Coded aperture compressive temporal imaging via unsupervised lightweight local-global networks with geometric characteristics.

Applied optics Pub Date : 2024-05-20 DOI:10.1364/AO.510414
Youran Ge, Gangrong Qu, Yuhao Huang, Duo Liu
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Abstract

Coded aperture compressive temporal imaging (CACTI) utilizes compressive sensing (CS) theory to compress three dimensional (3D) signals into 2D measurements for sampling in a single snapshot measurement, which in turn acquires high-dimensional (HD) visual signals. To solve the problems of low quality and slow runtime often encountered in reconstruction, deep learning has become the mainstream for signal reconstruction and has shown superior performance. Currently, however, impressive networks are typically supervised networks with large-sized models and require vast training sets that can be difficult to obtain or expensive. This limits their application in real optical imaging systems. In this paper, we propose a lightweight reconstruction network that recovers HD signals only from compressed measurements with noise and design a block consisting of convolution to extract and fuse local and global features, stacking multiple features to form a lightweight architecture. In addition, we also obtain unsupervised loss functions based on the geometric characteristics of the signal to guarantee the powerful generalization capability of the network in order to approximate the reconstruction process of real optical systems. Experimental results show that our proposed network significantly reduces the model size and not only has high performance in recovering dynamic scenes, but the unsupervised video reconstruction network can approximate its supervised version in terms of reconstruction performance.

通过具有几何特征的无监督轻量级局部-全局网络进行编码孔径压缩时空成像。
编码孔径压缩时空成像(CACTI)利用压缩传感(CS)理论,将三维(3D)信号压缩成二维测量值,以便在单次快照测量中进行采样,进而获取高维(HD)视觉信号。为了解决重构过程中经常遇到的低质量和运行速度慢的问题,深度学习已成为信号重构的主流,并显示出卓越的性能。但目前,令人印象深刻的网络通常是具有大型模型的监督网络,需要大量的训练集,而这些训练集可能很难获得或价格昂贵。这限制了它们在实际光学成像系统中的应用。在本文中,我们提出了一种轻量级重建网络,该网络只从带噪声的压缩测量中恢复高清信号,并设计了一个由卷积组成的区块来提取和融合局部和全局特征,将多个特征堆叠起来形成一个轻量级架构。此外,我们还根据信号的几何特征获得了无监督损失函数,以保证网络具有强大的泛化能力,从而逼近真实光学系统的重建过程。实验结果表明,我们提出的网络大大减小了模型大小,不仅在恢复动态场景方面具有很高的性能,而且无监督视频重建网络在重建性能方面可以逼近其有监督版本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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