Learning-based high-speed single-pixel imaging using a cyclic random mask
Posted on 2025-06-09 - 22:09
Single-pixel imaging (SPI) is an advanced computational imaging technique
that employs a simple bucket detector to capture object images without raster scanning. This
method offers advantages such as low cost, high sensitivity, and suitability for imaging in
low-light environments and specialized wavebands. However, SPI inherently suffers from a
limitation in imaging speed due to the need to acquire intensity fluctuation signals under a
large number of spatially modulated patterns. Here, we tackle this challenge by developing a
high-speed optical modulation system and an advanced reconstruction algorithm, which together
enhance the refresh rate of the optical modulation process while reducing the required sampling
ratios, thereby enabling high-speed SPI. Specifically, on the hardware side, we implement a
spinning disk modulation scheme with cyclic random patterns coded onto the disk, achieving a
modulation refresh rate of 1 MHz. On the algorithmic side, we propose a physics-enhanced deep
learning framework combined with a lightweight neural network, LiteUNet, which reduces the
required sampling rate to 10%. By combining these innovations, we experimentally demonstrate
high-speed SPI at 1926 fps with a spatial resolution of 71 × 73 pixels. This work offers an
effective solution to address the imaging speed bottleneck in SPI, paving the way for its practical
applications in fields such as microscopy and remote sensing.
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Lin, Shuo-Qi; Zhang, Yicheng; Wang, Haofan; Bo, Zunwang; Wang, Fei; Situ, Guohai (2025). Learning-based high-speed single-pixel imaging using a cyclic random mask. Optica Publishing Group. Collection. https://doi.org/10.6084/m9.figshare.c.7720376.v1