Matches in SemOpenAlex for { <https://semopenalex.org/work/W4310154428> ?p ?o ?g. }
- W4310154428 endingPage "6031" @default.
- W4310154428 startingPage "6031" @default.
- W4310154428 abstract "Plant diseases cause considerable economic loss in the global agricultural industry. A current challenge in the agricultural industry is the development of reliable methods for detecting plant diseases and plant stress. Existing disease detection methods mainly involve manually and visually assessing crops for visible disease indicators. The rapid development of unmanned aerial vehicles (UAVs) and hyperspectral imaging technology has created a vast potential for plant disease detection. UAV-borne hyperspectral remote sensing (HRS) systems with high spectral, spatial, and temporal resolutions have replaced conventional manual inspection methods because they allow for more accurate cost-effective crop analyses and vegetation characteristics. This paper aims to provide an overview of the literature on HRS for disease detection based on deep learning algorithms. Prior articles were collected using the keywords “hyperspectral”, “deep learning”, “UAV”, and “plant disease”. This paper presents basic knowledge of hyperspectral imaging, using UAVs for aerial surveys, and deep learning-based classifiers. Generalizations about workflow and methods were derived from existing studies to explore the feasibility of conducting such research. Results from existing studies demonstrate that deep learning models are more accurate than traditional machine learning algorithms. Finally, further challenges and limitations regarding this topic are addressed." @default.
- W4310154428 created "2022-11-30" @default.
- W4310154428 creator A5009441752 @default.
- W4310154428 creator A5020557212 @default.
- W4310154428 creator A5088800206 @default.
- W4310154428 date "2022-11-28" @default.
- W4310154428 modified "2023-10-10" @default.
- W4310154428 title "Plant Disease Diagnosis Using Deep Learning Based on Aerial Hyperspectral Images: A Review" @default.
- W4310154428 cites W1984185202 @default.
- W4310154428 cites W1988386267 @default.
- W4310154428 cites W1996821078 @default.
- W4310154428 cites W2004849593 @default.
- W4310154428 cites W2017859040 @default.
- W4310154428 cites W2019400639 @default.
- W4310154428 cites W2045668366 @default.
- W4310154428 cites W2071519467 @default.
- W4310154428 cites W2077653178 @default.
- W4310154428 cites W2097117768 @default.
- W4310154428 cites W2098566984 @default.
- W4310154428 cites W2105756833 @default.
- W4310154428 cites W2134852861 @default.
- W4310154428 cites W2138621882 @default.
- W4310154428 cites W2151896708 @default.
- W4310154428 cites W2167625949 @default.
- W4310154428 cites W2183677072 @default.
- W4310154428 cites W2194775991 @default.
- W4310154428 cites W2500751094 @default.
- W4310154428 cites W2572303978 @default.
- W4310154428 cites W2598277591 @default.
- W4310154428 cites W2622954938 @default.
- W4310154428 cites W2730356952 @default.
- W4310154428 cites W2733654097 @default.
- W4310154428 cites W2749375929 @default.
- W4310154428 cites W2761176843 @default.
- W4310154428 cites W2766020211 @default.
- W4310154428 cites W2766610839 @default.
- W4310154428 cites W2774245783 @default.
- W4310154428 cites W2780615681 @default.
- W4310154428 cites W2793272303 @default.
- W4310154428 cites W2795354529 @default.
- W4310154428 cites W2801537173 @default.
- W4310154428 cites W2809254203 @default.
- W4310154428 cites W2887889149 @default.
- W4310154428 cites W2889069467 @default.
- W4310154428 cites W2894058049 @default.
- W4310154428 cites W2901528449 @default.
- W4310154428 cites W2904698365 @default.
- W4310154428 cites W2912130932 @default.
- W4310154428 cites W2922178938 @default.
- W4310154428 cites W2941403717 @default.
- W4310154428 cites W2951898785 @default.
- W4310154428 cites W2954187519 @default.
- W4310154428 cites W2969896545 @default.
- W4310154428 cites W2969933026 @default.
- W4310154428 cites W2977183516 @default.
- W4310154428 cites W2981529822 @default.
- W4310154428 cites W2981993053 @default.
- W4310154428 cites W2988842639 @default.
- W4310154428 cites W2991616716 @default.
- W4310154428 cites W2995051770 @default.
- W4310154428 cites W2995187556 @default.
- W4310154428 cites W2996367417 @default.
- W4310154428 cites W3007935259 @default.
- W4310154428 cites W3017365251 @default.
- W4310154428 cites W3034475401 @default.
- W4310154428 cites W3035889653 @default.
- W4310154428 cites W3041151671 @default.
- W4310154428 cites W3042926432 @default.
- W4310154428 cites W3043995050 @default.
- W4310154428 cites W3080400661 @default.
- W4310154428 cites W3081084433 @default.
- W4310154428 cites W3092153688 @default.
- W4310154428 cites W3092616522 @default.
- W4310154428 cites W3113649568 @default.
- W4310154428 cites W3119001219 @default.
- W4310154428 cites W3119228887 @default.
- W4310154428 cites W3120426666 @default.
- W4310154428 cites W3121427490 @default.
- W4310154428 cites W3126306463 @default.
- W4310154428 cites W3130071898 @default.
- W4310154428 cites W3132136179 @default.
- W4310154428 cites W3138725786 @default.
- W4310154428 cites W3140854437 @default.
- W4310154428 cites W3153962664 @default.
- W4310154428 cites W3154590463 @default.
- W4310154428 cites W3155966371 @default.
- W4310154428 cites W3159606890 @default.
- W4310154428 cites W3162709871 @default.
- W4310154428 cites W3165739532 @default.
- W4310154428 cites W3178598619 @default.
- W4310154428 cites W3181349934 @default.
- W4310154428 cites W3184401950 @default.
- W4310154428 cites W3185377372 @default.
- W4310154428 cites W3194730353 @default.
- W4310154428 cites W3200668469 @default.
- W4310154428 cites W3202822501 @default.
- W4310154428 cites W3203738044 @default.
- W4310154428 cites W3205379064 @default.