Scientific Computational Imaging COde
-
Updated
Jun 27, 2024 - Python
Scientific Computational Imaging COde
SAGECal is a fast, memory efficient and GPU accelerated radio interferometric calibration program. It supports all source models including points, Gaussians and Shapelets. Distributed calibration using MPI and consensus optimization is enabled. Both spectral and spatial priors can be used as constraints. Tools to build/restore sky models are inc…
Lensless imaging toolkit. Complete tutorial: https://go.epfl.ch/lenslesspicam
Julia implementation of ADMM solver on multiple GPUs
R interface for OSQP
MATLAB interactive interface for TinyMPC
TOmographic MOdel-BAsed Reconstruction (ToMoBAR) software
R Package: Regularized Spatial Maximum Covariance Analysis
R Package: Regularized Principal Component Analysis for Spatial Data
Python interactive interface for TinyMPC
Sparse Optimisation Research Code
Distributed Multidisciplinary Design Optimization
Julia interactive interface for TinyMPC
Simulation code of our paper in IEEE Transactions on Cognitive Communications and Networking: ''Energy-Efficient Blockchain-enabled User-Centric Mobile Edge Computing''
Proximal algorithms for nonsmooth optimization in Julia
ADOM: ADMM-Based Optimization Model for Stripe Noise Removal in Remote Sensing Image
R Package: Regularized Spatial Maximum Covariance Analysis
Code repository for "Structural Discovery with Partial Ordering Information for Time-Dependent Data with Convergence Guarantees"
R Package: Regularized Principal Component Analysis for Spatial Data
Add a description, image, and links to the admm topic page so that developers can more easily learn about it.
To associate your repository with the admm topic, visit your repo's landing page and select "manage topics."