X-Fake: Juggling Utility Evaluation and Explanation of Simulated SAR Images
Zhongling Huang, Yihan Zhuang, Zipei Zhong, Feng Xu, Gong Cheng,, Junwei Han

TL;DR
This paper introduces X-Fake, a novel framework combining probabilistic evaluation and causal explanation to assess and improve the utility of simulated SAR images, addressing distribution discrepancies and enhancing data quality for deep learning.
Contribution
The paper presents the first unified framework for trustworthy utility evaluation and explanation of simulated SAR images, integrating probabilistic models and causal auto-encoders.
Findings
X-Fake outperforms existing IQA methods in utility assessment.
Counterfactual explanations reveal inauthentic details of simulated data.
Framework improves data utility for deep learning applications.
Abstract
SAR image simulation has attracted much attention due to its great potential to supplement the scarce training data for deep learning algorithms. Consequently, evaluating the quality of the simulated SAR image is crucial for practical applications. The current literature primarily uses image quality assessment techniques for evaluation that rely on human observers' perceptions. However, because of the unique imaging mechanism of SAR, these techniques may produce evaluation results that are not entirely valid. The distribution inconsistency between real and simulated data is the main obstacle that influences the utility of simulated SAR images. To this end, we propose a novel trustworthy utility evaluation framework with a counterfactual explanation for simulated SAR images for the first time, denoted as X-Fake. It unifies a probabilistic evaluator and a causal explainer to achieve a…
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Taxonomy
TopicsAnomaly Detection Techniques and Applications · Adversarial Robustness in Machine Learning · Artificial Intelligence in Healthcare and Education
MethodsSoftmax · Attention Is All You Need
