Hybrid Refractive-Diffractive Lens with Reduced Chromatic and Geometric Aberrations and Learned Image Reconstruction

Sensors (Basel). 2022 Dec 30;23(1):415. doi: 10.3390/s23010415.

Abstract

In this paper, we present a hybrid refractive-diffractive lens that, when paired with a deep neural network-based image reconstruction, produces high-quality, real-world images with minimal artifacts, reaching a PSNR of 28 dB on the test set. Our diffractive element compensates for the off-axis aberrations of a single refractive element and has reduced chromatic aberrations across the visible light spectrum. We also describe our training set augmentation and novel quality criteria called "false edge level" (FEL), which validates that the neural network produces visually appealing images without artifacts under a wide range of ISO and exposure settings. Our quality criteria (FEL) enabled us to include real scene images without a corresponding ground truth in the training process.

Keywords: computational imaging; deep learning; diffractive-refractive hybrid optics; image reconstruction; lens optimization.

MeSH terms

  • Image Processing, Computer-Assisted
  • Lenses*
  • Light
  • Optics and Photonics*
  • Refraction, Ocular