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Image Processing In Agriculture And Forestry Francisco Rovira Ms

  • SKU: BELL-55251772
Image Processing In Agriculture And Forestry Francisco Rovira Ms
$ 31.00 $ 45.00 (-31%)

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Image Processing In Agriculture And Forestry Francisco Rovira Ms instant download after payment.

Publisher: MDPI
File Extension: PDF
File size: 76.98 MB
Pages: 232
Author: Francisco Rovira Más, Gonzalo Martinsanz
ISBN: 9783038970989, 3038970980
Language: English
Year: 2018

Product desciption

Image Processing In Agriculture And Forestry Francisco Rovira Ms by Francisco Rovira Más, Gonzalo Martinsanz 9783038970989, 3038970980 instant download after payment.

Image processing in agriculture and forestry represents a challenge towards the automation of tasks for better performances. Agronomists, computer and robotics engineers, and agricultural machinery industry manufacturers now have at their disposal a book containing a collection of methods, procedures, designs, and descriptions at the technological forefront, which serves as an important support and aid for the implementation and development of their own ideas.
The book describes: (1) Applications (canopy on trees, aboveground biomass, phenotyping, chlorophyll, leaf area index, water and nutrient content, land cover change, soil properties, and secure autonomous navigation); (2) Imaging devices onboard robots, unmanned aerial vehicles (UAVs), and satellites operating at different spectral ranges (visible, infrared, hyper-multispectral bands, and radar), as well as guidelines for selecting machine vision systems in outdoor environments; and (3) (Specific computer vision methods (generic and convolutional neural networks, machine learning, specific segmentation approaches, vegetation indices, and three-dimensional (3D) reconstruction).

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