$S^{2}$S2-Transformer for Mask-Aware Hyperspectral Image Reconstruction

Jiamian Wang;Kunpeng Li;Yulun Zhang;Xin Yuan;Zhiqiang Tao
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Abstract

Snapshot compressive imaging (SCI) surges as a novel way of capturing hyperspectral images. It operates an optical encoder to compress the 3D data into a 2D measurement and adopts a software decoder for the signal reconstruction. Recently, a representative SCI set-up of coded aperture snapshot compressive imager (CASSI) with Transformer reconstruction backend remarks high-fidelity sensing performance. However, dominant spatial and spectral attention designs show limitations in hyperspectral modeling. The spatial attention values describe the inter-pixel correlation but overlook the across-spectra variation within each pixel. The spectral attention size is unscalable to the token spatial size and thus bottlenecks information allocation. Besides, CASSI entangles the spatial and spectral information into a 2D measurement, placing a barrier for information disentanglement and modeling. In addition, CASSI blocks the light with a physical binary mask, yielding the masked data loss. To tackle above challenges, we propose a spatial-spectral ($S^{2}$-) Transformer implemented by a paralleled attention design and a mask-aware learning strategy. First, we systematically explore pros and cons of different spatial (-spectral) attention designs, based on which we find performing both attentions in parallel well disentangles and models the blended information. Second, the masked pixels induce higher prediction difficulty and should be treated differently from unmasked ones. We adaptively prioritize the loss penalty attributing to the mask structure by referring to the mask-encoded prediction as an uncertainty estimator. We theoretically discuss the distinct convergence tendencies between masked/unmasked regions of the proposed learning strategy. Extensive experiments demonstrate that on average, the results of the proposed method are superior over the state-of-the-art methods. We empirically visualize and reason the behaviour of spatial and spectral attentions, and comprehensively examine the impact of the mask-aware learning, both of which advances the physics-driven deep network design for the reconstruction with CASSI.
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S2 -用于掩模感知高光谱图像重建的变压器
快照压缩成像(SCI)浪涌是一种捕获高光谱图像的新方法。它使用光学编码器将三维数据压缩成二维测量,并采用软件解码器进行信号重构。最近,一种具有代表性的编码孔径快照压缩成像仪(CASSI)的SCI设置具有变压器重构后端,具有高保真的传感性能。然而,主流的空间和光谱注意力设计在高光谱建模中显示出局限性。空间关注值描述了像元间的相关性,但忽略了每个像元内的跨光谱变化。频谱注意大小不能与令牌空间大小相匹配,从而成为信息分配的瓶颈。此外,CASSI将空间和光谱信息纠缠到二维测量中,为信息解纠缠和建模设置了障碍。此外,CASSI用物理二进制掩码阻挡光线,从而产生被掩码的数据丢失。为了解决上述挑战,我们提出了一种空间-频谱($S^{2}$-)转换器,该转换器由并行注意力设计和面具感知学习策略实现。首先,我们系统地探讨了不同空间(光谱)注意设计的优缺点,在此基础上,我们发现并行执行两种注意可以很好地解开和建模混合信息。其次,被遮挡的像素会导致更高的预测难度,应该与未被遮挡的像素区别对待。我们通过将掩码编码预测作为不确定性估计量,自适应地优先考虑由于掩码结构引起的损失惩罚。我们从理论上讨论了所提出的学习策略的屏蔽/非屏蔽区域之间不同的收敛趋势。大量的实验表明,平均而言,所提出的方法的结果优于最先进的方法。我们通过经验可视化和推理空间和光谱关注的行为,并全面检查掩模感知学习的影响,这两者都推进了物理驱动的深度网络设计,用于CASSI重建。
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