409 research outputs found
Deep Learning Framework for Wireless Systems: Applications to Optical Wireless Communications
Optical wireless communication (OWC) is a promising technology for future
wireless communications owing to its potentials for cost-effective network
deployment and high data rate. There are several implementation issues in the
OWC which have not been encountered in radio frequency wireless communications.
First, practical OWC transmitters need an illumination control on color,
intensity, and luminance, etc., which poses complicated modulation design
challenges. Furthermore, signal-dependent properties of optical channels raise
non-trivial challenges both in modulation and demodulation of the optical
signals. To tackle such difficulties, deep learning (DL) technologies can be
applied for optical wireless transceiver design. This article addresses recent
efforts on DL-based OWC system designs. A DL framework for emerging image
sensor communication is proposed and its feasibility is verified by simulation.
Finally, technical challenges and implementation issues for the DL-based
optical wireless technology are discussed.Comment: To appear in IEEE Communications Magazine, Special Issue on
Applications of Artificial Intelligence in Wireless Communication
State–of–the–art report on nonlinear representation of sources and channels
This report consists of two complementary parts, related to the modeling of two important sources of nonlinearities in a communications system. In the first part, an overview of important past work related to the estimation, compression and processing of sparse data through the use of nonlinear models is provided. In the second part, the current state of the art on the representation of wireless channels in the presence of nonlinearities is summarized. In addition to the characteristics of the nonlinear wireless fading channel, some information is also provided on recent approaches to the sparse representation of such channels
Orthogonal Multiple Access with Correlated Sources: Feasible Region and Pragmatic Schemes
In this paper, we consider orthogonal multiple access coding schemes, where
correlated sources are encoded in a distributed fashion and transmitted,
through additive white Gaussian noise (AWGN) channels, to an access point (AP).
At the AP, component decoders, associated with the source encoders, iteratively
exchange soft information by taking into account the source correlation. The
first goal of this paper is to investigate the ultimate achievable performance
limits in terms of a multi-dimensional feasible region in the space of channel
parameters, deriving insights on the impact of the number of sources. The
second goal is the design of pragmatic schemes, where the sources use
"off-the-shelf" channel codes. In order to analyze the performance of given
coding schemes, we propose an extrinsic information transfer (EXIT)-based
approach, which allows to determine the corresponding multi-dimensional
feasible regions. On the basis of the proposed analytical framework, the
performance of pragmatic coded schemes, based on serially concatenated
convolutional codes (SCCCs), is discussed
Model-Based Deep Learning
Signal processing, communications, and control have traditionally relied on
classical statistical modeling techniques. Such model-based methods utilize
mathematical formulations that represent the underlying physics, prior
information and additional domain knowledge. Simple classical models are useful
but sensitive to inaccuracies and may lead to poor performance when real
systems display complex or dynamic behavior. On the other hand, purely
data-driven approaches that are model-agnostic are becoming increasingly
popular as datasets become abundant and the power of modern deep learning
pipelines increases. Deep neural networks (DNNs) use generic architectures
which learn to operate from data, and demonstrate excellent performance,
especially for supervised problems. However, DNNs typically require massive
amounts of data and immense computational resources, limiting their
applicability for some signal processing scenarios. We are interested in hybrid
techniques that combine principled mathematical models with data-driven systems
to benefit from the advantages of both approaches. Such model-based deep
learning methods exploit both partial domain knowledge, via mathematical
structures designed for specific problems, as well as learning from limited
data. In this article we survey the leading approaches for studying and
designing model-based deep learning systems. We divide hybrid
model-based/data-driven systems into categories based on their inference
mechanism. We provide a comprehensive review of the leading approaches for
combining model-based algorithms with deep learning in a systematic manner,
along with concrete guidelines and detailed signal processing oriented examples
from recent literature. Our aim is to facilitate the design and study of future
systems on the intersection of signal processing and machine learning that
incorporate the advantages of both domains
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