A Unified Framework for Uniform Signal Recovery in Nonlinear Generative Compressed Sensing
Junren Chen, Jonathan Scarlett, Michael K. Ng, Zhaoqiang Liu

TL;DR
This paper introduces a unified framework for uniform signal recovery in nonlinear generative compressed sensing, accommodating various nonlinear measurement models and achieving near-optimal sample complexity with minimal uniformity cost.
Contribution
The paper develops a general approach to obtain uniform recovery guarantees in nonlinear GCS, including discontinuous and unknown models, with a novel Lipschitz approximation and tighter concentration inequalities.
Findings
Uniform recovery guarantees with roughly O(k/ε^2) samples.
Framework applies to 1-bit, quantized, and single index models.
Minimal additional logarithmic factors compared to non-uniform guarantees.
Abstract
In generative compressed sensing (GCS), we want to recover a signal from measurements () using a generative prior , where is typically an -Lipschitz continuous generative model and represents the radius- -ball in . Under nonlinear measurements, most prior results are non-uniform, i.e., they hold with high probability for a fixed rather than for all simultaneously. In this paper, we build a unified framework to derive uniform recovery guarantees for nonlinear GCS where the observation model is nonlinear and possibly discontinuous or unknown. Our framework accommodates GCS with 1-bit/uniformly quantized observations and single index models as canonical examples. Specifically, using a single realization of the sensing ensemble…
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Taxonomy
TopicsSparse and Compressive Sensing Techniques · Machine Learning and Algorithms · Analog and Mixed-Signal Circuit Design
