Tips! Jämför butikernas bokpriser och spara pengar!
Bokrecensioner
 
Artificial Intelligence Applied to Satellite-based Remote Sensing Data for Earth Observation   

Artificial Intelligence Applied to Satellite-based Remote Sensing Data for Earth Observation


Maria Pia Del Rosso Alessandro Sebastianelli Silvia Liberata Ullo

Hardback. Institution of Engineering and Technology 2021-08-01.
ISBN 9781839532122
Hitta bokens lägsta pris







Förlagets beskrivning

Earth observation (EO) involves the collection, analysis, and presentation of data in order to monitor and assess the status and changes in natural and built environments. This technology has many applications including weather forecasting, tracking biodiversity, measuring land-use change, monitoring and responding to natural disasters, managing natural resources, monitoring emerging diseases and health risks, and predicting, adapting to and mitigating climate change. This book shows how cutting-edge technologies such as artificial intelligence, including neural networks and deep learning, can be applied for processing satellite data for Earth observation. One of the objectives of this book is to explain how to develop a set of libraries for the implementation of artificial intelligence that could overcome some limits and encompass different aspects of research, ranging from data fusion to speckle filtering. In the first part, the authors introduce remote sensing concepts and deep neural networks and convolutional neural networks. In the second part of the book, they present the main tools used for image processing, several simulations and the data processing of specific case studies as well as the testing of related datasets. The book ends with conclusions, open questions and future works and perspectives for artificial intelligence techniques applied to future satellite missions. The book will be of interest to researchers focusing on using machine learning tools to process remote sensing data - particularly satellite data - for Earth observation. The book can also be used as a guide for researchers in many other fields of research who are interested in using ML techniques to process data and get reliable outcomes so they can make informed decisions for their specific objectives



Fler böcker av författarna

Liknande böcker

Recensioner

Den här boken har tyvärr inte några recensioner ännu. Om du redan läst boken, skriv en recension!



Recensera boken

Skriv en recension och dela dina åsikter med andra. Försök att fokusera på bokens innehåll. Läs våra instruktioner för mer information.

Artificial Intelligence Applied to Satellite-based Remote Sensing Data for Earth Observation



Ditt betyg:  1 2 3 4 5

Skriv in en rubrik för din recension (minst 2 ord):



Skriv in din recension i utrymmet nedan (max 1000 ord):



Recensionens språk: 

Ditt namn (Valfritt):



Din e-postadress (visas ej, används endast för verifiering):







Artificial Intelligence Applied to Satellite-based Remote Sensing Data for Earth Observation Din recension kommer att visas inom fem till sju arbetsdagar.

Artificial Intelligence Applied to Satellite-based Remote Sensing Data for Earth Observation Recensioner som inte följer våra instruktioner kommer inte att visas.







Bokrecensioner » Artificial Intelligence Applied to Satellite-based Remote Sensing Data for Earth Observation
Artificial Intelligence Applied to Satellite-based Remote Sensing Data for Earth Observation
Artificial Intelligence Applied to Satellite-based Remote Sensing Data for Earth Observation
  
Kategorier

Barn & ungdom

Databöcker

Deckare

Ekonomi & affärer

Filosofi & religion

Geografi & geologi

Hem & hushåll

Historia

Hobby & fritid

Kultur

Medicin & hälsa

Naturvetenskap

Psykologi & pedagogik

Samhälle & politik

Skönlitteratur

Språk

Uppslagsverk & ordböcker





Bokrecensioner | Hjälp & support | Om oss


Bokrecensioner Boganmeldelser Bokanmeldelser Kirja-arvostelut Critiques de Livres Buchrezensionen Critica Literaria Book reviews Book reviews Recensioni di Libri Boekrecensies Critica de Libros
Bokrecensioner