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Instant Insights: Machine Vision Applications in Agriculture: Machine Vision Applications in Agriculture [Pehme köide]

(Un), , (CAAS), (Örebro University (Sweden)), , (Örebro University (Sweden)), (Umeå University (Sweden)), (AgroParisTech Paris Saclay University (France)), (University of Applied Sciences of Western Switzerland (Switzerland)), (CAAS)
  • Formaat: Paperback / softback, 190 pages, kõrgus x laius x paksus: 229x152x10 mm, kaal: 263 g, Color tables, photos and figures
  • Sari: Burleigh Dodds Science: Instant Insights 108
  • Ilmumisaeg: 29-Oct-2024
  • Kirjastus: Burleigh Dodds Science Publishing Limited
  • ISBN-10: 1835450083
  • ISBN-13: 9781835450086
  • Formaat: Paperback / softback, 190 pages, kõrgus x laius x paksus: 229x152x10 mm, kaal: 263 g, Color tables, photos and figures
  • Sari: Burleigh Dodds Science: Instant Insights 108
  • Ilmumisaeg: 29-Oct-2024
  • Kirjastus: Burleigh Dodds Science Publishing Limited
  • ISBN-10: 1835450083
  • ISBN-13: 9781835450086

This book provides a detailed overview on machine vision applications in agriculture, ranging from its use as a means of measuring soil texture and structure, to its use in precision livestock farming systems to improve livestock health and welfare.



This book features five peer-reviewed reviews on machine vision applications in agriculture.

The first chapter examines recent advances in machine vision technologies for the measurement of soil texture, structure and topography. The chapter also provides an overview of the basic principles of machine vision technologies, focussing on areas such as 3D surface modelling.

The second chapter considers the use of machine learning methods to classify multiple diseases across several different crop types. The chapter also explains how deep learning for image analysis and classification works.

The third chapter presents an overview of the use of machine learning for agri-robotics, including the main trends of the last decade. It also discusses the use of machine learning for data analysis and decision-making for perception and navigation.

The fourth chapter addresses the prospects of machine vision application in plant factories with artificial lighting. The chapter also summarises recent research utilising this technology, including plant growth monitoring, robot operation assistance and fruit grading.

The final chapter reviews advances in computer vision-based technologies for precision livestock farming. The chapter also reviews how automation in image analysis can promote smart management of livestock to improve health and welfare.

  • Reviews the use of machine vision technologies to measure soil texture, structure and topography
  • Provides an overview of recent advances in the use of machine learning in agri-food robotics
  • Considers the application of machine vision in indoor farming, focussing on its use in plant factories with artificial lighting
Chapter 1 - Advances in machine vision technologies for the measurement
of soil texture, structure and topography: Jean-Marc Gilliot, AgroParisTech
Paris Saclay University, France; and Ophélie Sauzet, University of Applied
Sciences of Western Switzerland, The Geneva Institute of Technology,
Architecture and Landscape (HEPIA), Soils and Substrates Group, Institute
Land-Nature- Environment (inTNE Institute), Switzerland;



1 Introduction
2 Basic principles
3 Case studies
4 Conclusion and future trends
5 Where to look for further information
6 Acknowledgements
7 References

Chapter taken from: Lobsey, C. and Biswas, A. (ed.), Advances in sensor
technology for sustainable crop production, Burleigh Dodds Science
Publishing, Cambridge, UK, 2023, (ISBN: 978 1 78676 977 0)

Chapter 2 - Using machine learning to identify and diagnose crop diseases:
Megan Long, John Innes Centre, UK;



1 Introduction* 2 A quick introduction to deep learning
3 Preparation of data for deep learning experiments
4 Crop disease classification
5 Different visualisation techniques
6 Hyperspectral imaging for early disease detection
7 Case study: identification and classification of diseases on wheat
8 Conclusion and future trends
9 Where to look for more information
10 References

Chapter taken from: Lobsey, C. and Biswas, A. (ed.), Advances in sensor
technology for sustainable crop production, Burleigh Dodds Science
Publishing, Cambridge, UK, 2023, (ISBN: 978 1 78676 977 0)

Chapter 3 - Advances in machine learning for agricultural robots: Polina
Kurtser, Örebro University and Umeå University, Sweden; Stephanie Lowry,
Örebro University, Sweden; and Ola Ringdahl, Umeå University, Sweden;



1 Introduction
2 Applications of machine learning in agri-robotics
3 Challenges
4 Integration and field-testing use-cases
5 Conclusion
6 Where to look for further information
7 References

Chapter taken from: van Henten, E. and Edan, Y. (ed.), Advances in agrifood
robotics, Burleigh Dodds Science Publishing, Cambridge, UK, 2024, (ISBN: 978
1 80146 277 8)

Chapter 4 - Application of machine vision in plant factories: Wei Ma and
Zhiwei Tian, Institute of Urban Agriculture, Chinese Academy of Agricultural
Sciences, China;



1 Introduction
2 Plant growth monitoring
3 Robot operation assistance
4 Fruit grading
5 The application of deep learning in the plant factory
6 Challenges faced by machine vision in plant factories
7 Conclusion
8 Declaration of competing interest
9 Where to look for further information
10 Acknowledgements
11 References

Chapter taken from: Kozai, T. and Hayashi, E. (ed.), Advances in plant
factories: New technologies in indoor vertical farming, Burleigh Dodds
Science Publishing, Cambridge, UK, 2023, (ISBN: 978 1 80146 316 4)

Chapter 5 - Machine vision techniques to monitor behaviour and health in
precision livestock farming: C. Arcidiacono and S. M. C. Porto, University of
Catania, Italy;



1 Introduction
2 Devices for data acquisition in computer visionbased systems
3 Animal species and tasks analysed in computer vision systems for precision
livestock farming
4 Key elements of computer visionbased systems: initialisation
5 Key elements of computer visionbased systems: tracking image segmentation
6 Key elements of computer visionbased systems: tracking video object
segmentation
7 Key elements of computer visionbased systems: feature extraction
8 Key elements of computer visionbased systems: pose estimation and behaviour
recognition
9 Case studies of precision livestock farming applications based on
traditional computer vision techniques
10 Advances in computer vision techniques: deep learning
11 Case studies of precision livestock farming applications based on deep
learning techniques
12 Conclusion
13 References

Chapter taken from: Berckmans, D. (ed.), Advances in precision livestock
farming, Burleigh Dodds Science Publishing, Cambridge, UK, 2022, (ISBN: 978 1
78676 471 3)