We study the network-wide neighbour discovery problem in wireless networks in which each node in a network must discovery the network interface addresses (NIAs) of its neighbour. We work within the rapid on-off division duplex framework proposed by Guo and Zhang in [5] in which all nodes are assigned different on-off signatures which allow them listen to the transmissions of neighbouring nodes during their off slots; this leads to a compressed sensing problem at each node with a collapsed codebook determined by a given node’s transmission signature. We propose sparse Kerdock matrices as codebooks for the neighbour discovery problem. These matrices share the same row space as certain Delsarte-Goethals frames based upon Reed Muller codes, whi...
This paper develops an optimal decentralized algorithm for sparse signal recovery and demonstrates i...
Abstract — We examine the problem of determining which nodes are neighbors of a given one in a wirel...
Theoretical thesis.Bibliography: pages 149-163.1. Introduction -- 2. Literature review -- 3. Compres...
This paper studies the problem of neighbor discovery in wireless networks, namely, each node wishes ...
2015-08-04The neighbor discovery in wireless networks is the problem of devices identifying other de...
The broad theme of this dissertation is design of coding schemes that demonstrate good error perform...
Sparse linear models pose dual views toward data that are embodied in compressive sensing and sparse...
The problem of recovering sparse signals from a limited number of measurements is now ubiquitous in ...
The problem of the distributed recovery of jointly sparse signals has attracted much attention recen...
This survey provides a brief introduction to compressed sensing as well as several major algorithms ...
The problem of determining which sensors are neighbors of a given one in a wireless network operatin...
This thesis considers the massive random access problem in which a large number of sporadically acti...
Existing approaches to Compressive Sensing (CS) of sparse spectrum has thus far assumed models conta...
Existing approaches to Compressive Sensing (CS) of sparse spectrum has thus far assumed models conta...
This paper considers a simple on-off random multiple access channel, where n users communicate simul...
This paper develops an optimal decentralized algorithm for sparse signal recovery and demonstrates i...
Abstract — We examine the problem of determining which nodes are neighbors of a given one in a wirel...
Theoretical thesis.Bibliography: pages 149-163.1. Introduction -- 2. Literature review -- 3. Compres...
This paper studies the problem of neighbor discovery in wireless networks, namely, each node wishes ...
2015-08-04The neighbor discovery in wireless networks is the problem of devices identifying other de...
The broad theme of this dissertation is design of coding schemes that demonstrate good error perform...
Sparse linear models pose dual views toward data that are embodied in compressive sensing and sparse...
The problem of recovering sparse signals from a limited number of measurements is now ubiquitous in ...
The problem of the distributed recovery of jointly sparse signals has attracted much attention recen...
This survey provides a brief introduction to compressed sensing as well as several major algorithms ...
The problem of determining which sensors are neighbors of a given one in a wireless network operatin...
This thesis considers the massive random access problem in which a large number of sporadically acti...
Existing approaches to Compressive Sensing (CS) of sparse spectrum has thus far assumed models conta...
Existing approaches to Compressive Sensing (CS) of sparse spectrum has thus far assumed models conta...
This paper considers a simple on-off random multiple access channel, where n users communicate simul...
This paper develops an optimal decentralized algorithm for sparse signal recovery and demonstrates i...
Abstract — We examine the problem of determining which nodes are neighbors of a given one in a wirel...
Theoretical thesis.Bibliography: pages 149-163.1. Introduction -- 2. Literature review -- 3. Compres...