From compressed sensing to learned sensing with metasurface imagers
暂无分享,去创建一个
[1] David R. Smith,et al. Dynamic metamaterial aperture for microwave imaging , 2015 .
[2] Laurent Daudet,et al. Imaging With Nature: Compressive Imaging Using a Multiply Scattering Medium , 2013, Scientific Reports.
[3] Sylvain Gigan,et al. Deeply Subwavelength Localization with Reverberation-Coded Aperture. , 2021, Physical review letters.
[4] David R. Smith,et al. Terahertz compressive imaging with metamaterial spatial light modulators , 2014, Nature Photonics.
[5] Mathias Fink,et al. Optimally diverse communication channels in disordered environments with tuned randomness , 2018, Nature Electronics.
[6] David R. Smith,et al. Lowering latency and processing burden in computational imaging through dimensionality reduction of the sensing matrix , 2021, Scientific Reports.
[7] David R. Smith,et al. Microwave Imaging Using a Disordered Cavity with a Dynamically Tunable Impedance Surface , 2016 .
[8] Roarke Horstmeyer,et al. Convolutional neural networks that teach microscopes how to image , 2017, ArXiv.
[9] Tsung-Han Tsai,et al. Single-sensor multispeaker listening with acoustic metamaterials , 2015, Proceedings of the National Academy of Sciences.
[10] David R. Smith,et al. Metamaterial Apertures for Computational Imaging , 2013, Science.
[11] Wai Lam Chan,et al. A single-pixel terahertz imaging system based on compressed sensing , 2008 .
[12] Min Liang,et al. Reconfigurable Array Design to Realize Principal Component Analysis (PCA)-Based Microwave Compressive Sensing Imaging System , 2015, IEEE Antennas and Wireless Propagation Letters.
[13] Tie Jun Cui,et al. Intelligent Electromagnetic Sensing with Learnable Data Acquisition and Processing , 2019, Patterns.
[14] Michael Boyarsky,et al. Implementation and Characterization of a Two-Dimensional Printed Circuit Dynamic Metasurface Aperture for Computational Microwave Imaging , 2019, IEEE Transactions on Antennas and Propagation.
[15] U. Kuhl,et al. Optimal Multiplexing of Spatially Encoded Information across Custom-Tailored Configurations of a Metasurface-Tunable Chaotic Cavity , 2020 .
[16] Ayan Chakrabarti,et al. Learning Sensor Multiplexing Design through Back-propagation , 2016, NIPS.
[17] Kanghyun Kim,et al. Towards an Intelligent Microscope: Adaptively Learned Illumination for Optimal Sample Classification , 2020, ICASSP 2020 - 2020 IEEE International Conference on Acoustics, Speech and Signal Processing (ICASSP).
[18] David R. Smith,et al. Learned Integrated Sensing Pipeline: Reconfigurable Metasurface Transceivers as Trainable Physical Layer in an Artificial Neural Network , 2019, Advanced science.
[19] Philipp del Hougne. Robust Position Sensing with Wave Fingerprints in Dynamic Complex Environments , 2020 .
[20] Naftali Tishby,et al. Machine learning and the physical sciences , 2019, Reviews of Modern Physics.
[21] David R. Smith,et al. Computational imaging using a mode-mixing cavity at microwave frequencies , 2015 .
[22] Andrea Alù,et al. Machine-learning reprogrammable metasurface imager , 2019, Nature Communications.
[23] S. Frick,et al. Compressed Sensing , 2014, Computer Vision, A Reference Guide.
[24] Alex Graves,et al. Recurrent Models of Visual Attention , 2014, NIPS.
[25] Baile Zhang,et al. Image reconstruction through a multimode fiber with a simple neural network architecture , 2020, Scientific reports.
[26] Wu Zhou,et al. Processing global and local features in convolutional neural network (CNN) and primate visual systems , 2018, Commercial + Scientific Sensing and Imaging.
[27] Guigang Zhang,et al. Deep Learning , 2016, Int. J. Semantic Comput..