Remote Sensing for Agriculture in the Era of Industry 5.0—A Survey

Agriculture can be regarded as the backbone of human civilization. As technology evolved, the synergy between agriculture and remote sensing has brought about a paradigm shift, thereby entirely revolutionizing the traditional agricultural practices. Nevertheless, the adoption of remote sensing technologies in agriculture faces various challenges in terms of limited spatial and temporal coverage, high cloud cover, low data quality, etc. Industry 5.0 (I5.0) marks a new era in the industrial revolution, where humans and machines collaborate closely, leveraging their distinct capabilities, thereby enhancing the decision-making capabilities, sustainability, and resilience. This article provides a comprehensive survey of remote sensing technologies and related aspects in dealing with the various agricultural practices in the I5.0 era. We also elaborately discuss the various applications pertaining to I5.0-enabled remote sensing for agriculture. Finally, we discuss several challenges and issues related to the integration of I5.0 technologies in agricultural remote sensing. This comprehensive survey on remote sensing for agriculture in the I5.0 era offers valuable insights into the current state, challenges, and potential advancements in the integration of remote sensing technologies and I5.0 principles in agriculture, thus paving the way for future research, development, and implementation strategies in this domain.

[1]  Néstor Lucas Martínez,et al.  Spatio-temporal semantic data management systems for IoT in agriculture 5.0: Challenges and future directions , 2024, Internet Things.

[2]  Anushi,et al.  Advancements in Drone Technology for Fruit Crop Management: A Comprehensive Review , 2023, International Journal of Environment and Climate Change.

[3]  Linze Li,et al.  AI and machine learning for soil analysis: an assessment of sustainable agricultural practices , 2023, Bioresources and Bioprocessing.

[4]  S. Nyamuryekung'e Transforming Ranching: Precision Livestock Management in the Internet of Things Era , 2023, Rangelands.

[5]  Udit Debangshi,et al.  Application of Smart Farming Technologies in Sustainable Agriculture Development: A Comprehensive Review on Present Status and Future Advancements , 2023, International Journal of Environment and Climate Change.

[6]  Xiaoxiang Zhu,et al.  Cross-City Matters: A Multimodal Remote Sensing Benchmark Dataset for Cross-City Semantic Segmentation using High-Resolution Domain Adaptation Networks , 2023, Remote Sensing of Environment.

[7]  W. Neumann,et al.  Human-centric production and logistics system design and management: transitioning from Industry 4.0 to Industry 5.0 , 2023, Int. J. Prod. Res..

[8]  Xijian Fan,et al.  A Multiscale Point-Supervised Network for Counting Maize Tassels in the Wild , 2023, Plant phenomics.

[9]  S. Deshpande,et al.  Hyperspectral Remote Sensing in Urban Environments , 2023 .

[10]  Caixia Song,et al.  Blockchain-Based Traceability for Agricultural Products: A Systematic Literature Review , 2023, Agriculture.

[11]  Jianxi Huang,et al.  Improved Gaussian mixture model to map the flooded crops of VV and VH polarization data , 2023, Remote Sensing of Environment.

[12]  Wenyang Yu,et al.  A Blockchain Solution for Remote Sensing Data Management Model , 2023, Applied Sciences.

[13]  Y. Chung,et al.  The Path to Smart Farming: Innovations and Opportunities in Precision Agriculture , 2023, Agriculture.

[14]  Ashutosh Kumar Singh,et al.  Ensemble surface soil moisture estimates at farm-scale combining satellite-based optical-thermal-microwave remote sensing observations , 2023, Agricultural and Forest Meteorology.

[15]  Vasileios Moysiadis,et al.  Human–Robot Interaction in Agriculture: A Systematic Review , 2023, Sensors.

[16]  Girma Gonfa,et al.  Fresh water resource, scarcity, water salinity challenges and possible remedies: A review , 2023, Heliyon.

[17]  Xiangyu Bai,et al.  A review of irrigation monitoring based on Internet of Things, remote sensing and artificial intelligence , 2023, CNCIT.

[18]  Lixue Zhu,et al.  A Review on Unmanned Aerial Vehicle Remote Sensing: Platforms, Sensors, Data Processing Methods, and Applications , 2023, Drones.

[19]  E. Cardoso,et al.  Revisiting the past to understand the present and future of soil health in Brazil , 2023, Frontiers in Soil Science.

[20]  D. Tom-Dery,et al.  Effects of commercial farming on livelihoods and woody species in the Mion district, Ghana , 2023, Journal of Agriculture and Food Research.

[21]  Bader Alojaiman Technological Modernizations in the Industry 5.0 Era: A Descriptive Analysis and Future Research Directions , 2023, Processes.

[22]  J. P. Sánchez-Solís,et al.  LiDAR applications in precision agriculture for cultivating crops: A review of recent advances , 2023, Comput. Electron. Agric..

[23]  Mohamed Abdelkader,et al.  AERO: AI-Enabled Remote Sensing Observation with Onboard Edge Computing in UAVs , 2023, Remote. Sens..

[24]  J. Verrelst,et al.  A Spatial and Temporal Correlation between Remotely Sensing Evapotranspiration with Land Use and Land Cover , 2023, Water.

[25]  M. Warraich,et al.  Does industry 5.0 model optimize sustainable performance of Agri‐enterprises? Real‐time investigation from the realm of stakeholder theory and domain , 2023, Sustainable Development.

[26]  Huanfeng Shen,et al.  Bishift Networks for Thick Cloud Removal with Multitemporal Remote Sensing Images , 2023, Int. J. Intell. Syst..

[27]  Peixian Zhuang,et al.  Remotely Sensed Crop Disease Monitoring by Machine Learning Algorithms: A Review , 2023, Unmanned Syst..

[28]  Pavel Castka,et al.  The impact of remote sensing on monitoring and reporting - The case of conformance systems , 2023, Journal of Cleaner Production.

[29]  A. Gola,et al.  Human–Machine Relationship—Perspective and Future Roadmap for Industry 5.0 Solutions , 2023, Machines.

[30]  T. Lawson,et al.  Development of an accurate low cost NDVI imaging system for assessing plant health , 2023, Plant Methods.

[31]  Qazi Mudassar Ilyas,et al.  Automated Estimation of Crop Yield Using Artificial Intelligence and Remote Sensing Technologies , 2023, Bioengineering.

[32]  Jinya Su,et al.  AI meets UAVs: A survey on AI empowered UAV perception systems for precision agriculture , 2023, Neurocomputing.

[33]  P. Atkinson,et al.  AI Security for Geoscience and Remote Sensing: Challenges and future trends , 2022, IEEE Geoscience and Remote Sensing Magazine.

[34]  Bingfang Wu,et al.  Challenges and opportunities in remote sensing-based crop monitoring: a review , 2022, National science review.

[35]  M. Morales,et al.  Actions and approaches for enabling Industry 5.0‐driven sustainable industrial transformation: A strategy roadmap , 2022, Corporate Social Responsibility and Environmental Management.

[36]  E. Schena,et al.  Current understanding, challenges and perspective on portable systems applied to plant monitoring and precision agriculture. , 2022, Biosensors & bioelectronics.

[37]  Guoqing Zhou,et al.  Development of a Lightweight Single-Band Bathymetric LiDAR , 2022, Remote. Sens..

[38]  M. Alsharif,et al.  Realization of Sustainable Development Goals with Disruptive Technologies by Integrating Industry 5.0, Society 5.0, Smart Cities and Villages , 2022, Sustainability.

[39]  Goran M. Stojanović,et al.  Toward Better Food Security Using Concepts from Industry 5.0 , 2022, Sensors.

[40]  X. Guan,et al.  Combing remote sensing information entropy and machine learning for ecological environment assessment of Hefei-Nanjing-Hangzhou region, China. , 2022, Journal of environmental management.

[41]  Praveen Kumar Reddy Maddikunta,et al.  A Study of the Impacts of Air Pollution on the Agricultural Community and Yield Crops (Indian Context) , 2022, Sustainability.

[42]  R. Suman,et al.  Enhancing smart farming through the applications of Agriculture 4.0 technologies , 2022, Int. J. Intell. Networks.

[43]  D. Mourtzis,et al.  Industry 5.0: Prospect and retrospect , 2022, Journal of Manufacturing Systems.

[44]  S. Ghayyur,et al.  Blockchain-Enabled Decentralized Secure Big Data of Remote Sensing , 2022, Electronics.

[45]  A. Adel Future of industry 5.0 in society: human-centric solutions, challenges and prospective research areas , 2022, Journal of Cloud Computing.

[46]  G. Vivone Multispectral and hyperspectral image fusion in remote sensing: A survey , 2022, Inf. Fusion.

[47]  B. Bugbee,et al.  Principles of Nutrient and Water Management for Indoor Agriculture , 2022, Sustainability.

[48]  M. Nilashi,et al.  Identifying industry 5.0 contributions to sustainable development: A strategy roadmap for delivering sustainability values , 2022, Sustainable Production and Consumption.

[49]  Jinshan Cao,et al.  Expandable On-Board Real-Time Edge Computing Architecture for Luojia3 Intelligent Remote Sensing Satellite , 2022, Remote. Sens..

[50]  B. Kamsu-Foguem,et al.  Deep learning for precision agriculture: A bibliometric analysis , 2022, Intell. Syst. Appl..

[51]  K. Dev,et al.  Facilitating URLLC in UAV-Assisted Relay Systems With Multiple-Mobile Robots for 6G Networks: A Prospective of Agriculture 4.0 , 2022, IEEE Transactions on Industrial Informatics.

[52]  Tawseef Ayoub Shaikh,et al.  Towards leveraging the role of machine learning and artificial intelligence in precision agriculture and smart farming , 2022, Comput. Electron. Agric..

[53]  C. Dimauro,et al.  Industry 4.0 and Precision Livestock Farming (PLF): An up to Date Overview across Animal Productions , 2022, Sensors.

[54]  A. Belmonte,et al.  Potential of GPR data fusion with hyperspectral data for precision agriculture of the future , 2022, Comput. Electron. Agric..

[55]  R. Arya,et al.  UAV based long range environment monitoring system with Industry 5.0 perspectives for smart city infrastructure , 2022, Comput. Ind. Eng..

[56]  Yaoguang Wei,et al.  Advances in infrared spectroscopy and hyperspectral imaging combined with artificial intelligence for the detection of cereals quality , 2022, Critical reviews in food science and nutrition.

[57]  L. Glielmo,et al.  A Bibliometric Review of the Use of Unmanned Aerial Vehicles in Precision Agriculture and Precision Viticulture for Sensing Applications , 2022, Remote. Sens..

[58]  A. Cheshkova A review of hyperspectral image analysis techniques for plant disease detection and identif ication , 2022, Vavilovskii zhurnal genetiki i selektsii.

[59]  J. Barbedo Data Fusion in Agriculture: Resolving Ambiguities and Closing Data Gaps , 2022, Sensors.

[60]  Amit J. Lopes,et al.  State of Industry 5.0—Analysis and Identification of Current Research Trends , 2022, Applied System Innovation.

[61]  S. Zardari,et al.  Production Plant and Warehouse Automation with IoT and Industry 5.0 , 2022, Applied Sciences.

[62]  M. Gašparović,et al.  The Role of Remote Sensing Data and Methods in a Modern Approach to Fertilization in Precision Agriculture , 2022, Remote. Sens..

[63]  P. Martinez,et al.  The digitization of agricultural industry – a systematic literature review on agriculture 4.0 , 2022, Smart Agricultural Technology.

[64]  M. Vallone,et al.  Worker safety in agriculture 4.0: A new approach for mapping operator's vibration risk through Machine Learning activity recognition , 2022, Comput. Electron. Agric..

[65]  R. Sobti,et al.  Long-range real-time monitoring strategy for Precision Irrigation in urban and rural farming in society 5.0 , 2022, Comput. Ind. Eng..

[66]  Muhammet Fatih Aslan,et al.  A Comprehensive Survey of the Recent Studies with UAV for Precision Agriculture in Open Fields and Greenhouses , 2022, Applied Sciences.

[67]  V. Dolzhenko,et al.  Current State of Hyperspectral Remote Sensing for Early Plant Disease Detection: A Review , 2022, Sensors.

[68]  Q. Zaman,et al.  UAV-based remote sensing in plant stress imagine using high-resolution thermal sensor for digital agriculture practices: a meta-review , 2022, International Journal of Environmental Science and Technology.

[69]  A. Gunasekaran,et al.  A systematic literature review of the agro-food supply chain: challenges, network design, and performance measurement perspectives , 2021, Sustainable Production and Consumption.

[70]  R. Raffik,et al.  Role of UAVs in Innovating Agriculture with Future Applications: A Review , 2021, 2021 International Conference on Advancements in Electrical, Electronics, Communication, Computing and Automation (ICAECA).

[71]  Amirhossein Hassanzadeh,et al.  Comparison of UAS-Based Structure-from-Motion and LiDAR for Structural Characterization of Short Broadacre Crops , 2021, Remote. Sens..

[72]  Lihui Wang,et al.  Industry 4.0 and Industry 5.0—Inception, conception and perception , 2021, Journal of Manufacturing Systems.

[73]  Jingbin Li,et al.  Meta-learning prediction of physical and chemical properties of magnetized water and fertilizer based on LSTM , 2021, Plant Methods.

[74]  Gong Cheng,et al.  DLA-MatchNet for Few-Shot Remote Sensing Image Scene Classification , 2021, IEEE Transactions on Geoscience and Remote Sensing.

[75]  Tiago M. Fernández-Caramés,et al.  Green IoT and Edge AI as Key Technological Enablers for a Sustainable Digital Transition towards a Smart Circular Economy: An Industry 5.0 Use Case , 2021, Sensors.

[76]  Praveen Kumar Reddy Maddikunta,et al.  Industry 5.0: A survey on enabling technologies and potential applications , 2021, J. Ind. Inf. Integr..

[77]  Dusit Niyato,et al.  A survey on the role of Internet of Things for adopting and promoting Agriculture 4.0 , 2021, J. Netw. Comput. Appl..

[78]  Guna Sekhar Sajja,et al.  Towards applicability of blockchain in agriculture sector , 2021, Materials Today: Proceedings.

[79]  António Monteiro,et al.  Precision Agriculture for Crop and Livestock Farming—Brief Review , 2021, Animals : an open access journal from MDPI.

[80]  J. Lahoz‐Monfort,et al.  A Comprehensive Overview of Technologies for Species and Habitat Monitoring and Conservation , 2021, Bioscience.

[81]  B. Shrimali,et al.  AgriOnBlock: Secured data harvesting for agriculture sector using blockchain technology , 2021, ICT Express.

[82]  Mingmin Chi,et al.  SAFFNet: Self-Attention-Based Feature Fusion Network for Remote Sensing Few-Shot Scene Classification , 2021, Remote. Sens..

[83]  Hannah Kerner,et al.  Learning to predict crop type from heterogeneous sparse labels using meta-learning , 2021, 2021 IEEE/CVF Conference on Computer Vision and Pattern Recognition Workshops (CVPRW).

[84]  G. S. Dangayach,et al.  Agriculture Supply Chain Management: A Review (2010–2020) , 2021, Materials Today: Proceedings.

[85]  Guangqin Li,et al.  Using deep belief network to construct the agricultural information system based on Internet of Things , 2021, The Journal of Supercomputing.

[86]  L. Mitrou,et al.  Reconciling Remote Sensing Technologies with Personal Data and Privacy Protection in the European Union: Recent Developments in Greek Legislation and Application Perspectives in Environmental Law , 2021, Laws.

[87]  Mercedes Vélez-Nicolás,et al.  Applications of Unmanned Aerial Systems (UASs) in Hydrology: A Review , 2021, Remote. Sens..

[88]  Daniel O. Olson,et al.  Review on unmanned aerial vehicles, remote sensors, imagery processing, and their applications in agriculture , 2021 .

[89]  Yansheng Li,et al.  Image retrieval from remote sensing big data: A survey , 2021, Inf. Fusion.

[90]  Salinda Buyamin,et al.  A model predictive controller for precision irrigation using discrete lagurre networks , 2021, Comput. Electron. Agric..

[91]  I. D. Sanches,et al.  Limitations of cloud cover for optical remote sensing of agricultural areas across South America , 2020 .

[92]  Mohammad Hossein Ronaghi,et al.  A blockchain maturity model in agricultural supply chain , 2020, Information Processing in Agriculture.

[93]  Li Wang,et al.  Garlic and Winter Wheat Identification Based on Active and Passive Satellite Imagery and the Google Earth Engine in Northern China , 2020, Remote. Sens..

[94]  Praveen Kumar Reddy Maddikunta,et al.  Multiclass Model for Agriculture Development Using Multivariate Statistical Method , 2020, IEEE Access.

[95]  Hao Wang,et al.  Blockchain-Based Privacy Preservation for 5G-Enabled Drone Communications , 2020, IEEE Network.

[96]  Hui Fang,et al.  Blockchain Technology in Current Agricultural Systems: From Techniques to Applications , 2020, IEEE Access.

[97]  Neeta Singh,et al.  Design of an antipodal balanced taper-fed broadband planar antenna for future 5G and remote sensing satellite link applications , 2020 .

[98]  F. Liebisch,et al.  Site-specific nitrogen management in winter wheat supported by low-altitude remote sensing and soil data , 2020, Precision Agriculture.

[99]  Adnan M. Abu-Mahfouz,et al.  From Industry 4.0 to Agriculture 4.0: Current Status, Enabling Technologies, and Research Challenges , 2020, IEEE Transactions on Industrial Informatics.

[100]  Evgenia Adamopoulou,et al.  Blockchain in Agriculture Traceability Systems: A Review , 2020, Applied Sciences.

[101]  Giuseppe Modica,et al.  Applications of UAV Thermal Imagery in Precision Agriculture: State of the Art and Future Research Outlook , 2020, Remote. Sens..

[102]  Diego S. Intrigliolo,et al.  Vineyard yield estimation by combining remote sensing, computer vision and artificial neural network techniques , 2020, Precision Agriculture.

[103]  Yufang Jin,et al.  Advancing Agricultural Production With Machine Learning Analytics: Yield Determinants for California’s Almond Orchards , 2020, Frontiers in Plant Science.

[104]  A. Nawaz,et al.  Nanotechnology in agriculture: Current status, challenges and future opportunities. , 2020, The Science of the total environment.

[105]  Sudip Mittal,et al.  Security and Privacy in Smart Farming: Challenges and Opportunities , 2020, IEEE Access.

[106]  Francisco Rovira-Más,et al.  From Smart Farming towards Agriculture 5.0: A Review on Crop Data Management , 2020, Agronomy.

[107]  Yanbo Huang,et al.  Monitoring plant diseases and pests through remote sensing technology: A review , 2019, Comput. Electron. Agric..

[108]  Christian Reuter,et al.  Blockchain in Agriculture 4.0 - An Empirical Study on Farmers Expectations towards Distributed Services based on Distributed Ledger Technology , 2019, MuC.

[109]  Fan-Hsun Tseng,et al.  Applying Big Data for Intelligent Agriculture-Based Crop Selection Analysis , 2019, IEEE Access.

[110]  Dionysis Bochtis,et al.  Robotics and labour in agriculture. A context consideration , 2019, Biosystems Engineering.

[111]  S. Nahavandi Industry 5.0—A Human-Centric Solution , 2019, Sustainability.

[112]  Tor Arne Johansen,et al.  Real-time georeferencing of thermal images using small fixed-wing UAVs in maritime environments , 2019, ISPRS Journal of Photogrammetry and Remote Sensing.

[113]  Nuno Silva,et al.  mySense: A comprehensive data management environment to improve precision agriculture practices , 2019, Comput. Electron. Agric..

[114]  Étienne Belin,et al.  Recent Applications of Multispectral Imaging in Seed Phenotyping and Quality Monitoring—An Overview , 2019, Sensors.

[115]  A. Raechel White,et al.  Human expertise in the interpretation of remote sensing data: A cognitive task analysis of forest disturbance attribution , 2019, Int. J. Appl. Earth Obs. Geoinformation.

[116]  L. Deng,et al.  UAV-based multispectral remote sensing for precision agriculture: A comparison between different cameras , 2018, ISPRS Journal of Photogrammetry and Remote Sensing.

[117]  Roberto Cabezas-Cabezas,et al.  Blockchain in Agriculture: A Systematic Literature Review , 2018, CITI.

[118]  Senem Velipasalar,et al.  Autonomous Heat Leakage Detection from Unmanned Aerial Vehicle-Mounted Thermal Cameras , 2018, ICDSC.

[119]  Yanbo Huang,et al.  Agricultural remote sensing big data: Management and applications , 2018, Journal of Integrative Agriculture.

[120]  K. Ponnusamy,et al.  Strengthening extension research in animal husbandry: review of issues and strategies , 2018, The Indian Journal of Animal Sciences.

[121]  Giorgos Mallinis,et al.  On the Use of Unmanned Aerial Systems for Environmental Monitoring , 2018, Remote. Sens..

[122]  Raul Morais,et al.  Hyperspectral Imaging: A Review on UAV-Based Sensors, Data Processing and Applications for Agriculture and Forestry , 2017, Remote. Sens..

[123]  Kathy Steppe,et al.  Optimizing the Processing of UAV-Based Thermal Imagery , 2017, Remote. Sens..

[124]  Feng Gao,et al.  Daily Mapping of 30 m LAI and NDVI for Grape Yield Prediction in California Vineyards , 2017, Remote. Sens..

[125]  Matthew F. McCabe,et al.  High-resolution sensing for precision agriculture: from Earth-observing satellites to unmanned aerial vehicles , 2016, Remote Sensing.

[126]  Valeria Borodin,et al.  Handling uncertainty in agricultural supply chain management: A state of the art , 2016, Eur. J. Oper. Res..

[127]  I. Scott,et al.  Recent advances in airborne phased array radar systems , 2016, 2016 IEEE International Symposium on Phased Array Systems and Technology (PAST).

[128]  D. Yawson,et al.  Status and challenges of the higher agricultural education sector in Ghana , 2016 .

[129]  Claudia Notarnicola,et al.  Review of Machine Learning Approaches for Biomass and Soil Moisture Retrievals from Remote Sensing Data , 2015, Remote. Sens..

[130]  Jason L. Snyder,et al.  Challenges for agricultural education and training (AET) institutions in preparing growing student populations for productive careers in the agri-food system , 2015 .

[131]  Richard M. Lucas,et al.  Challenges and opportunities in harnessing satellite remote-sensing for biodiversity monitoring , 2015, Ecol. Informatics.

[132]  S. Stamatiadis,et al.  A Comparative Study of Soil Quality in Two Vineyards Differing in Soil Management Practices , 2015 .

[133]  J. Benediktsson,et al.  Challenges and Opportunities of Multimodality and Data Fusion in Remote Sensing , 2015, Proceedings of the IEEE.

[134]  A. Mishra,et al.  Factors influencing environmental stewardship in U.S. agriculture: Conservation program participants vs. non-participants , 2015 .

[135]  Marco Dubbini,et al.  Evaluating Multispectral Images and Vegetation Indices for Precision Farming Applications from UAV Images , 2015, Remote. Sens..

[136]  Diego González-Aguilera,et al.  Vicarious radiometric calibration of a multispectral sensor from an aerial trike applied to precision agriculture , 2014 .

[137]  Marta Zdravkovic Challenges and opportunities for strengthening tertiary agricultural education and private sector collaboration in Africa , 2014 .

[138]  K. Bruland,et al.  Assessing the role of steam power in the first industrial revolution:The early work of Nick von Tunzelmann , 2013 .

[139]  Renfu Lu,et al.  Hyperspectral and multispectral imaging for evaluating food safety and quality , 2013 .

[140]  J. Loor,et al.  Nutritional management of the transition cow in the 21st century – a paradigm shift in thinking , 2013 .

[141]  James W. Jones,et al.  Integrated description of agricultural field experiments and production: The ICASA Version 2.0 data standards , 2013 .

[142]  I. Hajnsek,et al.  A tutorial on synthetic aperture radar , 2013, IEEE Geoscience and Remote Sensing Magazine.

[143]  D. Karlen Soil Health: The Concept, Its Role, and Strategies for Monitoring , 2012 .

[144]  Qamar Uz Zaman,et al.  Rice Crop Monitoring with Unmanned Helicopter Remote Sensing Images , 2012 .

[145]  Urs Wegmüller,et al.  Topography Mapping With a Portable Real-Aperture Radar Interferometer , 2012, IEEE Geoscience and Remote Sensing Letters.

[146]  S. Popescu,et al.  Satellite lidar vs. small footprint airborne lidar: Comparing the accuracy of aboveground biomass estimates and forest structure metrics at footprint level , 2011 .

[147]  P. Petocz,et al.  Evaluation of the Micronutrient Composition of Plant Foods Produced by Organic and Conventional Agricultural Methods , 2011, Critical reviews in food science and nutrition.

[148]  V. Klemas Remote Sensing of Wetlands: Case Studies Comparing Practical Techniques , 2011 .

[149]  Kai Wang,et al.  Remote Sensing of Ecology, Biodiversity and Conservation: A Review from the Perspective of Remote Sensing Specialists , 2010, Sensors.

[150]  Filippo Catani,et al.  Monitoring, prediction, and early warning using ground-based radar interferometry , 2010 .

[151]  Yubin Lan,et al.  Multispectral imaging systems for airborne remote sensing to support agricultural production management , 2010 .

[152]  K. Goulding,et al.  Optimizing nutrient management for farm systems , 2008, Philosophical Transactions of the Royal Society B: Biological Sciences.

[153]  Chi-Kuei Wang,et al.  Using airborne bathymetric lidar to detect bottom type variation in shallow waters , 2007 .

[154]  O. Oenema,et al.  Nutrient management for intensive animal agriculture: policies and practices for sustainability , 2005 .

[155]  Sonia Calvari,et al.  Monitoring active volcanoes using a handheld thermal camera , 2004, SPIE Defense + Commercial Sensing.

[156]  Soizik Laguette,et al.  Remote sensing applications for precision agriculture: A learning community approach , 2003 .

[157]  B. Brisco,et al.  Precision Agriculture and the Role of Remote Sensing: A Review , 1998 .

[158]  Xiaoshuang Ma,et al.  Residual Dual U-Shape Networks With Improved Skip Connections for Cloud Detection , 2024, IEEE Geoscience and Remote Sensing Letters.

[159]  S. Liang,et al.  The Improved Winter Wheat Yield Estimation by Assimilating GLASS LAI Into a Crop Growth Model With the Proposed Bayesian Posterior-Based Ensemble Kalman Filter , 2023, IEEE Transactions on Geoscience and Remote Sensing.

[160]  A. Sharifi,et al.  Multispectral Crop Yield Prediction Using 3D-Convolutional Neural Networks and Attention Convolutional LSTM Approaches , 2023, IEEE Journal of Selected Topics in Applied Earth Observations and Remote Sensing.

[161]  A. Prashar,et al.  Optical Imaging Resources for Crop Phenotyping and Stress Detection. , 2022, Methods in molecular biology.

[162]  João Barata,et al.  Industry 5.0 - Past, Present, and Near Future , 2022, CENTERIS/ProjMAN/HCist.

[163]  Guoqing Zhou,et al.  The Development of A Rigorous Model for Bathymetric Mapping from Multispectral Satellite-Images , 2022, Remote. Sens..

[164]  M. Farooq,et al.  A Survey on the Role of IoT in Agriculture for the Implementation of Smart Livestock Environment , 2022, IEEE Access.

[165]  Yang Li,et al.  Meta-learning baselines and database for few-shot classification in agriculture , 2021, Comput. Electron. Agric..

[166]  Appadurai M,et al.  Precision Farming in Modern Agriculture , 2021, Transactions on Computer Systems and Networks.

[167]  Amar Singh,et al.  Plant Disease Detection Using Machine Learning Approaches , 2021, Advances in Medical Technologies and Clinical Practice.

[168]  Mahak Bhatia,et al.  Agriculture supply chain management - an operational perspective , 2020 .

[169]  Wataru Iwasaki,et al.  IoT sensors for smart livestock management , 2019, Chemical, Gas, and Biosensors for Internet of Things and Related Applications.

[170]  Sayed Ali Ahmed Elmustafa,et al.  Internet of things in Smart Environment: Concept, Applications, Challenges, and Future Directions , 2019 .

[171]  Ioannis Kopanakis,et al.  Big Data Analytics: Applications, Prospects and Challenges , 2018, Mobile Big Data.

[172]  A. Pouyan Nejadhashemi,et al.  Climate change and livestock: Impacts, adaptation, and mitigation , 2017 .

[173]  S. Valentin Do-It-Yourself Helium Balloon Aerial Photography : developing a method in an agroforestry plantation, Lao PDR , 2015 .

[174]  B. Talbert,et al.  Agricultural Education in an Urban Charter School: Perspectives and Challenges. , 2014 .