An Overview of Integrating Deep Learning Methods With Close-Range Hyperspectral Imaging for Agriculture

被引:0
作者
Faisal, Shah [1 ]
Po-Leen Ooi, Melanie [1 ,2 ]
Chow Kuang, Ye [1 ]
Abeysekera, Sanush K. [1 ]
Fletcher, Dale [3 ]
机构
[1] Univ Waikato, Sch Engn, Hamilton 3216, New Zealand
[2] Sunway Univ, Sch Engn & Technol, Subang Jaya 47500, Selangor, Malaysia
[3] Univ Waikato, Sch Comp & Math Sci, Hamilton 3216, New Zealand
关键词
Hyperspectral imaging; Deep learning; Reviews; Stress; Maximum likelihood estimation; Agriculture; Plants (biology); Diseases; Machine learning; Spectroscopy; deep learning; machine learning; precision agriculture; crops; CONVOLUTIONAL NEURAL-NETWORKS; DATA AUGMENTATION; CLASSIFICATION; IMAGES; ALGORITHM; MODELS;
D O I
10.1109/ACCESS.2025.3587226
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Hyperspectral imaging combines spectroscopy with imaging, thus capturing both spectral and spatial features. This makes it a useful technology in several application areas such as remote sensing and smart agriculture. Extracting spatial-spectral information of objects-of-interest from hyperspectral images requires sophisticated computational methods. The last decade saw the rapid advancement of deep learning methods due to their superior automatic feature extraction capability from images, and hence it is no surprise that these methods have been adapted and used for hyperspectral image analysis. Yet, while deep learning methods have achieved some success for hyperspectral remote sensing, it has been less explored in close range (or proximal) hyperspectral imaging, which is likely because at this range, it is more akin to spectroscopy with spatial information, rather than the case of remote sensing, which is more akin to imaging with higher spectral resolution. Close-range HSI allows for fine-scale analysis of plant health, nutrient levels, disease detection, and crop quality, which is very important in precision agriculture. In light of the new computational methods in deep learning, this review article provides an in-depth analysis and comparisons of such methods when applied to proximal hyperspectral imagery, with a particular emphasis on unsolved challenges (e.g., limited availability of annotated datasets, the need for robust models under real-world conditions, and the integration of spatial and spectral information) and potential future research directions for agricultural applications. The review emphasizes the importance of further explorations and has provided recommended directions for future research that could elevate close-range hyperspectral imaging technology from research to industry use for smart agriculture applications.
引用
收藏
页码:120257 / 120276
页数:20
相关论文
共 133 条
[1]   Characterizing and classifying urban tree species using bi-monthly terrestrial hyperspectral images in Hong Kong [J].
Abbas, Sawaid ;
Peng, Qian ;
Wong, Man Sing ;
Li, Zhilin ;
Wang, Jicheng ;
Ng, Kathy Tze Kwun ;
Kwok, Coco Yin Tung ;
Hui, Karena Ka Wai .
ISPRS JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING, 2021, 177 :204-216
[2]  
ACKLEY DH, 1985, COGNITIVE SCI, V9, P147
[3]   Hyperspectral Imaging: A Review on UAV-Based Sensors, Data Processing and Applications for Agriculture and Forestry [J].
Adao, Telmo ;
Hruska, Jonas ;
Padua, Luis ;
Bessa, Jose ;
Peres, Emanuel ;
Morais, Raul ;
Sousa, Joaquim Joao .
REMOTE SENSING, 2017, 9 (11)
[4]  
Ahmad M, 2024, Arxiv, DOI [arXiv:2408.01372, DOI 10.48550/ARXIV.2408.01372]
[5]   Hyperspectral Image Classification-Traditional to Deep Models: A Survey for Future Prospects [J].
Ahmad, Muhammad ;
Shabbir, Sidrah ;
Roy, Swalpa Kumar ;
Hong, Danfeng ;
Wu, Xin ;
Yao, Jing ;
Khan, Adil Mehmood ;
Mazzara, Manuel ;
Distefano, Salvatore ;
Chanussot, Jocelyn .
IEEE JOURNAL OF SELECTED TOPICS IN APPLIED EARTH OBSERVATIONS AND REMOTE SENSING, 2022, 15 :968-999
[6]   Big Data and Machine Learning With Hyperspectral Information in Agriculture [J].
Ang, Kenneth Li-Minn ;
Seng, Jasmine Kah Phooi .
IEEE ACCESS, 2021, 9 :36699-36718
[7]   Detection of nutrition deficiencies in plants using proximal images and machine learning: A review [J].
Arnal Barbedo, Jayme Garcia .
COMPUTERS AND ELECTRONICS IN AGRICULTURE, 2019, 162 :482-492
[8]   Deoxynivalenol screening in wheat kernels using hyperspectral imaging [J].
Arnal Barbedo, Jayme Garcia ;
Tibola, Casiane Salete ;
Pontes Lima, Maria Irnaculada .
BIOSYSTEMS ENGINEERING, 2017, 155 :24-32
[9]   Hyperspectral Image Classification Based on Deep Attention Graph Convolutional Network [J].
Bai, Jing ;
Ding, Bixiu ;
Xiao, Zhu ;
Jiao, Licheng ;
Chen, Hongyang ;
Regan, Amelia C. .
IEEE TRANSACTIONS ON GEOSCIENCE AND REMOTE SENSING, 2022, 60
[10]   Evaluation of rice bacterial blight severity from lab to field with hyperspectral imaging technique [J].
Bai, Xiulin ;
Zhou, Yujie ;
Feng, Xuping ;
Tao, Mingzhu ;
Zhang, Jinnuo ;
Deng, Shuiguang ;
Lou, Binggan ;
Yang, Guofeng ;
Wu, Qingguan ;
Yu, Li ;
Yang, Yong ;
He, Yong .
FRONTIERS IN PLANT SCIENCE, 2022, 13