Applied Sciences (Aug 2024)

Adaptive Truncation Threshold Determination for Multimode Fiber Single-Pixel Imaging

  • Yangyang Xiang,
  • Junhui Li,
  • Mingying Lan,
  • Le Yang,
  • Xingzhuo Hu,
  • Jianxin Ma,
  • Li Gao

DOI
https://doi.org/10.3390/app14166875
Journal volume & issue
Vol. 14, no. 16
p. 6875

Abstract

Read online

Truncated singular value decomposition (TSVD) is a popular recovery algorithm for multimode fiber single-pixel imaging (MMF-SPI), and it uses truncation thresholds to suppress noise influences. However, due to the sensitivity of MMF relative to stochastic disturbances, the threshold requires frequent re-determination as noise levels dynamically fluctuate. In response, we design an adaptive truncation threshold determination (ATTD) method for TSVD-based MMF-SPI in disturbed environments. Simulations and experiments reveal that ATTD approaches the performance of ideal clairvoyant benchmarks, and it corresponds to the best possible image recovery under certain noise levels and surpasses both traditional truncation threshold determination methods with less computation—fixed threshold and Stein’s unbiased risk estimator (SURE)—specifically under high noise levels. Moreover, target insensitivity is demonstrated via numerical simulations, and the robustness of the self-contained parameters is explored. Finally, we also compare and discuss the performance of TSVD-based MMF-SPI, which uses ATTD, and machine learning-based MMF-SPI, which uses diffusion models, to provide a comprehensive understanding of ATTD.

Keywords