENSING (2019)

Article Environmental Sciences

Estimating Barley Biomass with Crop Surface Models from Oblique RGB Imagery

Sebastian Brocks et al.

REMOTE SENSING (2018)

Article Geography, Physical

Unmanned Aerial System (UAS)-based phenotyping of soybean using multi-sensor data fusion and extreme learning machine

Maitiniyazi Maimaitijiang et al.

ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING (2017)

Article Environmental Sciences

Spectral considerations for modeling yield of canola

John J. Sulik et al.

REMOTE SENSING OF ENVIRONMENT (2016)

Article Agronomy

Precision phenotyping of imidazolinone-induced chlorosis in sunflower

Ana Claudia Ochogavia et al.

BREEDING SCIENCE (2014)

Article Environmental Sciences

Development of spectral indices for detecting and identifying plant diseases

A. -K. Mahlein et al.

REMOTE SENSING OF ENVIRONMENT (2013)

Article Environmental Sciences

Comparison of different vegetation indices for the remote assessment of green leaf area index of crops

Andres Vina et al.

REMOTE SENSING OF ENVIRONMENT (2011)

Article Agriculture, Multidisciplinary

Verification of color vegetation indices for automated crop imaging applications

George E. Meyer et al.

COMPUTERS AND ELECTRONICS IN AGRICULTURE (2008)