Compressed Sensing Beyond the IID and Static Domains: Theory, Algorithms and Applications
Abbas Kazemipour

TL;DR
This paper advances compressed sensing theory and algorithms to handle non-i.i.d and dynamic signals, demonstrating improved recovery in neural, financial, biological, and imaging applications with practical constraints.
Contribution
It introduces new theoretical sampling bounds, a novel framework for temporal dynamics with sparse state-space models, and practical algorithms for biological and imaging data.
Findings
Successfully recovered neural, financial, and traffic dependencies.
Enhanced detection of sparse biological events.
Achieved high-speed, diffraction-limited imaging with fewer measurements.
Abstract
Sparsity is a ubiquitous feature of many real world signals such as natural images and neural spiking activities. Conventional compressed sensing utilizes sparsity to recover low dimensional signal structures in high ambient dimensions using few measurements, where i.i.d measurements are at disposal. However real world scenarios typically exhibit non i.i.d and dynamic structures and are confined by physical constraints, preventing applicability of the theoretical guarantees of compressed sensing and limiting its applications. In this thesis we develop new theory, algorithms and applications for non i.i.d and dynamic compressed sensing by considering such constraints. In the first part of this thesis we derive new optimal sampling-complexity tradeoffs for two commonly used processes used to model dependent temporal structures: the autoregressive processes and self-exciting generalized…
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