Zheng Siming, Zhu Mingyu, Chen Mingliang
Computer Network Information Center, Chinese Academy of Sciences, Beijing 100190, China.
University of Chinese Academy of Sciences, Beijing 100049, China.
Entropy (Basel). 2023 Apr 12;25(4):649. doi: 10.3390/e25040649.
In order to capture the spatial-spectral (x,y,λ) information of the scene, various techniques have been proposed. Different from the widely used scanning-based methods, spectral snapshot compressive imaging (SCI) utilizes the idea of compressive sensing to compressively capture the 3D spatial-spectral data-cube in a single-shot 2D measurement and thus it is efficient, enjoying the advantages of high-speed and low bandwidth. However, , i.e., to retrieve the 3D cube from the 2D measurement, is an ill-posed problem and it is challenging to reconstruct high quality images. Previous works usually use 2D convolutions and preliminary attention to address this challenge. However, these networks and attention do not exactly extract spectral features. On the other hand, 3D convolutions can extract more features in a 3D cube, but increase computational cost significantly. To balance this trade-off, in this paper, we propose a hybrid multi-dimensional attention U-Net (HMDAU-Net) to reconstruct hyperspectral images from the 2D measurement in an end-to-end manner. HMDAU-Net integrates 3D and 2D convolutions in an encoder-decoder structure to fully utilize the abundant spectral information of hyperspectral images with a trade-off between performance and computational cost. Furthermore, are employed to highlight salient features and suppress the noise carried by the skip connections. Our proposed HMDAU-Net achieves superior performance over previous state-of-the-art reconstruction algorithms.
为了获取场景的空间光谱(x,y,λ)信息,已经提出了各种技术。与广泛使用的基于扫描的方法不同,光谱快照压缩成像(SCI)利用压缩感知的思想,在单次二维测量中压缩捕获三维空间光谱数据立方体,因此它效率高,具有高速和低带宽的优点。然而,即从二维测量中检索三维立方体,是一个不适定问题,重建高质量图像具有挑战性。以前的工作通常使用二维卷积和初步注意力来应对这一挑战。然而,这些网络和注意力并不能准确地提取光谱特征。另一方面,三维卷积可以在三维立方体中提取更多特征,但会显著增加计算成本。为了平衡这种权衡,在本文中,我们提出了一种混合多维注意力U-Net(HMDAU-Net),以端到端的方式从二维测量中重建高光谱图像。HMDAU-Net在编码器-解码器结构中集成了三维和二维卷积,以在性能和计算成本之间进行权衡的情况下充分利用高光谱图像丰富的光谱信息。此外,还采用了注意力机制来突出显著特征并抑制跳跃连接所携带的噪声。我们提出的HMDAU-Net比以前的先进重建算法具有更好的性能。