Oversampled Adaptive Sensing via a Predefined Codebook

02/26/2021
by   Ali Bereyhi, et al.
0

Oversampled adaptive sensing (OAS) is a Bayesian framework recently proposed for effective sensing of structured signals in a time-limited setting. In contrast to the conventional blind oversampling, OAS uses the prior information on the signal to construct posterior beliefs sequentially. These beliefs help in constructive oversampling which iteratively evolves through a sequence of time sub-frames. The initial studies of OAS consider the idealistic assumption of full control on sensing coefficients which is not feasible in many applications. In this work, we extend the initial investigations on OAS to more realistic settings in which the sensing coefficients are selected from a predefined set of possible choices, referred to as the codebook. We extend the OAS framework to these settings and compare its performance with classical non-adaptive approaches.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/10/2019

An Adaptive Bayesian Framework for Recovery of Sources with Structured Sparsity

In oversampled adaptive sensing (OAS), noisy measurements are collected ...
research
11/15/2018

Oversampled Adaptive Sensing with Random Projections: Analysis and Algorithmic Approaches

Oversampled adaptive sensing (OAS) is a recently proposed Bayesian frame...
research
07/02/2021

RL-NCS: Reinforcement learning based data-driven approach for nonuniform compressed sensing

A reinforcement-learning-based non-uniform compressed sensing (NCS) fram...
research
12/26/2011

Online Adaptive Statistical Compressed Sensing of Gaussian Mixture Models

A framework of online adaptive statistical compressed sensing is introdu...
research
12/08/2021

Active Sensing for Communications by Learning

This paper proposes a deep learning approach to a class of active sensin...
research
02/03/2022

A Population's Feasible Posterior Beliefs

We consider a population of Bayesian agents who share a common prior ove...

Please sign up or login with your details

Forgot password? Click here to reset