首页|基于PnP-ADMM SOC平台的单像素高分辨成像系统

基于PnP-ADMM SOC平台的单像素高分辨成像系统

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针对目前单像素成像系统实时成像环境压缩采样重构的噪声鲁棒性需求,实现了基于即插即用的交替方向乘子法(PnP-ADMM)非凸反演框架的单像素成像硬件系统.针对所建立PnP-ADMM反演重构算法采用3种降噪算子完成数值仿真,仿真结果表明,所建立单像素成像PnP-ADMM反演重构算法在采样率为12.50%及25.00%的条件下峰值信噪比可达24.82 dB及29.64 dB,结构相似性分别可达0.75及0.88.硬件系统实验结果表明,在采样率为25.00%的情况下,采用邻近算子、软阈值算子和全变分算子的PnP-ADMM片上系统(SOC)重构分辨率为256 pixel× 256 pixel的图像的耗时分别为0.369 s、0.303 s和0.681s,相比于仅使用ARM处理器分别提高了 141.9倍、172.1倍和80.3倍.在采样率为25.00%、成像距离为300cm条件下,所建立PnP-ADMM SOC单像素成像系统能够实现0.445~0.500 lp/mm的分辨率,具有较好的噪声抑制能力.
Single-Pixel High-Resolution Imaging System Based on PnP-ADMM SOC Platform
Objective Single-pixel imaging technology,as a novel computational imaging technique,features high sensitivity and interference resistance.By combining compressive sensing theory with single-pixel imaging technology,sampling time and storage resource consumption can be effectively reduced.However,in current research on FPGA-based single-pixel imaging reconstruction algorithms,researchers often struggle to achieve both algorithmic reconstruction quality and reconstruction speed.We introduce the alternating direction method of multipliers based on plug-and-play(PnP-ADMM)into FPGA-based single-pixel imaging systems to enhance both image reconstruction quality and speed.The numerical simulations and experiments demonstrate that the established PnP-ADMM system on chip(SOC)single-pixel imaging system can accurately reconstruct target scenes and preserve image details,with strong noise suppression capacity.Methods By incorporating the PnP-ADMM algorithm into a single-pixel imaging system,we break down the original large-scale optimization problem into multiple sub-problems to increase expedited computation speed.The algorithm also adopts a plug-and-play framework to introduce denoising operators to denoise reconstructed signals during algorithm iterations.Furthermore,we design a hardware structure for the PnP-ADMM algorithm,leveraging FPGA platforms to accelerate calculation processing.Additionally,based on block-based compressive sensing,we process target images in blocks,further speeding up calculation processing while effectively conserving hardware resource consumption.Results and Discussions The numerical simulation results demonstrate that the established PnP-ADMM algorithm achieves a PSNR of 24.82 dB and 29.64 dB for reconstructed images at sampling rates of 12.50%and 25.00%,respectively,while the SSIM reaches 0.75 and 0.88,respectively(Fig.5).The test result of the designed hardware structure for the PnP-ADMM algorithm reveals that at a sampling rate of 25.00%,the duration of reconstructing a 256 pixel× 256 pixel image by PnP-ADMM SOC using proximity operator,soft thresholding operator,and total variation operator is 0.369 s,0.303 s,and 0.681 s,respectively(Table 2).This represents an improvement of 141.9 times,172.1 times,and 80.3 times respectively compared to using only an ARM processor(Table 2).Furthermore,the imaging experiments for validation are completed by constructing a single-pixel experimental platform.The experimental results confirm that under the imaging conditions at a distance of 300 cm,the PnP-ADMM SOC single-pixel imaging system achieves a resolution of 0.445-0.500 lp/mm for images with 256 pixel× 256 pixel resolution(Fig.9).Conclusions We apply the PnP-ADMM algorithm to FPGA-based single-pixel imaging systems to enhance both image reconstruction quality and speed on the FPGA platform.Numerical simulation results demonstrate that the image quality reconstructed using the proposed PnP-ADMM inversion reconstruction algorithm surpasses that of the WQR-OMP algorithm and TVAL3 algorithm.The test results of the designed hardware acceleration structure for the PnP-ADMM algorithm show that this structure effectively accelerates the algorithm's computation processing.Furthermore,the establishment of a single-pixel experimental platform confirms that the PnP-ADMM SOC single-pixel imaging system can accurately reconstruct target scenes and preserve target details,with strong noise suppression capability.

imaging systemsingle-pixel imagingalternating direction method of multipliersplug-and-playFPGA

黎淼、张玲强、王玺、王晨燕、陈朝锐、郭兆辉、赵雪吟

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重庆邮电大学光电工程学院,重庆 400065

成像系统 单像素成像 交替方向乘子法 即插即用 FPGA

2024

光学学报
中国光学学会 中国科学院上海光学精密机械研究所

光学学报

CSTPCD北大核心
影响因子:1.931
ISSN:0253-2239
年,卷(期):2024.44(16)