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Computer Vision in Smart Agriculture and Crop Management
book

Computer Vision in Smart Agriculture and Crop Management

by Rajesh Kumar Dhanaraj, Balamurugan Balusamy, Prithi Samuel, Malathy Sathyamoorthy, Ali Kashif Bashir
December 2024
Intermediate to advanced
400 pages
10h 50m
English
Wiley-Scrivener
Content preview from Computer Vision in Smart Agriculture and Crop Management

Index

  • 3D models and point clouds, 276
  • Accurate irrigation, 324
  • Aerial surveillance, 275
  • Agricultural automation, 305, 306
  • Agricultural chemicals, 303
  • Agricultural productivity, 205, 209, 260
  • Agricultural robotics, 11
  • Agricultural system, 191
  • Agricultural visualization, 278
  • Agriculture, 221–226, 230, 232, 233, 249, 250, 251, 252
  • Agriculture technology, 303, 305, 306
  • Agronomic products, 12
  • AM2302 DHT11 sensor, 360
  • Anticipated, 130
  • Antimicrobial, 125
  • Applications of drones in agriculture, 286–288
  • APTs in SF and PA, 47–49
    • APT attacks on SF and PA, 48
      • anatomy of an APT attack on SF or PA, 48
        • further access (Expansion), 49
        • information stealth and sabotage (Exploitation), 49
        • penetration (Infiltration), 49
  • Artificial intelligence (AI), 57–58, 221, 222, 246
  • Augmented reality (AR), 58–59
  • Automated weeding, 304, 305, 306
  • Automation in agriculture, 305, 306
  • Automation techniques in irrigation and enabling farmers, 13
  • Autonomous, 21
  • Autonomous tractors, 350
  • Basic modeling, 78, 79
  • BH1750 FVI light sensor, 360
  • Big computing data, 18
  • Biodiversity, 126
  • Blockchain technology, 187, 188, 192
  • Blockchain technology in agriculture, 205, 206, 208
  • Building with a vision, 79
  • Capacity building and empowerment, 12
  • Case studies of drone applications, 300
  • Cellular systems, 267
  • Challenges in drone implementation, 298
  • Challenges in the implementation of technologies in the agricultural sector, 50
  • Classification, 109–117
    • classification using an adaptive neuro-fuzzy classification model ...
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Publisher Resources

ISBN: 9781394186297Purchase Link