, , , e.a.

Google Earth Engine and Artificial Intelligence for Earth Observation

Algorithms and Sustainable Applications

Specificaties
Paperback, blz. | Engels
Elsevier Science | e druk, 2025
ISBN13: 9780443273728
Rubricering
Elsevier Science e druk, 2025 9780443273728
Onderdeel van serie Earth Observation
Verwachte levertijd ongeveer 8 werkdagen

Samenvatting

Google Earth Engine and Artificial Intelligence for Earth Observation: Algorithms and Sustainable Applications explores a wide range of transformative data fusion techniques of Artificial Intelligence (AI) technologies applied to Google Earth Engine (GEE) techniques. It includes a wide range of scientific domains that can utilize remote sensing and geographic information systems (GIS) through detailed case studies. This book delves into the challenges of AI-driven tools and technologies for Earth observation data analysis, offering possible solutions and directly addressing current and upcoming needs within Earth observation. Google Earth Engine and Artificial Intelligence for Earth Observation: Algorithms and Sustainable Applications is a useful reference for geospatial scientists, remote sensing experts, and environmental scientists utilizing remote sensing to apply the latest AI techniques to data obtained from GEE for their research and teaching.

Specificaties

ISBN13:9780443273728
Taal:Engels
Bindwijze:Paperback

Inhoudsopgave

Section A - Introduction of AI-driven GEE cloud computinge<br>based remote sensing<br><br>1. Introduction to Google Earth Engine: A comprehensive workflow<br>2. Role of GEE in earth observation via remote sensing<br>3. A meta-analysis of Google Earth Engine in different scientific domains<br>4. Exploration of science of remote sensing and GIS with GEE<br>5. Cloud computing platformsebased remote sensing big data applications<br>6. Role of various machine and deep learning classification algorithms in Google Earth Engine: A comparative analysis<br>7. Google Earth Engine and artificial intelligence for SDGs<br><br>Section B - Emerging applications of GEE in Earth observation<br><br>8. Machine learning algorithms for air quality and air pollution monitoring using GEE<br>9. Investigation of surface water dynamics from the Landsat series using Google Earth Engine: A case study of Lake Bafa<br>10. Monitoring of land cover changes and dust events over the last 2 decades using Google Earth Engine: Hamoun wetland, Iran<br>11. Leveraging Google Earth Engine for improved groundwater management and sustainability<br>12. Customized spatial data cube of urban environs using Google Earth Engine (GEE)<br>13. A novel self-supervised framework for satellite image classification in the Google Earth Engine cloud computing platform<br>14. Assessment and monitoring of forest fire using vegetation indices and AI/ML techniques over google earth engine<br>15. Utilizing google earth engine and remote sensing with machine learning algorithms for assessing carbon stock loss and atmospheric impact through pre- and postfire analysis<br>16. Time series of Sentinel-1 and Sentinel-2 imagery for parcel-based crop-type classification using Random Forest algorithm and Google Earth Engine<br>17. Multi-temporal monitoring of impervious surface areas (ISA) changes in an Arctic setting, using ML, remote sensing data, and GEE<br>18. Estimation of snow or ice cover parameters using Google Earth engine and AI<br>19. Climate change challenges: The vital role of Google Earth Engine for sustainability of small islands in the archipelagic countries<br>20. Evaluating machine learning algorithms for classifying urban heterogeneous landscapes using GEE<br>21. Application of analytic hierarchy process for mapping flood vulnerability in Odisha using Google Earth Engine<br>22. Deep learning-based method for monitoring precision agriculture using Google Earth Engine<br>23. Role of AI and IoT in agricultural applications using Google Earth Engine<br>24. Mature and immature oil palm classification from image Sentinel-2 using Google earth engine (GEE)<br>25. Tracking land use and land cover changes in Ghaziabad district of India using machine learning and Google Earth engine<br><br>Section C - Challenges and future trends of GEE<br><br>26. Challenges and limitations for cloud-based platforms and integration with AI algorithms for earth observation data analytics<br>27. AI-driven tools and technologies for agriculture land use & land cover classification using earth observation data analytics

Rubrieken

    Personen

      Trefwoorden

        Google Earth Engine and Artificial Intelligence for Earth Observation