Fr. 189.00

Multimodal Remote Sensing Fusion and Classification - Algorithms and Applications

English · Paperback / Softback

Will be released 01.10.2025

Description

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Multimodal Remote Sensing Data Fusion for Classification: Algorithms and Applications offers a comprehensive overview of Earth observation data fusion, focusing on multimodal remote sensing. It presents state-of-the-art algorithms and practical applications that enhance understanding of Earth's dynamic processes. Through detailed analysis, case studies, and practical examples, this book equips readers with the necessary tools to effectively utilize multimodal data fusion for land cover and land use classification, as well as environmental monitoring, making it an invaluable resource for those in remote sensing and Earth sciences.

Furthermore, the book is tailored for Masters and Doctorate students, scientists, and professionals in remote sensing, geography, and Earth sciences. It delves into the integration and analysis of multimodal remote sensing data, offering insights into sustainable solutions for environmental challenges. This comprehensive coverage ensures readers are well-versed in the cutting-edge techniques and methodologies required for advanced Earth observation and classification tasks.

List of contents










1. Understanding Multimodal Remote Sensing
2. Multimodal Data Processing
3. Fusion Techniques for Multimodal Remote Sensing
4. Multisensor Fusion
5. Classification Algorithms for Multimodal Remote Sensing
6. Change Detection and Monitoring
7. Applications in Carbon Neutrality
8. Applications in Disaster Monitoring
9. Applications in Urban Sensing for Smart Cities
10. Future Perspectives and Emerging Technologies

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