0
Your cart

Your cart is empty

Browse All Departments
  • All Departments
Price
  • R2,500 - R5,000 (2)
  • -
Status
Brand

Showing 1 - 2 of 2 matches in All Departments

Digital Mapping of Soil Landscape Parameters - Geospatial Analyses using Machine Learning and Geomatics (Hardcover, 1st ed.... Digital Mapping of Soil Landscape Parameters - Geospatial Analyses using Machine Learning and Geomatics (Hardcover, 1st ed. 2020)
Pradeep Kumar Garg, Rahul Dev Garg, Gaurav Shukla, Hari Shanker Srivastava
R4,130 Discovery Miles 41 300 Ships in 12 - 17 working days

This book addresses the mapping of soil-landscape parameters in the geospatial domain. It begins by discussing the fundamental concepts, and then explains how machine learning and geomatics can be applied for more efficient mapping and to improve our understanding and management of 'soil'. The judicious utilization of a piece of land is one of the biggest and most important current challenges, especially in light of the rapid global urbanization, which requires continuous monitoring of resource consumption. The book provides a clear overview of how machine learning can be used to analyze remote sensing data to monitor the key parameters, below, at, and above the surface. It not only offers insights into the approaches, but also allows readers to learn about the challenges and issues associated with the digital mapping of these parameters and to gain a better understanding of the selection of data to represent soil-landscape relationships as well as the complex and interconnected links between soil-landscape parameters under a range of soil and climatic conditions. Lastly, the book sheds light on using the network of satellite-based Earth observations to provide solutions toward smart farming and smart land management.

Digital Mapping of Soil Landscape Parameters - Geospatial Analyses using Machine Learning and Geomatics (Paperback, 1st ed.... Digital Mapping of Soil Landscape Parameters - Geospatial Analyses using Machine Learning and Geomatics (Paperback, 1st ed. 2020)
Pradeep Kumar Garg, Rahul Dev Garg, Gaurav Shukla, Hari Shanker Srivastava
R4,188 Discovery Miles 41 880 Ships in 10 - 15 working days

This book addresses the mapping of soil-landscape parameters in the geospatial domain. It begins by discussing the fundamental concepts, and then explains how machine learning and geomatics can be applied for more efficient mapping and to improve our understanding and management of 'soil'. The judicious utilization of a piece of land is one of the biggest and most important current challenges, especially in light of the rapid global urbanization, which requires continuous monitoring of resource consumption. The book provides a clear overview of how machine learning can be used to analyze remote sensing data to monitor the key parameters, below, at, and above the surface. It not only offers insights into the approaches, but also allows readers to learn about the challenges and issues associated with the digital mapping of these parameters and to gain a better understanding of the selection of data to represent soil-landscape relationships as well as the complex and interconnected links between soil-landscape parameters under a range of soil and climatic conditions. Lastly, the book sheds light on using the network of satellite-based Earth observations to provide solutions toward smart farming and smart land management.

Free Delivery
Pinterest Twitter Facebook Google+
You may like...
Not available
Koh-I-Noor Magic Set of Jumbo Triangular…
 (1)
R2,144 Discovery Miles 21 440
Poltek 1/100 Poultry Infra Red Lamp…
R320 Discovery Miles 3 200
BSwish Bwild Classic Marine Vibrator…
R779 R649 Discovery Miles 6 490
Anamino Beef Protein (250g)
R289 R189 Discovery Miles 1 890
Legend of Kay HD
Blu-ray disc  (1)
R347 Discovery Miles 3 470
Gym Towel & Bag
R95 R78 Discovery Miles 780
Casio LW-200-7AV Watch with 10-Year…
R999 R884 Discovery Miles 8 840
Mediabox NEO TV Stick (Black) - Netflix…
R1,189 Discovery Miles 11 890
ZA Pendant Decoration with Light and…
R199 Discovery Miles 1 990

 

Partners