My project for the MAT2000 course at UiO. De facto bachelor thesis.
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Updated
May 15, 2017 - TeX
My project for the MAT2000 course at UiO. De facto bachelor thesis.
Presentation for the exam of Optimal Control within the PhD program in Information Engineering of the Department of Information Engineering @ University of Pisa, A.A. 2021/2022
Undergraduate thesis on compressive sensing
This is a python package to perform progressive refinement method for sparse recovery (PRIS)
Operational Support Estimator Networks (OSENs) are generic networks that can used in different support estimation problems.
Memory-Efficient Network for Large-scale Video Compressive Sensing, CVPR 2021
This is my course project for CS 754 Advanced Image Processing.
Injecting image priors into Learnable Compressive Subsampling
Algorithms of compressive sensing like Orthogonal Matching Pursuit (OMP) and Subspace Pursuit (SP) in C
Research Project under the guidance of Professor Ajit Rajwade
GETS: a Genomic Tree based Sparse solver. This package accompanies an article to be published in the forthcoming Birkhäuser-ANHA book "Explorations in the Mathematics of Data Science" --- "A genomic tree based sparse solver" by Timothy A. Davis and Srinivas Subramanian.
Toolset for locating array model building and construction.
This packages contains the code to run the BM3D, BM3D-SAPCA, BLS-GSM, and NLM variants of the D-AMP, D-VAMP, and D-prGAMP algorithms.
Bayesian Orthogonal Matching Pursuit (Bernoulli-Gaussian)
Thesis research on compressed sensing
Sampling-Priors-Augmented Deep Unfolding Network for Robust Video Compressive Sensing
Python wrapper for the fast TV denoising algorithm by Laurent Condat
Early stages of incorporating self-supervised with algorithm unrolling. Code was written as part of a master's thesis (60 ECTS) at Aalborg University, Denmark.
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