
Computer Vision in Smart Agriculture and Crop Management
Description
Alles über E-Books | Antworten auf Fragen rund um E-Books, Kopierschutz und Dateiformate finden Sie in unserem Info- & Hilfebereich.
This book is essential for anyone interested in understanding how smart agriculture, utilizing information and technology such as computer vision and deep learning, can revolutionize agriculture productivity, resolve ongoing concerns, and enhance economic and general effectiveness in farming.
The need for a reliable food supply has driven the development of smart agriculture, which leverages technology to assist farmers, especially in remote areas. A key component is computer vision (CV) technology, which, combined with deep learning, can manage agricultural productivity and enhance automation systems for improved efficiency and cost-effectiveness. Automation in agriculture ensures benefits like reduced costs, high performance, and accuracy. Aerial imaging and high-throughput research enable effective crop monitoring and management. Computer vision and AI models aid in detecting plant health, impurities, and pests, supporting sustainable farming. This book explores using CV and AI to develop smart agriculture through deep learning, data mining, and intelligent applications.
Rajesh Kumar Dhanaraj, PhD, is a professor in the School of Computing Science and Engineering at Galgotias University, Greater Noida, India. He has contributed to over 25 books on various technologies, 21 patents, and 53 articles and papers in various refereed journals and international conferences. He is a Senior Member of the Institute of Electrical and Electronics Engineers, member of the Computer Science Teacher Association and International Association of Engineers, and an Expert Advisory Panel Member of Texas Instruments Inc., USA. His research interests include Machine Learning, Cyber-Physical Systems, and Wireless Sensor Networks.
Balamurugan Balusamy, PhD, is an associate dean student at Shiv Nadar University, Delhi, India with over 12 years of experience. He has published over 200 papers, edited and authored over 80 books, and collaborated with professors across the world from top ranked universities. Additionally, he has several top-notch conferences on his resume, serves on the advisory committee for several startups and forums, and does consultancy work for the industry on industrial IoT and has given over 195 talks at various events and symposiums.
Prithi Samuel, PhD, is an assistant professor in the Department of Computational Intelligence at the SRM Institute of Science and Technology, Kattankulathur Campus, Chennai, India with over 15 years of teaching experience in reputed engineering colleges. She is a pioneer researcher in the areas of automation theory, machine learning, deep learning, computational intelligence techniques, and the Internet of Things. She has published papers in leading international journals and conferences and published books and book chapters for several renowned publishing houses. She is an active member of the Institute of Electrical and Electronics Engineering and Association for Computing Machinery and holds an International Society for Technology in Education and International Association of Engineers lifetime membership.
Malathy Sathyamoorthy is an assistant professor in the department of Computer Science and Engineering, Kongu Engineering College, Erode, Tamil Nadu, India. She is a life member of the Indian Society for Technical Education and International Association of Engineers. She has also published over 20 research papers in various journals, 15 papers in international conferences, two patents, and four book chapters. Her areas of interest include wireless sensor networks, networking, security, and machine learning.
Ali Kashif Bashir, PhD, is a reader of Networks and Security at the Manchester Metropolitan University, United Kingdom. He is also affiliated with the University of Electronic Science and Technology of China, National University of Science and Technology, Islamabad, Pakistan, and University of Guelph, Canada. He is managing several research and industrial projects and reviews funding proposals for the Engineering and Physical Sciences Research Council, UK, Commonwealth, UK, National Science and Engineering Research Council, Canada, Mitacs, Canada, the Irish Research Council, and Qatar National Research Fund. He has delivered more than 30 talks across the globe, organized over 40 guest editorials, and chaired more than 35 conferences and workshops.
More details
Other editions
Additional editions

Persons
Rajesh Kumar Dhanaraj, PhD, is a professor in the School of Computing Science and Engineering at Galgotias University, Greater Noida, India. He has contributed to over 25 books on various technologies, 21 patents, and 53 articles and papers in various refereed journals and international conferences. He is a Senior Member of the Institute of Electrical and Electronics Engineers, member of the Computer Science Teacher Association and International Association of Engineers, and an Expert Advisory Panel Member of Texas Instruments Inc., USA. His research interests include Machine Learning, Cyber-Physical Systems, and Wireless Sensor Networks.
Balamurugan Balusamy, PhD, is an associate dean student at Shiv Nadar University, Delhi, India with over 12 years of experience. He has published over 200 papers, edited and authored over 80 books, and collaborated with professors across the world from top ranked universities. Additionally, he has several top-notch conferences on his resume, serves on the advisory committee for several startups and forums, and does consultancy work for the industry on industrial IoT and has given over 195 talks at various events and symposiums.
Prithi Samuel, PhD, is an assistant professor in the Department of Computational Intelligence at the SRM Institute of Science and Technology, Kattankulathur Campus, Chennai, India with over 15 years of teaching experience in reputed engineering colleges. She is a pioneer researcher in the areas of automation theory, machine learning, deep learning, computational intelligence techniques, and the Internet of Things. She has published papers in leading international journals and conferences and published books and book chapters for several renowned publishing houses. She is an active member of the Institute of Electrical and Electronics Engineering and Association for Computing Machinery and holds an International Society for Technology in Education and International Association of Engineers lifetime membership.
Malathy Sathyamoorthy is an assistant professor in the department of Computer Science and Engineering, Kongu Engineering College, Erode, Tamil Nadu, India. She is a life member of the Indian Society for Technical Education and International Association of Engineers. She has also published over 20 research papers in various journals, 15 papers in international conferences, two patents, and four book chapters. Her areas of interest include wireless sensor networks, networking, security, and machine learning.
Ali Kashif Bashir, PhD, is a reader of Networks and Security at the Manchester Metropolitan University, United Kingdom. He is also affiliated with the University of Electronic Science and Technology of China, National University of Science and Technology, Islamabad, Pakistan, and University of Guelph, Canada. He is managing several research and industrial projects and reviews funding proposals for the Engineering and Physical Sciences Research Council, UK, Commonwealth, UK, National Science and Engineering Research Council, Canada, Mitacs, Canada, the Irish Research Council, and Qatar National Research Fund. He has delivered more than 30 talks across the globe, organized over 40 guest editorials, and chaired more than 35 conferences and workshops.
Content
Preface xxi
1 Computer Vision-Based Innovations for Smart Agriculture and Crop Surveillance: Evolution, Trends, and Future Challenges 1
M. Nalini and B. Yoga Bhuvaneswari
1.1 Introduction 2
1.2 Artificial Intelligence in Agriculture 3
1.3 Evolution of Smart Agriculture 5
1.4 AI Technology Trends in Computer Vision 10
1.5 Benefits of Artificial Intelligence in Agriculture 10
1.6 Precision Farming 14
1.7 Future Challenges 15
1.8 Conclusion 21
References 22
2 Cyber Biosecurity Solutions for Protecting Smart Agriculture and Precision Farming 25
Balakesava Reddy Parvathala and Srinivas Kolli
2.1 Introduction 26
2.2 Cyber-Attacks on SF and PA 28
2.3 Network and Related Equipment Attacks 30
2.4 Security Threats to SF and PA Using the Cyber-Kill-Chain (CKC) Taxonomy 32
2.5 The Taxonomy 34
2.5.1 Threats Pertaining to the Phase of Reconnaissance 34
2.6 Data Collection 36
2.7 Vulnerability of the Food and Agricultural System and the Bio Economy 38
2.8 The APTs in SF and PA 47
2.9 Challenges in the Implementation of Technologies in the Agricultural Sector 50
2.10 Open Challenges and Research Areas 51
2.11 Conclusions 52
References 53
3 Precision Smart Farming and Cultivation with Virtual Reality/ Augmented Reality Technology - Applications and Use Cases 57
Himani Sharma, Atin Kumar and Rohit Kumar
3.1 Introduction 58
3.2 Advantages of Precision Smart Farming 60
3.3 Disadvantages of Precision-Smart Farming 63
3.4 How Could India Benefit from Precision Farming? 64
3.5 Challenges in Adopting Precision Farming in India 64
3.6 Cultivation with Virtual Reality/Augmented Reality Technology 65
3.7 Benefits of Cultivation with Virtual/Augmented Reality Technology 65
3.8 Conclusion 69
3.9 Summary 69
References 69
4 Stereo Vision Subsystem and Scene Segmentation Self-Steering Tractors in Smart Agriculture 71
Dileep Pulugu, Revathy Pulugu, K. Muthumanickam, S. Gopinath and A. Manikandan
4.1 Introduction 72
4.2 Global Positioning System 73
4.3 Self-Steering Tractors with Vision Have Evolved 74
4.4 Safety Issues 76
4.5 The System Architecture of Self-Guiding Tractors 78
4.6 Basic Modeling 78
4.7 Building with a Vision 79
4.8 Path Tracking Control System 80
4.9 Development of a Tractor-Based Agricultural Row Detection System Using Stereovision 80
4.10 Creation of a Crop Row Detecting Method Using Stereo Vision 83
4.11 Stereo Vision for Absolute Localization 87
4.12 Multi-Vision Methods 89
4.13 Conclusions 89
References 90
5 Vision-Based Image Classification and Image Segmentation Algorithms for Plant Disease Diagnostics 93
N. Ashokkumar, A. Manikandan, S. Hariprasath and P. Vijayalakshmi
5.1 Introduction 94
5.2 Signs and Symptoms of Plant Disease 95
5.3 Techniques and Algorithms for Detecting Plant Disease 101
5.4 Dataset for Diagnosis Plant Disease 103
5.5 Segmentation 106
5.6 Classification 109
5.7 Conclusion 117
References 118
6 Smart Dust Technology for Monitoring and Control Systems in Smart Agriculture and Crop Surveillance Systems 123
M. Yogeshwari and A. Prasanth
6.1 Introduction 124
6.2 Smart Dust Technology in Smart Agriculture 126
6.3 Precision Agriculture and Its Functional Elements 130
6.4 Yield Monitoring and Forecast 131
6.5 Advanced Agricultural Practices 134
6.6 Conclusion 135
References 136
7 An Advanced Application of UAV - Drone Technologies in Precision Agriculture for Seed Dropping, Fertilizers and Pesticides Spraying and Field Monitoring 139
Daniel Lawrence I., A. Rehash Rushmi Pavitra, Ragupathy Karu and M.P. Saravanan
7.1 Introduction 140
7.2 Irrigation Management 141
7.3 Seed Dropping 143
7.4 Pesticide and Fertilizer Spraying System 145
7.5 Improving Soil Productivity 145
7.6 Supporting Crop Growth 147
7.7 Crop Management Strategies 147
7.8 Increasing Crop Yield 149
7.9 Preventing Crop Disease 150
7.10 Predicting Crop Yield 151
7.11 Conclusion 151
References 152
8 Cognitive Intelligence and Distributed Computing Systems Applications in Smart Farming 159
Sangeetha Radhakrishnan and A. Prasanth
8.1 Introduction 159
8.2 Cognitive Intelligence 165
8.3 Distributed Computing 171
8.4 Cognitive Intelligence and Distributed Computing in Smart Farming 179
8.5 Conclusion and Summary 182
References 184
9 Blockchain-Based Smart Agriculture with the Internet of Things: A Revolutionary Approach in Agriculture and Food Supply Chain 187
Vasanth R. and Pandian A.
9.1 Introduction 188
9.2 Literature Review 192
9.3 Methodology 198
9.4 Blockchain Technology in Agriculture 205
9.5 Internet of Things in Agriculture 209
9.6 Integration of Blockchain and IoT in Agriculture 211
9.7 Case Studies 213
9.8 Challenges and Future Directions 215
9.9 Conclusion 216
References 216
10 Computer Vision Systems in Livestock Farming, Poultry Farming, and Fish Farming: Applications, Use Cases, and Research Directions 221
Balasubramaniam S., Vijesh Joe C., A. Prasanth and K. Satheesh Kumar
10.1 Introduction 222
10.2 Smart Agriculture 225
10.3 Computer Vision 232
10.4 Primary Computer Vision Techniques 234
10.5 Computer Vision-Based Systems in Livestock Farming, Poultry Farming, and Fish Farming 241
10.6 Computer Vision Systems for Intelligent Farming: Current Research Challenges 248
10.7 Conclusion and Future Scope 252
References 255
11 Forestry Management with AI and Drone Technology - Digital Forestry 259
M. Shanthalakshmi, M. Jeevasree, R. Kavitha, V. Madhumathi, S. Mythreye and A. Naafiah Yusra
11.1 Introduction 260
11.2 Drone Technology 261
11.3 Drones Employed for Disaster Management 263
11.4 Drones Equipped with Remote Sensing, GIS and LiDar for Geographical Dispersal Maintenance and Surveillance 271
11.5 Drones for Livestock Management 277
11.6 Conclusion 278
Bibliography 279
12 Drone Application and Use Cases in Smart Agriculture and Crop Surveillance: Future Research Directions 283
Nilotpal Das, Atin Kumar and Rohit Kumar
12.1 Introduction 284
12.2 Definition of Drones 285
12.3 Classification of Drones 286
12.4 Application of Drones in Agriculture 290
12.5 Agriculture Using Drone Technology 292
12.6 Drone Use Rules and Regulations in India 296
12.7 Policy Need 297
12.8 Another Benefits of Drones in Agriculture 298
12.9 Drawbacks of Drones in Agriculture 299
12.10 Drone Agriculture Cost 299
12.11 Future Research Direction 299
12.12 Summary 300
References 301
13 A Comprehensive Study on Machine Vision Techniques for an Automatic Weeding Strategy in Plantations 303
Manikandan J., Rhikshitha K., Sathya Sudarsen G. S. and Saran J. U.
13.1 Introduction 304
13.2 Related Study 306
13.3 Methodology 307
13.4 Experimentation and Analysis 314
13.5 Conclusion and Future Enhancements 318
References 318
14 An Effective Study on the Machine Vision-Based Automatic Control and Monitoring in Furrow Irrigation and Precision Irrigation 323
Manikandan J., Saran J. U., Samitha S. and Rhikshitha K.
14.1 Introduction 324
14.2 Methodology 326
14.3 Maintenance and Upgrades 333
14.4 Experimentation and Analysis 334
14.5 Conclusion and Future Enhancement 337
References 339
15 Applications in Agriculture for Assessing and Monitoring Soil Using Smart Sensing and Edge Computing 343
G. Padmapriya, V. Vennila, Prithi Samuel, Rajesh Kumar Dhanaraj, Balamurugan Balusamy and Malathy Sathyamoorthy
15.1 Introduction 344
15.2 Smart Agriculture Using Smart Sensing and Edge Computing 351
15.3 IoT-Based Smart Agriculture 354
15.4 KNN-Based Smart IoT System 357
15.5 Results and Discussion 361
15.6 Performance Evaluation 361
15.7 Conclusion 363
References 364
Index 367
1
Computer Vision-Based Innovations for Smart Agriculture and Crop Surveillance: Evolution, Trends, and Future Challenges
M. Nalini* and B. Yoga Bhuvaneswari
Department of Electronics and Instrumentation Engineering, Sri Sairam Engineering College, Chennai, India
Abstract
The economic prosperity of a nation relies heavily on its agricultural industry. Due to population expansion, frequent climate change, and material restriction, it has become harder to supply the food needs of the present population. Precision agriculture, also frequently referred to as smart agriculture, is a cutting-edge method for addressing the challenges associated with agricultural sustainability. This cutting-edge technology is powered by a system based on computer vision (CV) and artificial intelligence (AI). These AI and CV techniques have made remarkable contributions to the agricultural industry in the areas of plant health detection and monitoring, planting, weeding, harvesting, and modern weather forecast analysis. So many use cases of smart farming have an influence on the whole food supply chain by offering insightful data on the entire agricultural process, easing operational decision-making in real-time, and improving farming methods by adding smart sensors and equipment to the field. The use of CV in agriculture has recently increased. Computer vision has enormous potential to improve the whole functioning of the agricultural industry, from lowering production costs through intelligent automation to increasing output.
Artificial intelligence includes the field of CV. Because of breakthrough technology, machines can now understand and perceive the visual environment in a manner that is comparable to that of humans. Computer vision techniques combined with image capturing from remote cameras provide agriculture-specific, non-contact, and scalable sensing solutions. The CV-AI models have made several contributions to the agricultural business in areas including harvesting, enhanced weather analysis, weeding, planting, and plant health detection and monitoring. This chapter covers the evolution, trends, and future challenges of smart farming using CV.
Keywords: Computer vision, smart farming, precision agriculture, artificial intelligence, intelligent farming, internet of things-based smart farming, machine learning, precision farming
1.1 Introduction
Precision agriculture is an agricultural management idea built on surveilling, measuring, and reacting to crop variances. By maximizing input returns while protecting resources, precision agriculture research tries to establish a decision-making system for farm management. This type of agriculture has benefited greatly from machine vision, which makes automated alternatives to chores that are often done by hand. Manual processes are usually laborious and vulnerable to mistakes. Accurate, precise, and effective solutions may be provided by machine vision to help agricultural activities. Additionally, machine learning (ML) techniques make it possible to analyze enormous amounts of data swiftly and reliably, opening the door for the adoption of machine vision applications in agriculture. For agricultural production to meet the issues of productivity, environmental impact, food safety, and sustainability, smart farming is crucial. Due to the continually growing world population, a significant increase in food production must be made while simultaneously maintaining high nutritional quality and availability everywhere and safeguarding the natural ecosystems by employing sustainable agricultural practices. Advanced computer vision (CV) algorithms and ML-based artificial intelligence (AI) can continually analyze the data gathered from multiple sources. Artificial intelligence, deep computing, and computational intelligence are all related technologies created for intelligent systems. A larger definition of AI is the development of intelligent computers that can mimic human thought and behavior. Simply expressed, the basic goal of AI is to develop computer systems that are intelligent enough to resemble human intellect. These AI systems need knowledge engineering to function properly.
Machine learning, on the other hand, is a branch of AI that enables computers to learn from collected data without explicit programming. Machine learning makes accurate predictions on new data by using sophisticated algorithms that repeatedly cycle over the massive data set. One dynamic and fascinating area of AI is CV, which replicates the intricate human visual system. The basic objective of CV is to enable computer systems to detect and locate objects in images and videos in a similar way to how people do. Two examples of cutting-edge methods that have considerably enhanced CV are deep learning and neural networks. Deep learning algorithms like the convolutional neural networks (CNNs) and their derivatives are frequently employed in in-plant phenology investigations. For classifying images, CNNs are frequently employed. The main building blocks of CNNs are convolutional layers, and to create a feature map, a window (filter) is utilized to scan the pictures and seek for certain features. Convolution, pooling, and fully connected layers are utilized to construct an entire CNN, which produces precise feature recognition and accurate picture categorization. With little information loss, pooling layers attempt to minimize the dimensionality of the feature map produced by the convolutional layers [12].
1.2 Artificial Intelligence in Agriculture
Artificial intelligence techniques are frequently employed in agricultural industries to solve a unique set of issues and improve production and operating methods. Agriculture can quickly adapt to using AI and ML when reading each sentence of agricultural products and agricultural techniques in the topic. Because it can comprehend, learn, and react to a one-of-a-kind (mostly based on learning) rising efficiency, of particular importance, cognitive computing is positioned as the catalyst in the next great agricultural revolution. With the use of AI, farmers may gain valuable information about their farm's weather, temperature, water consumption, and soil monitoring, which will help them increase their earnings. By discovering which crops they can grow, creating high-quality hybrid seeds, and maximizing resource efficiency, AI technologies aid farmers. Both the quality of harvested products and the accuracy with which they are harvested may be improved with AI [11].
Precision agriculture uses AI technology to assist in the early diagnosis of diseased plants, insect infestations, and nutritional issues in agricultural areas. Artificial intelligence-powered sensors can quickly identify weeds and advise users to apply pesticides. Utilizing this method can save cultivation expenses since herbicides were made more widely known and sprayed throughout the entire field. Farms of any size across the world are using AI technology to operate more effectively and meet global food demand. With the use of AI, forecasting models may be more accurately and effectively learned. These models can predict weather accurately months in advance. The most efficient method for assisting small farmers is seasonal forecasting. Applications of AI are shown in Figure 1.1.
Artificial intelligence is positively transforming Indian agriculture in several ways. The value of AI applications in agriculture is predicted to increase from $852.2 million in 2019 to $238.38 billion in 2030, or a growth of about 25%. Access to markets, inputs, loans, and crop insurance are all improved by technology. A supply chain that is driven by demand may be built with the use of appropriate timing and precise data. Many AI models become inexpensive and accessible by utilizing sensors, phone photos, drones, agricultural weather data, and data on the condition of the soil. Various challenges, such as climate change, population increase, and job issues, are being addressed by AI, which is functioning as a catalyst for improved yield. Nowadays, relatively few individuals are interested in farming, which causes a labor shortage on many farms. In traditional farming, numerous laborers are needed to seed the crops and make the fields profitable. The use of AI farm bots is a way to deal with the labor scarcity. The AI bots are used in a variety of ways to supplement human labor. Bots can harvest crops more quickly than human laborers can, and they can readily spot and get rid of weeds, which can lower expenses [10].
Figure 1.1 Applications of AI in the agricultural sector.
Thanks to a multitude of technologies, such as wireless, wired, and cellular connections (5G or beyond) for the Internet of Things (IoT) and robotics (agricultural drones and agribots), smart agriculture (SA) has started to be deployed. Specialized hardware and expertise in wireless communication are required for AI in 5G and beyond. Deep learning (DL) and machine learning (ML) are frequently employed for communications that require a massive number of inputs, outputs, and beamforming to support 5G and beyond. The DL, reinforcement learning, and CNN are utilized in channel coding for effectively using the air interface for 5G communications. Long short-term memory-type algorithms are used to foresee resource requirements for 5G slicing, enabling the operator to deliver diverse services over a single infrastructure.
1.3 Evolution of Smart Agriculture
Around the turn of the 20th century, the first real-world uses of so-called smart agricultural technology have been concentrated on the...
System requirements
File format: ePUB
Copy protection: Adobe-DRM (Digital Rights Management)
System requirements:
- Computer (Windows; MacOS X; Linux): Install the free reader Adobe Digital Editions prior to download (see eBook Help).
- Tablet/smartphone (Android; iOS): Install the free app Adobe Digital Editions or the app PocketBook before downloading (see eBook Help).
- E-reader: Bookeen, Kobo, Pocketbook, Sony, Tolino and many more (not Kindle).
The file format ePub works well for novels and non-fiction books – i.e., „flowing” text without complex layout. On an e-reader or smartphone, line and page breaks automatically adjust to fit the small displays.
This eBook uses Adobe-DRM, a „hard” copy protection. If the necessary requirements are not met, unfortunately you will not be able to open the eBook. You will therefore need to prepare your reading hardware before downloading.
Please note: We strongly recommend that you authorise using your personal Adobe ID after installation of any reading software.
For more information, see our ebook Help page.