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Deep Neural Network Based Sparse Measurement Matrix for Image Compressed Sensing

机译:基于深神经网络的图像压缩感测的稀疏测量矩阵

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摘要

Gaussian random matrix (GRM) has been widely used to generate linear measurements in compressed sensing (CS) of natural images. However, there actually exist two disadvantages with GRM in practice. One is that GRM has large memory requirement and high computational complexity, which restrict the applications of CS. Another is that the CS measurements randomly obtained by GRM cannot provide sufficient reconstruction performances. In this paper, a Deep neural network based Sparse Measurement Matrix (DSMM) is learned by the proposed convolutional network to reduce the sampling computational complexity and improve the CS reconstruction performance. Two sub-networks are included in the proposed network, which are the sampling sub-network and the reconstruction sub-network. In the sampling sub-network, the sparsity and the normalization are both considered by the limitation of the storage and the computational complexity. In order to improve the CS reconstruction performance, a reconstruction sub-network are introduced to help enhance the sampling sub-network. So by the offline iterative training of the proposed end-to-end network, the DSMM is generated for accurate measurement and excellent reconstruction. Experimental results demonstrate that the proposed DSMM outperforms GRM greatly on representative CS reconstruction methods
机译:高斯随机矩阵(GRM)已被广泛用于在自然图像的压缩感测(CS)中产生线性测量。然而,实际上存在两个缺点在实践中。一个是GRM具有大的内存要求和高计算复杂性,限制了CS的应用。另一种是通过GRM随机获得的CS测量不能提供足够的重建性能。在本文中,由所提出的卷积网络学习了基于深度神经网络的稀疏测量矩阵(DSMM),以降低采样计算复杂性并提高CS重建性能。两个子网包括在所提出的网络中,该网络是采样子网和重建子网。在采样子网中,稀疏性和归一化都考虑了存储和计算复杂性的限制。为了提高CS重建性能,引入了重建子网,帮助增强采样子网络。因此,通过拟议的端到端网络的离线迭代培训,为DSMM进行了准确的测量和优异的重建。实验结果表明,拟议的DSMM优于GRM,大大在代表性CS重建方法上大大

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