On the Effectiveness of Methods and Metrics for Explainable AI in Remote Sensing Image Scene Classification
Jonas Klotz, Tom Burgert, Beg\"um Demir

TL;DR
This paper critically evaluates explanation methods and metrics for explainable AI in remote sensing scene classification, revealing limitations and providing guidelines for effective application in RS contexts.
Contribution
It offers a comprehensive analysis of ten explanation metrics and five feature attribution methods tailored for remote sensing, highlighting their limitations and proposing practical guidelines.
Findings
Perturbation-based methods depend heavily on baselines and scene characteristics.
Gradient-based methods struggle with multi-label images.
Some relevance propagation methods distribute relevance unevenly.
Abstract
The development of explainable artificial intelligence (xAI) methods for scene classification problems has attracted great attention in remote sensing (RS). Most xAI methods and the related evaluation metrics in RS are initially developed for natural images considered in computer vision (CV), and their direct usage in RS may not be suitable. To address this issue, in this paper, we investigate the effectiveness of explanation methods and metrics in the context of RS image scene classification. In detail, we methodologically and experimentally analyze ten explanation metrics spanning five categories (faithfulness, robustness, localization, complexity, randomization), applied to five established feature attribution methods (Occlusion, LIME, GradCAM, LRP, and DeepLIFT) across three RS datasets. Our methodological analysis identifies key limitations in both explanation methods and metrics.…
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Taxonomy
TopicsExplainable Artificial Intelligence (XAI) · Advanced Neural Network Applications · Remote-Sensing Image Classification
