Deep learning techniques for hyperspectral image analysis in agriculture: A review

被引:0
作者
Guerri, Mohamed Fadhlallah [1 ,2 ]
Distante, Cosimo [1 ,2 ]
Spagnolo, Paolo [2 ]
Bougourzi, Fares [3 ]
Taleb-Ahmed, Abdelmalik [4 ]
机构
[1] Univ Salento, Dept Innovat Engn, I-73100 Lecce, Italy
[2] Natl Res Council Italy, Inst Appl Sci & Intelligent Syst, Via Monteroni Snc, I-73100 Lecce, Italy
[3] Univ Paris Est Creteil, Lab LISSI, 122 Rue Paul Armangot, F-94400 Paris, France
[4] Univ Lille, Univ Polytech Hauts France, CNRS, UMR 8520,Inst Elect Microelect & Nanotechnol IEMN, F-59313 Valenciennes, France
来源
ISPRS OPEN JOURNAL OF PHOTOGRAMMETRY AND REMOTE SENSING | 2024年 / 12卷
关键词
Hyperspectral imaging; HSI; Deep learning; Agriculture; CNN; RNN; GAN; ANOMALY DETECTION; NITROGEN-CONTENT; CLASSIFICATION; NETWORK; PREDICTION; EXTRACTION; RGB;
D O I
10.1016/j.ophoto.2024.100062
中图分类号
P9 [自然地理学];
学科分类号
0705 ; 070501 ;
摘要
In recent years, there has been a growing emphasis on assessing and ensuring the quality of horticultural and agricultural produce. Traditional methods involving field measurements, investigations, and statistical analyses are labour-intensive, time-consuming, and costly. As a solution, Hyperspectral Imaging (HSI) has emerged as a non-destructive and environmentally friendly technology. HSI has gained significant popularity as a new technology, particularly for its promising applications in remote sensing, notably in agriculture. However, classifying HSI data is highly complex because it involves several challenges, such as the excessive redundancy of spectral bands, scarcity of training samples, and the intricate non-linear relationship between spatial positions and spectral bands. Notably, Deep Learning (DL) techniques have demonstrated remarkable efficacy in various HSI analysis tasks, including those within agriculture. As interest continues to surge in leveraging HSI data for agricultural applications through DL approaches, a pressing need exists for a comprehensive survey that can effectively navigate researchers through the significant strides achieved and the future promising research directions in this domain. This literature review diligently compiles, analyzes, and discusses recent endeavours employing DL methodologies. These methodologies encompass a spectrum of approaches, ranging from Autoencoders (AE) to Convolutional Neural Networks (CNN) (in 1D, 2D, and 3D configurations), Recurrent Neural Networks (RNN), Deep Belief Networks (DBN), Generative Adversarial Networks (GAN), Transfer Learning (TL), Semi-Supervised Learning (SSL), Few-Shot Learning (FSL) and Active Learning (AL). These approaches are tailored to address the unique challenges posed by agricultural HSI analysis. This review evaluates and discusses the performance exhibited by these diverse approaches. To this end, the efficiency of these approaches has been rigorously analyzed and discussed based on the results of the state-of-the-art papers on widely recognized land cover datasets. Github repository.
引用
收藏
页数:19
相关论文
共 175 条
[1]   Quantitative Remote Sensing at Ultra-High Resolution with UAV Spectroscopy: A Review of Sensor Technology, Measurement Procedures, and Data Correction Workflows [J].
Aasen, Helge ;
Honkavaara, Eija ;
Lucieer, Arko ;
Zarco-Tejada, Pablo J. .
REMOTE SENSING, 2018, 10 (07)
[2]  
Abadi M., 2015, TensorFlow: Large-scale machine learning on heterogeneous systems
[3]   Building Footprint Extraction from High Resolution Aerial Images Using Generative Adversarial Network (GAN) Architecture [J].
Abdollahi, Abolfazl ;
Pradhan, Biswajeet ;
Gite, Shilpa ;
Alamri, Abdullah .
IEEE ACCESS, 2020, 8 :209517-209527
[4]   Detection of target spot and bacterial spot diseases in tomato using UAV-based and benchtop-based hyperspectral imaging techniques [J].
Abdulridha, Jaafar ;
Ampatzidis, Yiannis ;
Kakarla, Sri Charan ;
Roberts, Pamela .
PRECISION AGRICULTURE, 2020, 21 (05) :955-978
[5]  
ACKLEY DH, 1985, COGNITIVE SCI, V9, P147
[6]   A deep residual convolutional neural network for mineral classification [J].
Agrawal, Neelam ;
Govil, Himanshu .
ADVANCES IN SPACE RESEARCH, 2023, 71 (08) :3186-3202
[7]   Application of hyperspectral imaging technology in the rapid identification of microplastics in farmland soil [J].
Ai, Wenjie ;
Liu, Shulin ;
Liao, Hongping ;
Du, Jiaqing ;
Cai, Yulin ;
Liao, Chenlong ;
Shi, Haowen ;
Lin, Yongda ;
Junaid, Muhammad ;
Yue, Xuejun ;
Wang, Jun .
SCIENCE OF THE TOTAL ENVIRONMENT, 2022, 807
[8]   A spectral correction method for multi-scattering effects in close range hyperspectral imagery of vegetation scenes: application to nitrogen content assessment in wheat [J].
Al Makdessi, Nathalie ;
Ecarnot, Martin ;
Roumet, Pierre ;
Rabatel, Gilles .
PRECISION AGRICULTURE, 2019, 20 (02) :237-259
[9]   Prediction of Potato Crop Yield Using Precision Agriculture Techniques [J].
Al-Gaadi, Khalid A. ;
Hassaballa, Abdalhaleem A. ;
Tola, ElKamil ;
Kayad, Ahmed G. ;
Madugundu, Rangaswamy ;
Alblewi, Bander ;
Assiri, Fahad .
PLOS ONE, 2016, 11 (09)
[10]   Identifying Wrongly Predicted Samples: A Method for Active Learning [J].
Aljundi, Rahaf ;
Chumerin, Nikolay ;
Reino, Daniel Olmeda .
2022 IEEE WINTER CONFERENCE ON APPLICATIONS OF COMPUTER VISION (WACV 2022), 2022, :2071-2079