Recent Methods for Evaluating Crop Water Stress Using AI Techniques: A Review
Citations

WEB OF SCIENCE

29
Citations

SCOPUS

31

초록

This study systematically reviews the integration of artificial intelligence (AI) and remote sensing technologies to address the issue of crop water stress caused by rising global temperatures and climate change; in particular, it evaluates the effectiveness of various non-destructive remote sensing platforms (RGB, thermal imaging, and hyperspectral imaging) and AI techniques (machine learning, deep learning, ensemble methods, GAN, and XAI) in monitoring and predicting crop water stress. The analysis focuses on variability in precipitation due to climate change and explores how these technologies can be strategically combined under data-limited conditions to enhance agricultural productivity. Furthermore, this study is expected to contribute to improving sustainable agricultural practices and mitigating the negative impacts of climate change on crop yield and quality.

키워드

cropswater stressmachine learningdeep learningartificial intelligence (AI)EXPLAINABLE ARTIFICIAL-INTELLIGENCECANOPY TEMPERATURERANDOM FORESTAIRBORNE IMAGERYIRRIGATIONMACHINEYIELDCLASSIFICATIONPERFORMANCEQUALITY
제목
Recent Methods for Evaluating Crop Water Stress Using AI Techniques: A Review
저자
Cho, Soo BeenSoleh, Hidayat MohamadChoi, Ji WonHwang, Woon-HaLee, HoonsooCho, Young-SonCho, Byoung-KwanKim, Moon S.Baek, InsuckKim, Geonwoo
DOI
10.3390/s24196313
발행일
2024-10
유형
Review
저널명
Sensors
24
19