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Reproducible Deep Compressive Sensing

Collection of source code for deep learning-based compressive sensing (DCS). Links for source code, pdf, doi are available. Related works are classified based on the sampling matrix type (frame-based/block-based), sampling scale (single scale, multi-scale), and deep learning platform.

Code for other than sampling, reconstruction of image/video are given in the Other section.

P/s: If you know any source code please let me know.

Block-based DCS

Single-Scale Sensing

  • TCS-NET:[code]

    • H. Gan et al., From Patch to Pixel: A Transformer-based Hierarchical Framework for Compressive Image Sensing, TCI 2023
  • TransCS: [code]

    • M. Shen et al., TransCS: A Transformer-Based Hybrid Architecture for Image Compressed Sensing, IEEE Trans Image Process, 2022.
  • TCS: [code]

    • M. B. Lorenzana et al., Transfomer compressed sensing via global image tokens, IEEE International Conference on Image Processing, ICIP 2022.
  • IBM_CS: [code]

    • B. Lee et al., Information Bottleneck Measurement for Compressed Sensing Image Reconstruction, IEEE Signal Processing Letter 2022.
  • RK-CSNet: [code] [Pytorch]

    • R. Zheng et al, "Runge-Kutta Convolutional Compressed Sensing Network," ECCV 2022.
  • TDCN: [code] [Pytorch]

    • R. Lu and K. Ye, "Tree-structured Dilated Convolutional Networks for Image Compressed Sensing," IEEE Access, 2022.
  • MTC-CSNET: [code] [Pytorch]

    • MTC-CSNet: Marrying Transformer and Convolution for Image Compressed Sensing, 2022.
  • CASNet: [code] [Pytorch]

    • B. Chen and J. Zhang, "Content-aware Scalable Deep Compressed Sensing," IEEE Trans. Image Processing, 2022.
  • NL-CSNet: [code] [PyTorch]

    • W. Cui et al, Image Compressed Sensing Using Non-local Neural Network, Transaction on Multimedia, 2022.
  • MADUN: [code] [PyTorch]

    • J. Song et al. Memory-Augmented Deep Unfolding Network for Compressive Sensing (ACM MM 2021)
  • SP_DCS: Single pixel DCS [code] [PyTorch]

    • Mengyu Jia et al . Single pixel imaging via unsupervised deep compressive sensing with collaborative sparsity in discretized feature space, Journal of Bio photonic, 2022.
  • AMPD-Net:[Code] [PyTorch]

    • Z. Zhang, Y. Liu, J. Liu, F. Wen, C. Zhu, "AMP-Net: Denoising based Deep Unfolding for Compressive Image Sensing," IEEE Transaction on Image Processing, 2021.
  • DRCS-SR [code]

    • H. Kasem, M. Selim, E. Mohamed, A. Hussein, "DRCS-SR-Deep-Robust-Compressed-Sensing-for-Single-Image-Super-Resolution," IEEE Access, 2020.
  • OPINE-Net [Code] [Pytorch]

    • Jian Zhang, Chen Zhao, Wen Gao "Optimization-Inspired Compact Deep Compressive Sensing", IEEE Journal of Selected Topics in Signal Processing (JSTSP), vol. 14, no. 4, pp. 765-774, May 2020. [pdf]
  • DUF-WL1:[Code]

    • J. Zhang, Y. Li, Z. Yu, Z. Gu, Y. Cheng, H. Gong, "Deep Unfolding With Weighted ℓ₂ Minimization for Compressive Sensing," IEEE Internet of Thing Journal, 2020.
  • TGDOF [Code][Matlab]

    • R. Liu, Y. ZHang, S. Cheng, X. Fan, Z. Luo, "A theoretically guaranteed optimization framework for robust compressive sensing MRI," Proceeding of the AAAI Conference on Artifical Intelligence, 2019.
  • DNN-CS-STM32-MCU [Code] [Tensorflow]

    • Lab. of Statistical Signal Processing - Deep Neural Network for CS based signal reconstruction on STM32 MCU board
  • TIP-CSNet [DOI] [Code][Matconvnet] [Code] [Pytorch]

    • W. Shi et al., Image Compressed Sensing using Convolutional Neural Network, IEEE Trans. Image Process, 2019.
  • LapCSNet [PDF] [Code][Matconvnet]

    • Wenxue Cui, Heyao Xu, Xinwei Gao, Shengping Zhang, Feng Jiang, Debin Zhao, "An efficient deep convolutional laplacian pyramid architecture for CS reconstruction at low sampling ratios," 2018.
  • Perceptual-CS [[Code]] (https://github.com/jiang-du/Perceptual-CS) [DOI] [Caffe]

    • J. Du, X. Xie, C. Wang, and G. Shi, "Perceptual Compressive Sensing," Chinese Conference on Pattern Recognition and Computer Vision (PRCV), pp. 268 - 279, 2018.
  • ISTA-Net [Code] [PDF] [Tensorflow]

    • Z. Jian and G. Bernard, "ISTA-Net: Interpretable Optimization-Inspired Deep Network for Image Compressive Sensing", IEEE International Conference on Computer Vision and Pattern Recognition, 2018.
  • CSNet [Code] [Code-ReImp] [PDF] [DOI] [Matconvnet] [Code-ReImp-Pytorch]

    • W. Shi, F. Jaing, S. Zhang, and D. Zhao, "Deep networks for compressed image sensing", IEEE International Conference on Multimedia and Expo (ICME), 2017.
  • DeepInv [Code-ReImp] [PDF] [DOI]

    • A. Mousavi, R. G. Baraniuk et al., "Learning to invert: Signal recovery via Deep Convolutional Networks," IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP) 2017.
  • DBCS [Code] [PDF] [DOI] [Matlab]

    • A. Adler, D.Boublil, and M. Zibulevsky, "Block-based compressed sensing of images via deep learning,", IEEE International Workshop on Multimedia Signal Processing (MMSP), 2017.
  • DR2Net [Code] [Code] [PDF] [Caffe]

    • H. Yao, F. Dai, D. Zhang, Y. Ma, S. Zhang, Y. Zhang, and Q. Tian, "DR2-net: Deep residual reconstruction network for image compressive sensing", arXiv:1702.05743, 2017.
  • CS-CAE [Code] [PDF] [Theanos]

    • S. Schneider, "A deep learning approach to compressive sensing with convolutional autoencoders," tech. report, 2016.
  • ReconNet [Code] [Code] [PDF] [DOI] [Caffe]

    • K. Kulkarni, S. Lohi, P. Turaga, R. Kerviche, A. Ashok, "ReconNet: Non-Iterative Reconstruction of Images from Compressively Sensed Measurements," IEEE International Conference on Computer Vision and Pattern Recognition (CVPR), 2016.

Multi-Scale Sensing

  • STDIP: [code]

    • Y. Zhong et al, Image Compressed Sensing Reconstruction via Deep Image Prior With Structure-Texture Decomposition, IEEE Signal Processing Letter 2023.
  • AMS-NET: [code] [Python]

    • AMS-Net: Adaptive Multi-Scale Network for Image Compressive Sensing, IEEE Transaction on Multimedia, 2022.
  • MS-DCI [DOI] [PDF] [Code][Matconvnet]

    • T. N. Canh et al., Multi-scale Deep Compressive Imaging, arxiv 2020.
  • Scalable Compressed Sensing Network (SCSNet) [DOI] [PDF] [Code][Matconvnet]

    • W. Shi et al., Scalable Convolutional Neural Network for Image Compressed Sensing, CVPR 2019.
  • DoC-DCS [Code] [PDF] [MatcovnNet]

    • T. N. Canh and B. Jeon, "Difference of Convolution for Deep Compressive Sensing," IEEE International Conference on Imave Processing (ICIP), 2019.
  • DCSNet [Code] [PDF] [MatcovnNet]

    • T. N. Canh and B. Jeon, "Multi-Scale Deep Compressive Sensing Network," IEEE International Conference on Visual Communication and Imave Processing (VCIP), 2018.
  • MS-CSNet [Code] [DOI] [MatconvNet]

    • W. Shi, F. Jiang, S. Liu, D. Zhao, "Multi-Scale Deep Networks for Image Compressed Sensing," IEEE International Conference on Image Processing (ICIP), 2018.
  • LAPRAN [Code] [PDF] [PyTorch]

    • K. Xu, Z. Zhang, and F. Ren, "LAPRAN: A Scalable Laplacian Pyramid Reconstructive Adversarial Network for Flexible Compressive Sensing Reconstruction," arXiv:1807.09388.

Adaptive Sensing

  • AMS-NET: [code] [Python]
    • AMS-Net: Adaptive Multi-Scale Network for Image Compressive Sensing, IEEE Transaction on Multimedia, 2022.
  • ACSNet [Code]
    • L. Zhong, S. Wan and L. Xie, "Adaptive Compressed Sensing imaging algorithm based on Deep Neural Network", Journal of Pysics Conference.

Frame-based DCS

  • DeepFlatCam[Code] [PDF]

    • Thuong Nguyen Canh and Hajime Nagahara, "Deep Compressive Sensing for Visual Privacy Protection in FlatCam Imaging," IEEE the International Conference on Computer Vision Workshop, 2019.)
  • MD-Recon-Net[Code] [PDF]

    • Maosong Ran, Wenjun Xia, Yongqiang Huang, Zexin Lu, Peng Bao, Yan Liu, Huaiqiang Sun, Jiliu Zhou, and Yi Zhang, "MD-Recon-Net: a parallel dual-domain convolutional neural network for compressed sensing MRI," IEEE Transactions on Radiation and Plasma Medical Sciences, DOI: 10.1109/TRPMS.2020.2991877, online, 2020.
  • CS-MRI-GAN[Code] [PDF]

    • P. Deora, B. Váudeva, S. Bhattacharya, P. M. Pradhan, "Structure Preserving Compressive Sensing MRI Reconstruction using Generative Adversarial Networks," IEEE Computer Vision and Pattern Recognition Workshop, 2020.
  • Tensor-ADMM-Net-CSI[Code] [Tensorflow]

    • Jiawei Ma, Xiao-Yang Liu, Zheng Shou, Xin Yuan, "Deep Tensor ADMM-Net for Snapshot Compressive Imaging," IEEE ICCV, Nov. 2019.
  • ADMM-CSNet[Code]

    • Yan Yang, Jian Sun, Huibin Li, Zongben Xu, "ADMM-CSNet: A Deep Learning Approach for Image Compressive Sensing," IEEE Transaction on Pattern Recognition and Machine Intelligence, 2019.
  • DCS-GAN [Code][Pdf] - Available Soon from DeepMind

    • Yan Wu, Mihaela Rosca, Timothy Lillicrap, Deep Compressive Sensing, Arxiv 2019.
  • F-CSRG [Code] [PDF] [Tensorflow]

    • Shaojie Xu, Sihan Zeng, Justin Romberg, "Fast Compressive Sensing Recovery Using Generative Models with Structured Latent Variables ," arXiv:1806.10175, 2019.
  • L1AE [Code] [PDF] [Tensorflow]

    • Shanshan Wu, Alexandros G. Dimakis, Sujay Sanghavi, Felix X. Yu, Daniel Holtmann-Rice, Dmitry Storcheus, Afshin Rostamizadeh, Sanjiv Kumar, "Learning a Compressed Sensing Measurement Matrix via Gradient Unrolling," arXiv:1806.10175, 2018.
  • DIP [Code] [PDF] [Torch]

    • David Van Veen; Ajil Jalal, Eric Price; Sriram Vishwanath; Alexandros G. Dimakis, "Compressed Sensing with Deep Image Prior and Learned Regularization," arXiv:1806.06438, 2018.
  • Deep-ADMM-Net [Code] [DOI] [MatconvNet]

    • Yan Yang ; Jian Sun ; HUIBIN LI ; Zongben Xu, "ADMM-CSNet: A Deep Learning Approach for Image Compressive Sensing," IEEE Transaction on Pattern Recognition and Machine Intelligence, 2018.
  • VAR-MSI [Code] [[PDF]] [DOI] [Tensorflow]

    • H. Kerstin et al., "Learning a variational network for reconstruction of accelerated MRI data," Magnetic Resonance in Medicine, vol. 79, no. 6, 2018.
  • CSMRI [Code] [PDF] [PyTorch]

    • M. Seitzer et al., "Adversarial and Perceptual Refinement Compressed Sensing MRI Reconstruction," MICCAI 2018.
  • KCS-Net [Code] [PDF] [MatconvNet]

    • T. N. Canh and B. Jeon, "Deep Learning-Based Kronecker Compressive Imaging", IEEE International Conference on Consumer Electronic Asia, 2018
  • DAGAN [Code] [PDF] [DOI] [Tensorflow]

    • G. Yang et al., "DAGAN: Deep De-Aliasing Generative Adversarial Networks for Fast Compressed Sensing MRI Reconstruction," IEEE Transaction on Medical Imaging, vol. 37, no. 6, 2018.
  • SADN [Code][Doi] [Matlab]

    • Qiegen Liu and Henry Leung, Synthesis-analysis deconvolutional network for compressed sensing, IEEE International Conference on Image Processing, 2017.
  • CSGM [Code] [PDF] [Tensorflow]

    • A. Bora, A. Jalal, A. G. Dimakis, "Compressed sensing using Generative Models," arXiv:1703.03208, 2017.
  • Learned D-AMP [Code] [PDF] [Tensorflow]

    • C. A. Metzler et al., "Learned D-AMP: Principled Neural Network based Compressive Image Recovery," Advances in Neural Information Processing Systems, 2017.
  • Deep-Ternary [Code] [PDF] [Tensorflow]

    • D. M. Nguyen, E. Tsiligianni and N. Deligiannis, "Deep learning sparse ternary projections for compressed sensing of images," IEEE Global Conference on Signal and Information Processing (GlobalSIP), 2017.
  • GANCS [Code] [PDF] [Tensorflow]

    • M. Mardani et al., "Compressed Sensing MRI based on Deep Generative Adversarial Network", arXiv:1706.00051, 2017.

Video Compressive Sensing

  • DL-CACTI [Code] [Tensorflow]

    • M. Qiao, Z. Meng, J. Ma, X. Yuan, "Deep Learning for Video Compressive Sensing", APL Photonic 5, 2020.
  • DeepVideoCS [Web] [Code] [PDF] [DOI] [PyTorch]

    • M. Illiasdis, L. Spinoulas, A. K. Katsaggelos, "Deep fully-connected networks for video compressive sensing," Elsevier Digital Signal Processing, vol. 72, 2018.
  • CSVideoNet [Code] [PDF] [Caffe] [Matlab]

    • K. Xu and F. Ren, "SVideoNet: A Recurrent Convolutional Neural Network for Compressive Sensing Video Reconstruction," arXiv:162.05203, 2018.

Other

  • CSNN [Code] [DOI] [Matlab][Tensorflow]

    • Yonar and Lee et. al., A Compressed Sensing Framework for Efficient Dissection of Neural Circuits." (2019) Nature Methods 16, pages126–133.
  • LIS-DL [Code] [PDF] [Matlab]

    • Abdelrahman Taha, Muhammad Alrabeiah, Ahmed Alkhateeb, "Enabling Large Intelligent Surfaces with Compressive Sensing and Deep Learning," arXiv:1904.10136, Apr 2019.
  • VAE-GANs [Code] [PDF] [Python]

    • Vineet Edupuganti, Morteza Mardani, Joseph Cheng, Shreyas Vasanawala, John Pauly, "VAE-GANs for Probabilistic Compressive Image Recovery: Uncertainty Analysis," arxiv1901.1128, 2019.
  • Sparse-Gen [Code] [[PDF] [Tensorflow]

    • Manik Dhar, Aditya Grover, Stefano Ermon, "Modeling Sparse Deviations for Compressed Sensing using Generative Models," International Conference on Machine Learning (ICML), 2018
  • Super-LiDAR [Code] [PDF] [Tensorflow]

    • Nathaniel Chodosh, Chaoyang Wang, Simon Lucey, "Deep Convolutional Compressed Sensing for LiDAR Depth Completion," arXiv:1803.08949, 2018.
  • Unpaired-GANCS [Code] [Tensorflow]

    • Reconstruct under sampled MRI image
  • CSGAN [Code] [PDF] [Tensorflow]

    • M. Kabkab, P. Samangouei, and R. Chellappa, "Task-Aware Compressed Sensing with Generative Adversarial Networks," AAAI Conference on Artificial Intelligence, 2018
  • DL-CSI [Code] [PDF] [Tensorflow][Keras

    • Chao-Kai Wen, Wan-Ting Shih, and Shi Jin, “Deep learning for massive MIMO CSI feedback,” IEEE Wireless Communications Letters, 2018.
  • US-CS [Code] [PDF] [DOI] [Tensorflow]

    • D. Perdios, A. Besson, M. Arditi, and J. Thiran, "A Deep Learning Approach to Ultrasound Image Recovery", IEEE International Ultranosics Symposium, 2017.
  • DeepIoT [Code-ReImplement] [PDF] [Tensorflow]

    • Shuochao Yao, Yiran Zhao, Aston Zhang, Lu Su, Tarek Abdelzaher, "DeepIoT: Compressing Deep Neural Network Structures for Sensing Systems with a Compressor-Critic Framework," AAAI Conference on Artificial Intelligence, 2018
  • LSTM_CS [Code] [PDF] [DOI] [Matlab]

    • H. Palangi, R. Ward, and L. Deng, "Distributed Compressive Sensing: A Deep Learning Approach," IEEE Transaction on Signal Processing, vol. 64, no. 17, 2016.

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