Pages that link to "Item:Q4567572"
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The following pages link to Optimized Projections for Compressed Sensing (Q4567572):
Displaying 42 items.
- An orthogonal method for measurement matrix optimization (Q308066) (← links)
- The non-convex sparse problem with nonnegative constraint for signal reconstruction (Q328467) (← links)
- Learning circulant sensing kernels (Q479905) (← links)
- A box constrained gradient projection algorithm for compressed sensing (Q553750) (← links)
- Dense fast random projections and Lean Walsh transforms (Q629831) (← links)
- Verifiable conditions of \(\ell_{1}\)-recovery for sparse signals with sign restrictions (Q633107) (← links)
- Measurement matrix design for CS-MIMO radar using multi-objective optimization (Q784574) (← links)
- Local linear convergence for alternating and averaged nonconvex projections (Q839655) (← links)
- A CS recovery algorithm for model and time delay identification of MISO-FIR systems (Q1736708) (← links)
- A novel measurement matrix optimization approach for hyperspectral unmixing (Q1794237) (← links)
- A preconditioning approach for improved estimation of sparse polynomial chaos expansions (Q1986404) (← links)
- Rapid compressed sensing reconstruction: a semi-tensor product approach (Q1999186) (← links)
- Measurement matrix optimization via mutual coherence minimization for compressively sensed signals reconstruction (Q2004244) (← links)
- Sparse recovery of sound fields using measurements from moving microphones (Q2106497) (← links)
- Model recovery for multi-input signal-output nonlinear systems based on the compressed sensing recovery theory (Q2125313) (← links)
- Exploiting prior knowledge in compressed sensing to design robust systems for endoscopy image recovery (Q2125346) (← links)
- Holographic sensing (Q2175025) (← links)
- Sparse linear regression from perturbed data (Q2208606) (← links)
- Reconstruction of sparse-view tomography via preconditioned Radon sensing matrix (Q2317408) (← links)
- A novel measurement matrix based on regression model for block compressed sensing (Q2353426) (← links)
- A novel coherence reduction method in compressed sensing for DOA estimation (Q2375584) (← links)
- Compressed sensing by inverse scale space and curvelet thresholding (Q2378722) (← links)
- A near-optimal sampling strategy for sparse recovery of polynomial chaos expansions (Q2425261) (← links)
- Anomaly detection in large-scale data stream networks (Q2435710) (← links)
- Optimized projections for compressed sensing via rank-constrained nearest correlation matrix (Q2450944) (← links)
- Comparison of the performance and reliability between improved sampling strategies for polynomial chaos expansion (Q2688361) (← links)
- Posterior information-based image measurement matrix optimization (Q2697739) (← links)
- COMPRESSED SENSING BY ITERATIVE THRESHOLDING OF GEOMETRIC WAVELETS: A COMPARING STUDY (Q3084699) (← links)
- Competitive optimization of compressed sensing (Q3435879) (← links)
- Regularized sparse representation for image deconvolution (Q3465079) (← links)
- Orthonormal Expansion $\ell_{1}$-Minimization Algorithms for Compressed Sensing (Q4573401) (← links)
- Projection Matrix Optimization for Sparse Signals in Structured Noise (Q4580704) (← links)
- (Q4636996) (← links)
- Spectral Compressed Sensing via Projected Gradient Descent (Q4687234) (← links)
- On Collaborative Compressive Sensing Systems: The Framework, Design, and Algorithm (Q4689776) (← links)
- Compressive-Projection Principal Component Analysis (Q5366128) (← links)
- Improving the Incoherence of a Learned Dictionary via Rank Shrinkage (Q5380643) (← links)
- Influences of preconditioning on the mutual coherence and the restricted isometry property of Gaussian/Bernoulli measurement matrices (Q5741242) (← links)
- Singular Spectrum Analysis and Circulant Maximum Variance Frames (Q5887324) (← links)
- DCACO: an algorithm for designing incoherent redundant matrices (Q6157452) (← links)
- Tight-frame-like analysis-sparse recovery using nontight sensing matrices (Q6587659) (← links)
- Inverse problems are solvable on real number signal processing hardware (Q6652581) (← links)