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Patch-Based Residual Networks for Compressively Sensed Hyperspectral Images Restruction

机译:基于补丁的残差网络用于压缩感知的高光谱图像重构

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Most traditional compressive sensing (CS) reconstruction methods suffer from the intensive computation caused by iterations. This paper aims at presenting a non-iterative algorithm to reconstruct hyperspectral images (HSI) from patch-based compressively sensed measurements. Our method contains two residual convolutional neural networks. One is reconstruction network for compressive sensing reconstruction and the other is deblocking network for removing the blocky effect, which is caused by patch-based sampling. The reconstruction network can efficiently reconstruct all the bands of HSI jointly, thus the spectral correlation is well preserved. In addition, the deblock performance is enhanced by combining more patches into a larger patch in the deblocking network. Experimental results verify that our method outperforms the state-of-the-art compressive sensing reconstruction methods with patch-based CS measurement.
机译:大多数传统的压缩感测(CS)重建方法都受到迭代引起的密集计算的困扰。本文旨在提出一种非迭代算法,用于从基于补丁的压缩感测测量结果中重建高光谱图像(HSI)。我们的方法包含两个残差卷积神经网络。一种是用于压缩感测重建的重建网络,另一种是用于消除由基于补丁的采样引起的块效应的解块网络。重建网络可以有效地共同重建HSI的所有频段,从而很好地保持频谱相关性。另外,通过将更多的补丁组合到解块网络中的较大补丁中,可以提高解块性能。实验结果证明,我们的方法优于基于补丁的CS测量的最新压缩感知重建方法。

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