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使用具有自适应特征细化的混合变压器网络增强单像素成像重建

Enhancing single-pixel imaging reconstruction using hybrid transformer network with adaptive feature refinement.

作者信息

Lim JiaYou, Chiew YeongShiong, Phan Raphaël C-W, Chong Edwin K-P, Wang Xin

出版信息

Opt Express. 2024 Aug 26;32(18):32370-32386. doi: 10.1364/OE.523276.

DOI:10.1364/OE.523276
PMID:39573346
Abstract

Single-pixel imaging (SPI) is a novel imaging technique that applies to acquiring spatial information under low light, high absorption, and backscattering conditions. The existing reconstruction techniques, such as pattern analysis and signal-recovery algorithms, are inefficient due to their iterative behaviors and substantial computational requirements. In this paper, we address these issues by proposing a hybrid convolutional-transformer network for efficient and accurate SPI reconstruction. The proposed model has a universal pre-reconstruction layer that can reconstruct the single-pixel measurements collected using any SPI method. Moreover, we utilize the hierarchical encoder-decoder network in U-Net architectures and employ the proposed CONText AggregatIon NEtwoRk (Container) as the adaptive feature refinement module to adaptively leverage the significance of globally and locally enhanced features in SPI reconstruction. As such, we can improve the conventional SPI methods in terms of reconstruction speed and accuracy. Extensive experiments show that the proposed model achieve a significant performance improvement as compared to traditional SPI methods digitally and experimentally while increasing the reconstruction frame rates by threefold. Moreover, the proposed model also outperforms state-of-the-art deep learning models in performing single-pixel imaging reconstruction.

摘要

单像素成像(SPI)是一种新型成像技术,适用于在低光、高吸收和后向散射条件下获取空间信息。现有的重建技术,如模式分析和信号恢复算法,由于其迭代特性和大量的计算需求而效率低下。在本文中,我们通过提出一种混合卷积-变压器网络来解决这些问题,以实现高效且准确的SPI重建。所提出的模型具有一个通用的预重建层,该层可以重建使用任何SPI方法收集的单像素测量值。此外,我们在U-Net架构中利用分层编码器-解码器网络,并采用所提出的上下文聚合网络(Container)作为自适应特征细化模块,以在SPI重建中自适应地利用全局和局部增强特征的重要性。因此,我们可以在重建速度和准确性方面改进传统的SPI方法。大量实验表明,与传统的SPI方法相比,所提出的模型在数字和实验上均实现了显著的性能提升,同时将重建帧率提高了三倍。此外,所提出的模型在执行单像素成像重建方面也优于当前的深度学习模型。

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