24 research outputs found
Resource Allocation Frameworks for Network-coded Layered Multimedia Multicast Services
The explosive growth of content-on-the-move, such as video streaming to
mobile devices, has propelled research on multimedia broadcast and multicast
schemes. Multi-rate transmission strategies have been proposed as a means of
delivering layered services to users experiencing different downlink channel
conditions. In this paper, we consider Point-to-Multipoint layered service
delivery across a generic cellular system and improve it by applying different
random linear network coding approaches. We derive packet error probability
expressions and use them as performance metrics in the formulation of resource
allocation frameworks. The aim of these frameworks is both the optimization of
the transmission scheme and the minimization of the number of broadcast packets
on each downlink channel, while offering service guarantees to a predetermined
fraction of users. As a case of study, our proposed frameworks are then adapted
to the LTE-A standard and the eMBMS technology. We focus on the delivery of a
video service based on the H.264/SVC standard and demonstrate the advantages of
layered network coding over multi-rate transmission. Furthermore, we establish
that the choice of both the network coding technique and resource allocation
method play a critical role on the network footprint, and the quality of each
received video layer.Comment: IEEE Journal on Selected Areas in Communications - Special Issue on
Fundamental Approaches to Network Coding in Wireless Communication Systems.
To appea
Optimal Error-Detecting Codes for General Asymmetric Channels via Sperner Theory
Several communication models that are of relevance in practice are asymmetric
in the way they act on the transmitted "objects". Examples include channels in
which the amplitudes of the transmitted pulses can only be decreased, channels
in which the symbols can only be deleted, channels in which non-zero symbols
can only be shifted to the right (e.g., timing channels), subspace channels in
which the dimension of the transmitted vector space can only be reduced,
unordered storage channels in which the cardinality of the stored (multi)set
can only be reduced, etc. We introduce a formal definition of an asymmetric
channel as a channel whose action induces a partial order on the set of all
possible inputs, and show that this definition captures all the above examples.
Such a general approach allows one to treat all these different models in a
unified way, and to obtain a characterization of optimal error-detecting codes
for many interesting asymmetric channels by using Sperner theory.Comment: To be presented at the IEEE Information Theory Workshop (ITW),
Mumbai, India, Nov. 202
Optimized Network-coded Scalable Video Multicasting over eMBMS Networks
Delivery of multicast video services over fourth generation (4G) networks
such as 3GPP Long Term Evolution-Advanced (LTE-A) is gaining momentum. In this
paper, we address the issue of efficiently multicasting layered video services
by defining a novel resource allocation framework that aims to maximize the
service coverage whilst keeping the radio resource footprint low. A key point
in the proposed system mode is that the reliability of multicast video services
is ensured by means of an Unequal Error Protection implementation of the
Network Coding (UEP-NC) scheme. In addition, both the communication parameters
and the UEP-NC scheme are jointly optimized by the proposed resource allocation
framework. Numerical results show that the proposed allocation framework can
significantly increase the service coverage when compared to a conventional
Multi-rate Transmission (MrT) strategy.Comment: Proc. of IEEE ICC 2015 - Mobile and Wireless Networking Symposium, to
appea
Relay-aided Slotted Aloha for Optical Wireless Communications
We consider a relay-aided Slotted ALOHA solution for uplink random access for
an Optical Wireless Communications (OWC)-based Internet of Things (IoT). The
first phase of uplink, the one between IoT devices and the relays, is realized
using indoor OWC, while the second phase, between the relays and a base
station, represents the long-range RF transmission based on low-power wide area
network such as LoRaWAN and occurs outdoors. The throughput performance
dependence on the OWC and RF channel conditions is observed. The behavior of
the performance gain due to adding relays is highlighted and investigated under
different channel and traffic conditions.Comment: Published in: 2020 12th International Symposium on Communication
Systems, Networks and Digital Signal Processing (CSNDSP
MRI reconstruction using Markov random field and total variation as composite prior
Reconstruction of magnetic resonance images (MRI) benefits from incorporating a priori knowledge about statistical dependencies among the representation coefficients. Recent results demonstrate that modeling intraband dependencies with Markov Random Field (MRF) models enable superior reconstructions compared to inter-scale models. In this paper, we develop a novel reconstruction method, which includes a composite prior based on an MRF model and Total Variation (TV). We use an anisotropic MRF model and propose an original data-driven method for the adaptive estimation of its parameters. From a Bayesian perspective, we define a new position-dependent type of regularization and derive a compact reconstruction algorithm with a novel soft-thresholding rule. Experimental results show the effectiveness of this method compared to the state of the art in the field
Optimal detection and error exponents for hidden semi-Markov models
We study detection of random signals corrupted by noise that over time switch their values (states) between a finite set of possible values, where the switchings occur at unknown points in time. We model such signals as hidden semi-Markov signals (HSMS), which generalize classical Markov chains by introducing explicit (possibly non-geometric) distribution for the time spent in each state. Assuming two possible signal states and Gaussian noise, we derive optimal likelihood ratio test and show that it has a computationally tractable form of a matrix product, with the number of matrices involved in the product being the number of process observations. The product matrices are independent and identically distributed, constructed by a simple measurement modulation of the sparse semi-Markov model transition matrix that we define in the paper. Using this result, we show that the Neyman-Pearson error exponent is equal to the top Lyapunov exponent for the corresponding random matrices. Using theory of large deviations, we derive a lower bound on the error exponent. Finally, we show that this bound is tight by means of numerical simulations