Enhancing FAIR data services in agricultural disaster: A review

L Hu, C Zhang, M Zhang, Y Shi, J Lu, Z Fang - Remote Sensing, 2023 - mdpi.com
The agriculture sector is highly vulnerable to natural disasters and climate change, leading
to severe impacts on food security, economic stability, and rural livelihoods. The use of …

Crop mapping using supervised machine learning and deep learning: a systematic literature review

M Alami Machichi, E mansouri, Y Imani… - … Journal of Remote …, 2023 - Taylor & Francis
The ever-increasing global population presents a looming threat to food production. To meet
growing food demands while minimizing negative impacts on water and soil, agricultural …

[HTML][HTML] Artificial intelligence applications in the agrifood sectors

I Kutyauripo, M Rushambwa, L Chiwazi - Journal of Agriculture and Food …, 2023 - Elsevier
Food security is one of the priorities of every country in the World. However, different factors
are making it difficult to meet global targets on food security. Some unprecedented shocks …

[HTML][HTML] In-season and dynamic crop mapping using 3D convolution neural networks and sentinel-2 time series

I Gallo, L Ranghetti, N Landro, R La Grassa… - ISPRS Journal of …, 2023 - Elsevier
An accurate, frequently updated, automatic and reproducible mapping procedure to identify
seasonal cultivated crops is a prerequisite for many crop monitoring activities. Deep learning …

MP-Net: An efficient and precise multi-layer pyramid crop classification network for remote sensing images

C Xu, M Gao, J Yan, Y Jin, G Yang, W Wu - Computers and Electronics in …, 2023 - Elsevier
Accurate crop classification map is of great significance in various fields such as the survey
of agricultural resource, the analysis of existing circumstance on land application, the yield …

Rapid rice yield estimation using integrated remote sensing and meteorological data and machine learning

MD Islam, L Di, FM Qamer, S Shrestha, L Guo, L Lin… - Remote Sensing, 2023 - mdpi.com
This study developed a rapid rice yield estimation workflow and customized yield prediction
model by integrating remote sensing and meteorological data with machine learning (ML) …

[HTML][HTML] Training sample selection for robust multi-year within-season crop classification using machine learning

Z Gao, D Guo, D Ryu, AW Western - Computers and Electronics in …, 2023 - Elsevier
Within-season crop classification using multispectral imagery is an effective way to generate
timely crop maps that can support water and crop management; however, developing such …

Cyberinformatics tool for in-season crop-specific land cover monitoring: Design, implementation, and applications of iCrop

C Zhang, L Di, L Lin, H Zhao, H Li, A Yang… - … and Electronics in …, 2023 - Elsevier
Cyberinformatics tools have supported decision makings in agriculture through cutting-edge
big data, artificial intelligence/machine learning (AI/ML), and high-performance computing …

Comparisons between temporal statistical metrics, time series stacks and phenological features derived from NASA Harmonized Landsat Sentinel-2 data for crop type …

X Liu, S Xie, J Yang, L Sun, L Liu, Q Zhang… - … and Electronics in …, 2023 - Elsevier
Spectrotemporal features that capture changes in reflectance over time are useful for
characterizing the land cover of highly dynamic crops. Currently, temporal statistical metrics …

Using the Google Earth Engine cloud-computing platform to assess the long-term spatial temporal dynamics of land use and land cover within the Letaba watershed …

MJ Mashala, T Dube, KK Ayisi… - Geocarto …, 2023 - Taylor & Francis
Population growth and environmental shifts have elevated the pressure on land use and
cover (LULC), necessitating vital management and adaptive strategies to preserve the …