Entropy (Aug 2024)

Dimma: Semi-Supervised Low-Light Image Enhancement with Adaptive Dimming

  • Wojciech Kozłowski,
  • Michał Szachniewicz,
  • Michał Stypułkowski,
  • Maciej Zięba

DOI
https://doi.org/10.3390/e26090726
Journal volume & issue
Vol. 26, no. 9
p. 726

Abstract

Read online

Enhancing low-light images with natural colors poses a challenge due to camera processing variations and limited access to ground-truth lighting conditions. To address this, we propose Dimma, a semi-supervised approach that aligns with any camera using a small set of image pairs captured under extreme lighting conditions. Our method employs a convolutional mixture density network to replicate camera-specific noise present in dark images. We enhance results further by introducing a conditional UNet architecture based on user-provided lightness values. Trained on just a few real image pairs, Dimma achieves competitive results compared to fully supervised state-of-the-art methods trained on large datasets.

Keywords