论文标题
JSRNN:高质量图像压缩感测的关节采样和重建神经网络
JSRNN: Joint Sampling and Reconstruction Neural Networks for High Quality Image Compressed Sensing
论文作者
论文摘要
大多数基于深度学习(DL)的压缩传感(DCS)算法采用单个神经网络进行信号重建,并且无法共同考虑重建采样操作的影响。在本文中,我们提出了统一的框架,该框架共同考虑了基于精心设计的级联神经网络的图像压缩传感的采样和重建过程。提议的框架中包括两个子网络,即采样子网络和重建子网络。在采样子网络中,使用自适应的完整连接层,而不是传统的随机矩阵来模仿采样操作员。在重建子网络中,将堆叠的Denoising AutoCoder(SDA)和卷积神经网络(CNN)组合的级联网络旨在重建信号。 SDA用于解决信号映射问题,并最初重建信号。此外,CNN用于完全恢复图像的结构和纹理特征,以获得更好的重建性能。广泛的实验表明,该框架的表现优于许多其他最先进的方法,尤其是在较低的采样率下。
Most Deep Learning (DL) based Compressed Sensing (DCS) algorithms adopt a single neural network for signal reconstruction, and fail to jointly consider the influences of the sampling operation for reconstruction. In this paper, we propose unified framework, which jointly considers the sampling and reconstruction process for image compressive sensing based on well-designed cascade neural networks. Two sub-networks, which are the sampling sub-network and the reconstruction sub-network, are included in the proposed framework. In the sampling sub-network, an adaptive full connected layer instead of the traditional random matrix is used to mimic the sampling operator. In the reconstruction sub-network, a cascade network combining stacked denoising autoencoder (SDA) and convolutional neural network (CNN) is designed to reconstruct signals. The SDA is used to solve the signal mapping problem and the signals are initially reconstructed. Furthermore, CNN is used to fully recover the structure and texture features of the image to obtain better reconstruction performance. Extensive experiments show that this framework outperforms many other state-of-the-art methods, especially at low sampling rates.