ICCV2019
lambda-Net: Reconstruct Hyperspectral Images From a Snapshot Measurement
Xin Miao, Xin Yuan, Yunchen Pu, Vassilis Athitsos
被引用 246 次
摘要
We propose the λ-net, which reconstructs hyperspectral images (e.g., with 24 spectral channels) from a single shot measurement. This task is usually termed snapshot compressive-spectral imaging (SCI), which enjoys low cost, low bandwidth and high-speed sensing rate to capture the three-dimensional (3D) signal i.e., (x, y, λ), using a 2D snapshot. Though proposed more than a decade ago, the poor quality and low-speed of reconstruction algorithms preclude wide applications of SCI. To address this challenge, in this paper, we develop a dual-stage generative model to reconstruct the desired 3D signal in SCI, dubbed λ-net. Results on both simulation and real datasets demonstrate the significant advantages of λ-net, which leads to >4dB improvement in PSNR on simulation data compared to the current state-of-the-art. Furthermore, λ-net can finish the reconstruction task within sub-seconds instead of hours taken by the most recently proposed DeSCI algorithm, thus speeding up the reconstruction >1000 times. † Part of this work was performed when Xin Miao was a summer intern at Nokia Bell Labs in 2018. * Corresponding author. The code is available at https://github.com/xinxinmiao/lambda-net .