神经结构搜索生成的实时离轴定量相位成像相位检索网络

IF 2.3 3区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Xin Shu;Mengxuan Niu;Yi Zhang;Wei Luo;Renjie Zhou
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引用次数: 0

摘要

在离轴定量相位成像(QPI)中,人工神经网络的相位恢复与像差补偿和相位展开是近年来研究的热点。然而,所涉及的神经网络架构大多未经优化且效率低下,推理速度低,阻碍了实时成像的实现。在此,我们提出了一个神经结构搜索(NAS)生成的相位检索网络(NAS- prnet),用于准确和快速的相位检索。NAS- prnet是一种编码器-解码器风格的神经网络,通过NAS从一个大的神经网络架构搜索空间中自动发现。通过对SparseMask的可微NAS方案进行改进,通过梯度下降学习到最优的跳跃连接。具体来说,我们实现了MobileNet-v2作为编码器,并定义了一个综合损耗,其中包含相位重建损耗和网络稀疏性损耗。通过对生物细胞干涉图的测试,NAS-PRNet实现了高保真相位检索,峰值信噪比(PSNR)达到36.7 dB,结构相似性(SSIM)达到86.6%。值得注意的是,NAS-PRNet仅在31毫秒内实现了相位检索,比最新的Mamba-UNet加速了15倍,而相位检索精度仅略低。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Neural Architecture Search Generated Phase Retrieval Net for Real-Time Off-Axis Quantitative Phase Imaging
In off-axis Quantitative Phase Imaging (QPI), artificial neural networks have been recently applied for phase retrieval with aberration compensation and phase unwrapping. However, the involved neural network architectures are largely unoptimized and inefficient with low inference speed, which hinders the realization of real-time imaging. Here, we propose a Neural Architecture Search (NAS) generated Phase Retrieval Net (NAS-PRNet) for accurate and fast phase retrieval. NAS-PRNet is an encoder-decoder style neural network, automatically found from a large neural network architecture search space through NAS. By modifying the differentiable NAS scheme from SparseMask, we learn the optimized skip connections through gradient descent. Specifically, we implement MobileNet-v2 as the encoder and define a synthesized loss that incorporates phase reconstruction loss and network sparsity loss. NAS-PRNet has achieved high-fidelity phase retrieval by achieving a peak Signal-to-Noise Ratio (PSNR) of 36.7 dB and a Structural SIMilarity (SSIM) of 86.6% as tested on interferograms of biological cells. Notably, NAS-PRNet achieves phase retrieval in only 31 ms, representing $15\times $ speedup over the most recent Mamba-UNet with only a slightly lower phase retrieval accuracy.
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来源期刊
IEEE Photonics Technology Letters
IEEE Photonics Technology Letters 工程技术-工程:电子与电气
CiteScore
5.00
自引率
3.80%
发文量
404
审稿时长
2.0 months
期刊介绍: IEEE Photonics Technology Letters addresses all aspects of the IEEE Photonics Society Constitutional Field of Interest with emphasis on photonic/lightwave components and applications, laser physics and systems and laser/electro-optics technology. Examples of subject areas for the above areas of concentration are integrated optic and optoelectronic devices, high-power laser arrays (e.g. diode, CO2), free electron lasers, solid, state lasers, laser materials'' interactions and femtosecond laser techniques. The letters journal publishes engineering, applied physics and physics oriented papers. Emphasis is on rapid publication of timely manuscripts. A goal is to provide a focal point of quality engineering-oriented papers in the electro-optics field not found in other rapid-publication journals.
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