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Improving Imaging Quality of Real-time Fourier Single-pixel Imaging via Deep Learning.

Saad RizviJie CaoKaiyu ZhangQun Hao
Published in: Sensors (Basel, Switzerland) (2019)
Fourier single pixel imaging (FSPI) is well known for reconstructing high quality images but only at the cost of long imaging time. For real-time applications, FSPI relies on under-sampled reconstructions, failing to provide high quality images. In order to improve imaging quality of real-time FSPI, a fast image reconstruction framework based on deep learning (DL) is proposed. More specifically, a deep convolutional autoencoder network with symmetric skip connection architecture for real time 96 × 96 imaging at very low sampling rates (5-8%) is employed. The network is trained on a large image set and is able to reconstruct diverse images unseen during training. The promising experimental results show that the proposed FSPI coupled with DL (termed DL-FSPI) outperforms conventional FSPI in terms of image quality at very low sampling rates.
Keyphrases
  • deep learning
  • high resolution
  • convolutional neural network
  • image quality
  • artificial intelligence
  • machine learning
  • mass spectrometry
  • magnetic resonance
  • quality improvement
  • body composition
  • resistance training