EvoIQA - Explaining Image Distortions with Evolved White-Box Logic
arXiv cs.CV / 3/18/2026
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Key Points
- EvoIQA uses genetic programming to evolve explicit, human-readable formulas for image quality assessment, providing a white-box alternative to black-box deep learning models.
- It leverages a rich terminal set drawn from VSI, VIF, FSIM, and HaarPSI metrics to map structural, chromatic, and information-theoretic degradations into mathematical equations.
- The evolved models align well with human visual preferences and outperform traditional hand-crafted IQA metrics while achieving parity with state-of-the-art deep learning models like DB-CNN.
- The approach demonstrates that interpretability and competitive performance can coexist in IQA, potentially influencing how quality metrics are designed in practice.
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