Explainable AI for earth observation: current methods, open challenges, and opportunities

Taskin, Gulsen and Aptoula, Erchan and Ertürk, Alp (2024) Explainable AI for earth observation: current methods, open challenges, and opportunities. In: Prasad, Saurabh and Chanussot, Jocelyn and Li, Jun, (eds.) Advances in Machine Learning and Image Analysis for GeoAI. Elsevier, Amsterdam, pp. 115-152. ISBN 9780443190780 (Print) 9780443190773 (Online)

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Abstract

Deep learning has taken by storm all fields involved in data analysis, including remote sensing for Earth observation. However, despite significant advances in terms of performance, its lack of explainability and interpretability, inherent to neural networks in general since their inception, remains a major source of criticism. Hence it comes as no surprise that the expansion of deep learning methods in remote sensing is accompanied by increasingly intensive efforts oriented toward addressing this drawback through the exploration of a wide spectrum of Explainable Artificial Intelligence techniques. This chapter, organized according to prominent Earth observation application fields, presents a panorama of the state-of-the-art in explainable remote sensing image analysis.
Item Type: Book Section / Chapter
Uncontrolled Keywords: Deep learning; Earth observation; Explainability; Interpretability; Remote sensing; XAI
Divisions: Faculty of Engineering and Natural Sciences
Depositing User: Erchan Aptoula
Date Deposited: 03 Sep 2024 12:25
Last Modified: 03 Sep 2024 12:25
URI: https://research.sabanciuniv.edu/id/eprint/49740

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