Features:
- Examines explainability of algorithms from the aspect of generalizability and reliability.
- Reviews state-of-the-art explainability strategies related to the preprocessing algorithms.
- Provides explanations for specific evaluation metrics of various EO data processing and preprocessing algorithms.
- Discusses explainable ante-hoc and post-hoc approaches for EO data analysis.
- Serves as a foundational reference for developing future EO data processing strategies.
- Addresses the key challenges in making EO data processing algorithms interpretable and offers insights for the future of explainable EO data processing.
This book is intended for graduate students, researchers and academics in computer and data science, machine learning, and image processing, as well as professionals in geospatial data science using GIS and remote sensing in Earth and environmental sciences.
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