3,066 research outputs found
Self-Stabilizing TDMA Algorithms for Dynamic Wireless Ad-hoc Networks
In dynamic wireless ad-hoc networks (DynWANs), autonomous computing devices
set up a network for the communication needs of the moment. These networks
require the implementation of a medium access control (MAC) layer. We consider
MAC protocols for DynWANs that need to be autonomous and robust as well as have
high bandwidth utilization, high predictability degree of bandwidth allocation,
and low communication delay in the presence of frequent topological changes to
the communication network. Recent studies have shown that existing
implementations cannot guarantee the necessary satisfaction of these timing
requirements. We propose a self-stabilizing MAC algorithm for DynWANs that
guarantees a short convergence period, and by that, it can facilitate the
satisfaction of severe timing requirements, such as the above. Besides the
contribution in the algorithmic front of research, we expect that our proposal
can enable quicker adoption by practitioners and faster deployment of DynWANs
that are subject changes in the network topology
Dictionary learning with large step gradient descent for sparse representations
This is the accepted version of an article published in Lecture Notes in Computer Science Volume 7191, 2012, pp 231-238. The final publication is available at link.springer.com
http://www.springerlink.com/content/l1k4514765283618
Optimized Pre-Compensating Compression
In imaging systems, following acquisition, an image/video is transmitted or
stored and eventually presented to human observers using different and often
imperfect display devices. While the resulting quality of the output image may
severely be affected by the display, this degradation is usually ignored in the
preceding compression. In this paper we model the sub-optimality of the display
device as a known degradation operator applied on the decompressed image/video.
We assume the use of a standard compression path, and augment it with a
suitable pre-processing procedure, providing a compressed signal intended to
compensate the degradation without any post-filtering. Our approach originates
from an intricate rate-distortion problem, optimizing the modifications to the
input image/video for reaching best end-to-end performance. We address this
seemingly computationally intractable problem using the alternating direction
method of multipliers (ADMM) approach, leading to a procedure in which a
standard compression technique is iteratively applied. We demonstrate the
proposed method for adjusting HEVC image/video compression to compensate
post-decompression visual effects due to a common type of displays.
Particularly, we use our method to reduce motion-blur perceived while viewing
video on LCD devices. The experiments establish our method as a leading
approach for preprocessing high bit-rate compression to counterbalance a
post-decompression degradation
Self-stabilizing TDMA Algorithms for Wireless Ad-hoc Networks without External Reference
Time division multiple access (TDMA) is a method for sharing communication
media. In wireless communications, TDMA algorithms often divide the radio time
into timeslots of uniform size, , and then combine them into frames of
uniform size, . We consider TDMA algorithms that allocate at least one
timeslot in every frame to every node. Given a maximal node degree, ,
and no access to external references for collision detection, time or position,
we consider the problem of collision-free self-stabilizing TDMA algorithms that
use constant frame size.
We demonstrate that this problem has no solution when the frame size is , where is the chromatic number for
distance- vertex coloring. As a complement to this lower bound, we focus on
proving the existence of collision-free self-stabilizing TDMA algorithms that
use constant frame size of . We consider basic settings (no hardware
support for collision detection and no prior clock synchronization), and the
collision of concurrent transmissions from transmitters that are at most two
hops apart. In the context of self-stabilizing systems that have no external
reference, we are the first to study this problem (to the best of our
knowledge), and use simulations to show convergence even with computation time
uncertainties
Sparsity Based Methods for Overparameterized Variational Problems
Two complementary approaches have been extensively used in signal and image
processing leading to novel results, the sparse representation methodology and
the variational strategy. Recently, a new sparsity based model has been
proposed, the cosparse analysis framework, which may potentially help in
bridging sparse approximation based methods to the traditional total-variation
minimization. Based on this, we introduce a sparsity based framework for
solving overparameterized variational problems. The latter has been used to
improve the estimation of optical flow and also for general denoising of
signals and images. However, the recovery of the space varying parameters
involved was not adequately addressed by traditional variational methods. We
first demonstrate the efficiency of the new framework for one dimensional
signals in recovering a piecewise linear and polynomial function. Then, we
illustrate how the new technique can be used for denoising and segmentation of
images.Comment: 16 pages, 11 figure
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