Photonics (Sep 2021)

SP-ILC: Concurrent Single-Pixel Imaging, Object Location, and Classification by Deep Learning

  • Zhe Yang,
  • Yu-Ming Bai,
  • Li-Da Sun,
  • Ke-Xin Huang,
  • Jun Liu,
  • Dong Ruan,
  • Jun-Lin Li

DOI
https://doi.org/10.3390/photonics8090400
Journal volume & issue
Vol. 8, no. 9
p. 400

Abstract

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We propose a concurrent single-pixel imaging, object location, and classification scheme based on deep learning (SP-ILC). We used multitask learning, developed a new loss function, and created a dataset suitable for this project. The dataset consists of scenes that contain different numbers of possibly overlapping objects of various sizes. The results we obtained show that SP-ILC runs concurrent processes to locate objects in a scene with a high degree of precision in order to produce high quality single-pixel images of the objects, and to accurately classify objects, all with a low sampling rate. SP-ILC has potential for effective use in remote sensing, medical diagnosis and treatment, security, and autonomous vehicle control.

Keywords