Bibliography



1. Abbas, Aqleem. 2023. Drones in Plant Disease Assessment, Efficient Monitoring, and Detection: A Way Forward to Smart Agriculture. Agronomy, 13 (1524).
2. Abdulraheem, Mukhtar Iderawumi, et al. 2023. Advancement of Remote Sensing for Soil Measurements and Applications: A Comprehensive Review. Sustainability, 15 (15444).
3. Adamchuk, Viacheslav I., T.S. Stombaugh, and R.R. Price. 2008. GNSS-Based Auto-Guidance in Agriculture. International Plant Nutrition Institute: Peachtree Corners, Georgia. Publication SSMG-46.
4. Adamchuk, Viacheslav I. 2008. Satellite-Based Auto-Guidance. University of Nebraska, Institute of Agriculture and Natural Resources: Lincoln, Nebraska. Publication EC706.
5. Ahmad Latief and Firasath Nabi. 2021. Agriculture 5.0: Artificial Intelligence, IoT, and Machine Learning. Boca Raton, Florida: CRC Press, Taylor & Francis Group.
6. Alahmad, Tarek, Miklós Neményi, and Anikó Nyéki. 2023. Applying IoT Sensors and Big Data to Improve Precision Crop Production: A Review. Agronomy, 13 (2603).
7. Alexopoulos, Angelos, et al. 2023. Complementary Use of Ground-Based Proximal Sensing and Airborne/ Spaceborne Remote Sensing Techniques in Precision Agriculture: A Systematic Review. Agronomy, 13 (1942).
8. Araújo, Sara Oleiro, et al. 2023. Machine Learning Applications in Agriculture: Current Trends, Challenges, and Future Perspectives. Agronomy, 13 (2976).
9. Alexopoulos, Angelos, et al. 2023. Complementary Use of Ground-Based Proximal Sensing and Airborne/ Spaceborne Remote Sensing Techniques in Precision Agriculture: A Systematic Review. Agronomy, 13 (1942).
10. Andujar, Dionisio and Jorge Martinez-Guanter. 2022. An Overview of Precision Weed Mapping and Management. Remote Sensing, 14 (3621).
11. Bai, Yuhao, et al. 2022. Vision-based navigation and guidance for agricultural autonomous vehicles and robots: A review. Computers and Electronics in Agriculture, 205 (107584).
12. Barbosa, Roberto N. 2012. Crop Yield Monitors. Louisiana State University Agricultural Center: Baton Rouge, Louisiana. Publication 3234.
13. Barocco, Rebecca, Won Suk Lee, and Garret Hortman. 2017. Yield Mapping Hardware Components for Grains and Cotton Using On-the-Go Monitoring Systems. University of Florida, Institute of Food and Agricultural Sciences Extension: Gainesville, Florida. Publication AE518.
14. Bechar, Avital (Ed.). 2021. Innovation in Agricultural Robotics for Precision Agriculture. New York, New York: Springer.
15. Bolstad, Paul. 2019. GIS Fundamentals: A First Text on Geographic Information Systems. Sixth Edition. Ann Arbor, Michigan: XanEdu.
16. Bongomin, Ocident, et al. 2024. UAV image acquisition and processing for high-throughput phenotyping in agricultural research and breeding programs. The Plant Phenome Journal, 7.
17. Botta, Andrea, et al. 2022. A Review of Robots, Perception, and Tasks in Precision Agriculture. Applied Mechanics, 3.
18. Carella, Alessandro, et al. 2024. Continuous Plant-Based and Remote Sensing for Determination of Fruit Tree Water Status. Horticulturae, 10 (516).
19. Chang Kang-Tsung. 2016. Introduction to Geographic Information Systems. Ninth Edition. New York, New York: McGraw Hill Education.
20. Dhanush, Guduru, et al. 2022. A comprehensive review of machine vision systems and artificial intelligence algorithms for the detection and harvesting of agricultural produce. Scientific African, e01798.
21. Erdogdu, Aylin, et al. 2025. Combining Fuzzy Logic and Genetic Algorithms to Optimize Cost, Time and Quality in Modern Agriculture. Agriculture, 17 (2829).
22. Esposito, Marco, et al. 2021. Drone and sensor technology for sustainable weed management: a review. Chemical and Biological Technologies in Agriculture, 8 (18).
23. Ess, Daniel R., Mark T. Morgan, and Samuel D. Parsons. 2001. Implementing Site-Specific Management: Map- Versus Sensor-Based Variable Rate Application. Purdue University Cooperative Extension Service: West Lafayette, Indiana. Publication SSM-2-W.
24. Frazier, Amy E., Kunwar K. Singh (Eds.). 2021. Fundamentals of Capturing and Processing Drone Imagery and Data. Boca Raton, Florida: CRC Press, Taylor & Francis Group.
25. Fouda Hazem Shawky. 2021. Automation and Robotics in Agriculture. Burlington, Ontario, Canada: Delve Publishing.
26. Fountas, Spyros, et al. AI-Assisted Vision for Agricultural Robots. AgriEngineering, 4.
27. Gano, Boubacar, et al. Drone-based imaging sensors, techniques, and applications in plant phenotyping for crop breeding: A comprehensive review. The Plant Phenome Journal, 7 (20100).
28. Ghazal, Sumaira, Arslan Munir, and Waqar S. Qureshi. 2024. Computer vision in smart agriculture and precision farming: Techniques. Artificial Intelligence in Agriculture, 13.
29. Grisso, Robert, et al. 2009. Precision Farming Tools: Yield Monitor. Virginia Tech, Virginia Cooperative Extension: Blacksburg, Virginia. Publication 442-502.
30. Grisso, Robert, et al. 2014. Precision Farming Tools: Variable-Rate Application. Virginia Tech, Virginia Cooperative Extension: Blacksburg, Virginia. Publication 442-505.
31. Harshavardhini, K. and Dr. S. Lakshmi Devi. 2025. Fuzzy Logic for Automated Irrigation System in Agriculture. International Journal of Research Publication and Reviews, 6 (1).
32. Hassan, Emad S., et al. 2024. Enhancing Smart Irrigation Efficiency: A New WSN-Based Localization Method for Water Conservation. Water, 16 (672).
33. Huang, Yanbo, et al. 2017. Agricultural remote sensing big data: Management and applications. ScienceDirect, 17 (9).
34. Ishimwe, Roselyne, K. Abutaleb, and F. Ahmed. 2014. Applications of Thermal Imaging in Agriculture—A Review. Advances in Remote Sensing, 3.
35. Jafarbiglu, Hamid and Alireza Pourreza. 2021. A comprehensive review of remote sensing platforms, sensors, and applications in nut crops. ScienceDirect, 197 (2022).
36. Jensen, John R. 2022. Digital Image Processing: A Remote Sensing Perspective. Fourth Edition. New York, New York: Pearson.
37. Jianga, San, Cheng Jiangc, and Wanshou Jiangd. 2020. Efficient structure from motion for large-scale UAV images: A review and a comparison of SfM tools. ISPRS Journal of Photogrammetry and Remote Sensing, 167.
38. Kariyanna, B. and M Sowjanya. 2024. Unravelling the use of artificial intelligence in management of insect pests. Smart Agricultural Technology, 8 (100517).
39. Karim, Md Rejaul, et al. 2024. Application of LiDAR Sensors for Crop and Working Environment Recognition in Agriculture: A Review. Remote Sensing, 16 (4623).
40. Karkee, Manoj and Qin Zhang (Eds.). 2021. Fundamentals of Agricultural and Field Robotics. New York, New York: Springer.
41. Karmakar, Priyabrata, et al. 2023. Crop monitoring by multimodal remote sensing: A review. Remote Sensing Applications: Society and Environment, 33 (101093).
42. Kerry, Ruth and Alexandre Escolà (Eds.). 2021. Sensing approaches for Precision Agriculture. New York, New York: Springer.
43. Kiani, Farzad, et al. 2018. Wireless Sensor Network and Internet of Things in Precision Agriculture. International Journal of Advanced Computer Science and Applications, 9 (6).
44. Kiraga, Shafik, et al. 2022. Detection of pests and diseases for vegetable and fruit plants using machine vision: A review. Precision Agriculture Science and Technology, 4 (1).
45. Krishna, K.R. 2018. Agricultural Drones. Waretown, New Jersey: Apple Academic Press Inc., CRC Press, Taylor & Francis Group.
46. Kumar, Sandeep, et al. 2023. Designing and Implementing a Versatile Agricultural Robot: A Vehicle Manipulator System for Efficient Multitasking in Farming Operations. Machines, 11 (776).
47. Kumar, Vijendra, et al. 2024. A comprehensive review on smart and sustainable agriculture using IoT technologies. Smart Agricultural Technology, 8 (100487).
48. Lamine, Slim, et al. (Eds.). 2024. Remote Sensing in Precision Agriculture: Transforming Scientific Advancement into Innovation. San Diego, California: Academic Press.
49. Li, Minzan, Chenghai Yang, and Qin Zhang (Eds.). 2022. Soil and Crop Sensing for Precision Crop Production. New York, New York: Springer.
50. Liu, Xiaozhen, et al. 2024. Research on Ground-Based Remote-Sensing Inversion Method for Soil Salinity Information Based on Crack Characteristics and Spectral Response. Agronomy, 14 (1837).
51. Lo, Tsz Him, et al. 2018. Ground-Based Thermal Sensing of Field Crops and Its Relevance to Irrigation Management. University of Nebraska Extension, Institute of Agriculture and Natural Resources: Lincoln, Nebraska. Publication G2301.
52. Long, John M. 2017. Selecting the Proper GPS Guidance System for Your Operation. Oklahoma State University, Cooperative Extension: Stillwater, Oklahoma. Publication BAE-1766-4.
53. Lu, Bing, et al. 2020. Recent Advances of Hyperspectral Imaging Technology and Applications in Agriculture. Remote Sensing, 12 (269).
54. Maes, Wouter H. 2025. Practical Guidelines for Performing UAV Mapping Flights with Snapshot Sensors. Remote Sensing, 17 (606).
55. Mail, Mohd Fazly, et al. 2023. Agricultural Harvesting Robot Concept Design and System Components: A Review. AgriEngineering, 5.
56. Lu, Yuzhen and Sierra Young. 2020. A survey of public datasets for computer vision tasks in precision agriculture. Computers and Electronics in Agriculture, 178 (105760).
57. Matholiya, Chirag S., et al. 2022. Automatic guidance systems in agricultural autonomous robotic machine: A review. The Pharma Innovation Journal, SP-11 (3).
58. Mavridou, Efthimia, et al. 2019. Machine Vision Systems in Precision Agriculture for Crop Farming. Journal of Imaging, 5 (89).
59. Mekonnen, Yemeserach, et al. 2020. Review—Machine Learning Techniques in Wireless Sensor Network Based Precision Agriculture. Journal of The Electrochemical Society, 167 (037522).
60. Mendes, Jorge, et al. 2020. Smartphone Applications Targeting Precision Agriculture Practices—A Systematic Review. Agronomy, 10 (855).
61. Mensah, Bright, et al. 2024. Advances in weed identification using hyperspectral imaging: A comprehensive review of platform sensors and deep learning techniques. Journal of Agriculture and Food Research, 18 (101388).
62. Morchid, Abdennabi, et al. 2023. Applications of internet of things (IoT) and sensors technology to increase food security and agricultural Sustainability: Benefits and challenges. Ain Shams Engineering Journal, 15 (102509).
63. Mowla, M.D. Najmul, et al. 2023. Internet of Things and Wireless Sensor Networks for Smart Agriculture Applications: A Survey. IEEEAccess, 11.
64. Munasinghe, Isuru, et al. 2024. A Comprehensive Review of UAV-UGV Collaboration: Advancements and Challenges. Journal of Sensor and Actuator Networks, 13 (81).
65. Nafchi, Ali Mirzakhani and Karishma Kumari. 2023. Comprehensive Guide to Grain Yield Monitoring Systems. South Dakota State University Extension: Brookings, South Dakota. Publication P-00279.
66. Nowatzki, John and Vern Hofman.2009. Variable-rate Fertilization for Field Crops Equipment Requirements. North Dakota State University Extension Service: Fargo, North Dakota. Publication AE-1445.
67. Omia, Emmanuel, et al. 2023. Remote Sensing in Field Crop Monitoring: A Comprehensive Review of Sensor Systems, Data Analyses and Recent Advances. Remote Sensing, 15 (354).
68. Ortiz, Brenda, Joey Shaw, and John Fulton. 2019. Basics of Crop Sensing. Alabama Cooperative Extension System: Alburn, Alabama. Publication ANR-1398.
69. Ozkan, Erdal. 2024. Drones for Spraying Pesticides—Opportunities and Challenges. Ohio State University Extension: Columbus, Ohio. Publication FABE-540.
70. Padhiary, Mrutyunjay. 2024. Enhancing precision agriculture: A comprehensive review of machine learning and AI vision applications in all-terrain vehicle for farm automation. Smart Agricultural Technology, 8 (100483).
71. Paraga, Mikka. 2023. The use of synthetic aperture radar technology for crop biomass monitoring: A systematic review. Remote Sensing Applications: Society and Environment, 33 (101107).
72. Patel, Govind Singh, et al. (Eds.). 2021. Smart Agriculture: Emerging Pedagogies of Deep learning, Machine Learning, and Internet of Things. Boca Raton, Florida: CRC Press, Taylor & Francis Group.
73. Pawase, Pranav Pramod, et al. 2023. Variable rate fertilizer application technology for nutrient management: A review. International Journal of Agricultural & Biological Engineering, 16 (4).
74. Queiroz, Daniel Marcal de (Eds.). 2021. Digital Agriculture. New York, New York: Springer.
75. Radocaj, Dorijan, et al. 2023. State of Major Vegetation Indices in Precision Agriculture Studies Indexed in Web of Science: A Review. Agriculture, 13 (707).
76. Radocaj, Dorijan, Ivan Plašcak, and Mladen Jurišie. 2023. Global Navigation Satellite Systems as State-of-the-Art Solutions in Precision Agriculture: A Review of Studies Indexed in the Web of Science. Agriculture, 13 (1417).
77. Rai, Nitin, et al. 2022. Applications of deep learning in precision weed management: A review. Computers and Electronics in Agriculture, 206 (107698).
78. Ranabhat, Saurav and Randy Price. 2025. Effects of Flight Heights and Nozzle Types on Spray Characteristics of Unmanned Aerial Vehicle (UAV) Sprayer in Common Field Crops. AgriEngineering, 7 (22).
79. Reina, Giulio. 2024. Robotics and AI for Precision Agriculture. Robotics, 13 (64).
80. Riahi, Jamel, et al. 2024. Effectiveness of the Fuzzy Logic Control to Manage the Microclimate Inside a Smart Insulated Greenhouse. Smart Cities, 7.
81. Rodrigues Barbosa Júnior, Marcelo, et al. 2024. Advancements in Agricultural Ground Robots for Specialty Crops: An Overview of Innovations, Challenges, and Prospects. Plants, 13 (3372).
82. Sabins, Floyd F. Jr. and James M. Ellis. 2020. Remote Sensing: Principles, Interpretation, and Applications. Fourth Edition. Long Grove, Illinois: Waveland Press, Inc.
83. Sahin, Halil Mertkan, et al. 2023. Segmentation of weeds and crops using multispectral imaging and CRF-enhanced U-Net. Computers and Electronics in Agriculture, 211 (107956).
84. Šarauskis, Egidijus, et al. 2022. Variable Rate Seeding in Precision Agriculture: Recent Advances and Future Perspectives. Agriculture, 12 (305).
85. Shafi, Uferah, et al. 2019. Precision Agriculture Techniques and Practices: From Considerations to Applications. Agronomy, 19 (3796).
86. Shannon, D. Kent, David E. Clay, and Newell R. Kitchen (Eds.). 2018. Precision Agriculture Basics. Madison, Wisconsin: American Society of Agronomy.
87. Shearer, S.A., et al. 2002. Elements of Precision Agriculture: Basics of Yield Monitor Installation and Operation. University of Kentucky Cooperative Extension Service: Lexington, Kentucky. Publication PA-1.
88. Sishodia, Rajendra P., Ram L. Ray, and Sudhir K. Singh. 2020. Applications of Remote Sensing in Precision Agriculture: A Review. Remote Sensing, 12 (3136).
89. Stombaugh, Tom. 2002. Lightbar Guidance Aids. University of Kentucky Cooperative Extension Service: Lexington, Kentucky. Publication PA-3.
90. Tavakoli, Hamed, et al. 2024. The RapidMapper: State-of-the-art in mobile proximal soil sensing based on a novel multi-sensor platform. Computers and Electronics in Agriculture, 226 (109443).
91. Tsouros, Dimosthenis C., Stamatia Bibi, and Panagiotis G. Sarigiannidis. 2019. A Review on UAV-Based Applications for Precision Agriculture. Information, 10 (349).
92. Vijayakumar, Vinay, et al. 2023. Smart spraying technologies for precision weed management: A review. Smart Agricultural Technology, 6 (100337).
93. Vázquez-Arellano, Manuel, et al. 2016. 3-D Imaging Systems for Agricultural Applications—A Review. Sensors, 6 (618).
94. Wang, Tianhai, et al. 2022. Applications of machine vision in agricultural robot navigation: A review. Computers and Electronics in Agriculture, 198 (107085).
95. Wolfert, Sjaak, et al. 2017. Big Data in Smart Farming – A review. Agricultural Systems, 153.
96. Wu, Bingfang, et al. 2023. Challenges and opportunities in remote sensing-based crop monitoring: a review. National Science Review, 10 (290).
97. Wu, Jinxing, et al. A Review of the Application of Hyperspectral Imaging Technology in Agricultural Crop Economics. Coatings, 14 (1285).
98. Xie, Dongbo, et al. 2022. Actuators and Sensors for Application in Agricultural Robots: A Review. Machines, 10 (913).
99. Xu, Jinyuan, Baoxing Gu, and Guangzhao Tian. 2022. Review of agricultural IoT technology. Artificial Intelligence in Agriculture, 6.
100. Xue, Jinru and Baofeng Su. 2017. Significant Remote Sensing Vegetation Indices: A Review of Developments and Applications. Journal of Sensors, 2017.
101. Yu, Runze, et al. 2021. Proximal sensing of vineyard soil and canopy vegetation for determining vineyard spatial variability in plant physiology and berry chemistry. OENO One, 2.
102. Zhang, Qin. 2016. Precision Agriculture Technology for Crop Farming. Boca Raton, Florida: CRC Press, Taylor & Francis Group.