Linked e-resources

Details

Hierarchical compressed sensing (G. Wunder)
Proof Methods for Robust Low-Rank Matrix Recovery (T. Fuchs)
New Challenges in Covariance Estimation: Multiple Structures and Coarse Quantization (J. Maly)
Sparse Deterministic and Stochastic Channels: Identification of Spreading Functions and Covariances (Dae Gwan Lee)
Analysis of Sparse Recovery Algorithms via the Replica Method (A. Bereyhi)
Unbiasing in Iterative Reconstruction Algorithms for Discrete Compressed Sensing (F.H. Fischer)
Recovery under Side Constraints (M. Pesavento)
Compressive Sensing and Neural Networks from a Statistical Learning Perspective (E. Schnoor)
Angular Scattering Function Estimation Using Deep Neural Networks (Y. Song)
Fast Radio Propagation Prediction with Deep Learning (R. Levie)
Active Channel Sparsification: Realizing Frequency Division Duplexing Massive MIMO with Minimal Overhead (M. B. Khalilsarai)
Atmospheric Radar Imaging Improvements Using Compressed Sensing and MIMO (J. O. Aweda)
Over-the-Air Computation for Distributed Machine Learning and Consensus in Large Wireless Networks (M. Frey)
Information Theory and Recovery Algorithms for Data Fusion in Earth Observation (M. Fornasier)
Sparse Recovery of Sound Fields Using Measurements from Moving Microphones (A. Mertins)
Compressed Sensing in the Spherical Near-Field to Far-Field Transformation (C. Culotta-Lopez).

Browse Subjects

Show more subjects...

Statistics

from
to
Export