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An End-to-End Multi-Scale Residual Reconstruction Network for Image Compressive Sensing

机译:端到端多尺度残差重构网络的图像压缩感知

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Recently, deep-learning based reconstruction methods have been proposed to improve recovery performance of compressive sensed image and overcome expensive time complexity drawbacks of iteration-based traditional algorithms. In this paper, we propose an end-to-end multi-scale residual convolutional neural network (CNN), dubbed MSRNet, to simulate image compressive sensing (CS) and inverse reconstruction process in real situation. In the reconstruction stage of MSRNet, we apply three parallel channels with different convolution kernel sizes to exploit different-scale feature information. Besides, residual learning is introduced to accelerate training process and enhance prediction accuracy of network. Moreover, different from generating CS measurements by random measurement matrix in previous methods, we integrate compressive sample process into MSRNet, which means measurement matrix can be adaptively learned by training the network. Experiments on benchmark datasets show our method outperforms other state-of-the-art algorithms by large margins and set a new level for CS reconstruction with competitive time complexity.
机译:近来,已经提出了基于深度学习的重建方法以提高压缩感测图像的恢复性能并克服基于迭代的传统算法的昂贵的时间复杂性缺点。在本文中,我们提出了一个端到端的多尺度残差卷积神经网络(CNN),称为MSRNet,以模拟真实情况下的图像压缩感知(CS)和逆重建过程。在MSRNet的重建阶段,我们使用三个具有不同卷积核大小的并行通道来利用不同尺度的特征信息。此外,引入残差学习以加快训练过程并提高网络的预测准确性。此外,与以往方法中通过随机测量矩阵生成CS测量不同,我们将压缩样本过程集成到MSRNet中,这意味着可以通过训练网络来自适应地学习测量矩阵。在基准数据集上进行的实验表明,我们的方法在很大程度上超越了其他最新算法,并为CS重建树立了新的高度,并具有极高的时间复杂度。

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