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arxiv:2509.20878

The Unanticipated Asymmetry Between Perceptual Optimization and Assessment

Published on Sep 25
· Submitted by Tianhe Wu on Sep 26
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Abstract

The study reveals an asymmetry between perceptual optimization and image quality assessment, showing that effective IQA metrics are not always suitable for perceptual optimization, especially under adversarial training, and highlights the importance of discriminator design in optimization.

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Perceptual optimization is primarily driven by the fidelity objective, which enforces both semantic consistency and overall visual realism, while the adversarial objective provides complementary refinement by enhancing perceptual sharpness and fine-grained detail. Despite their central role, the correlation between their effectiveness as optimization objectives and their capability as image quality assessment (IQA) metrics remains underexplored. In this work, we conduct a systematic analysis and reveal an unanticipated asymmetry between perceptual optimization and assessment: fidelity metrics that excel in IQA are not necessarily effective for perceptual optimization, with this misalignment emerging more distinctly under adversarial training. In addition, while discriminators effectively suppress artifacts during optimization, their learned representations offer only limited benefits when reused as backbone initializations for IQA models. Beyond this asymmetry, our findings further demonstrate that discriminator design plays a decisive role in shaping optimization, with patch-level and convolutional architectures providing more faithful detail reconstruction than vanilla or Transformer-based alternatives. These insights advance the understanding of loss function design and its connection to IQA transferability, paving the way for more principled approaches to perceptual optimization.

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This work systematically examines the unanticipated asymmetry between perceptual optimization and assessment.

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