LGFeb 21, 2024

Opening the Black-Box: A Systematic Review on Explainable AI in Remote Sensing

arXiv:2402.13791v22 citations
Originality Synthesis-oriented
AI Analysis

This review helps researchers in remote sensing by synthesizing existing knowledge, but it is incremental as it summarizes rather than introduces new methods.

The paper addresses the lack of a comprehensive overview of explainable AI methods in remote sensing by conducting a systematic review to identify key trends, novel approaches, and challenges, providing a complete summary of the state-of-the-art.

In recent years, black-box machine learning approaches have become a dominant modeling paradigm for knowledge extraction in remote sensing. Despite the potential benefits of uncovering the inner workings of these models with explainable AI, a comprehensive overview summarizing the explainable AI methods used and their objectives, findings, and challenges in remote sensing applications is still missing. In this paper, we address this gap by performing a systematic review to identify the key trends in the field and shed light on novel explainable AI approaches and emerging directions that tackle specific remote sensing challenges. We also reveal the common patterns of explanation interpretation, discuss the extracted scientific insights, and reflect on the approaches used for the evaluation of explainable AI methods. As such, our review provides a complete summary of the state-of-the-art of explainable AI in remote sensing. Further, we give a detailed outlook on the challenges and promising research directions, representing a basis for novel methodological development and a useful starting point for new researchers in the field.

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