Image reconstruction for sub-sampled atomic force microscopy images using deep neural networks.

Journal: Micron (Oxford, England : 1993)
Published Date:

Abstract

Undersampling is a simple but efficient way to increase the imaging rate of atomic force microscopy (AFM). One major challenge in this approach is that of accurate image reconstruction from a limited number of measurements. In this work, we present a deep neural network (DNN) approach to reconstruct μ-path sub-sampled AFM images. Our network consists of two sub-networks, namely a RED-net and a U-net, in series, and is trained end-to-end from random images masked according to μ-path sub-sampling patterns. Using both simulation and experiments, the DNN is shown to yield better image quality than three existing optimization-based methods for reconstruction: basis pursuit, a variant of total variation minimization, and inpainting.

Authors

  • Yufan Luo
    Division of Systems Engineering, Boston University, Boston, MA 02215, USA. Electronic address: luoyuf@bu.edu.
  • Sean B Andersson
    Division of Systems Engineering, Boston University, Boston, MA 02215, USA; Department of Mechanical Engineering, Boston University, Boston, MA 02215, USA. Electronic address: sanderss@bu.edu.