Entropy-Driven Genetic Optimization for Deep-Feature-Guided Low-Light Image Enhancement
Journal:
arXiv
Published Date:
May 16, 2025
Abstract
Image enhancement methods often prioritize pixel level information,
overlooking the semantic features. We propose a novel, unsupervised,
fuzzy-inspired image enhancement framework guided by NSGA-II algorithm that
optimizes image brightness, contrast, and gamma parameters to achieve a balance
between visual quality and semantic fidelity. Central to our proposed method is
the use of a pre trained deep neural network as a feature extractor. To find
the best enhancement settings, we use a GPU-accelerated NSGA-II algorithm that
balances multiple objectives, namely, increasing image entropy, improving
perceptual similarity, and maintaining appropriate brightness. We further
improve the results by applying a local search phase to fine-tune the top
candidates from the genetic algorithm. Our approach operates entirely without
paired training data making it broadly applicable across domains with limited
or noisy labels. Quantitatively, our model achieves excellent performance with
average BRISQUE and NIQE scores of 19.82 and 3.652, respectively, in all
unpaired datasets. Qualitatively, enhanced images by our model exhibit
significantly improved visibility in shadowed regions, natural balance of
contrast and also preserve the richer fine detail without introducing noticable
artifacts. This work opens new directions for unsupervised image enhancement
where semantic consistency is critical.