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Slepian-Wolf coded nested quantization (SEC-NQ) for Wyner-Ziv coding: high-rate performance analysis, code design, and application to cooperative networksLiu, Zhixin 15 May 2009 (has links)
No description available.
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Polar codes for compress-and-forward in binary relay channelsBlasco-Serrano, Ricardo, Thobaben, Ragnar, Rathi, Vishwambhar, Skoglund, Mikael January 2010 (has links)
We construct polar codes for binary relay channels with orthogonal receiver components. We show that polar codes achieve the cut-set bound when the channels are symmetric and the relay-destination link supports compress-and-forward relaying based on Slepian-Wolf coding. More generally, we show that a particular version of the compress-and-forward rate is achievable using polar codes for Wyner-Ziv coding. In both cases the block error probability can be bounded as O(2-Nβ) for 0 < β < 1/2 and sufficiently large block length N. / <p>© 2010 IEEE. Personal use of this material is permitted. Permission from IEEE must be obtained for all other uses, in any current or future media, including reprinting/republishing this material for advertising or promotional purposes, creating new collective works, for resale or redistribution to servers or lists, or reuse of any copyrighted component of this work in other works. QC 20111207</p>
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Secure Text Communication for the Tiger XSHertz, David January 2006 (has links)
The option of communicating via SMS messages can be considered available in all GSM networks. It therefore constitutes a almost universally available method for mobile communication. The Tiger XS, a device for secure communication manufactured by Sectra, is equipped with an encrypted text message transmission system. As the text message service of this device is becoming increasingly popular and as options to connect the Tiger XS to computers or to a keyboard are being researched, the text message service is in need of upgrade. This thesis proposes amendments to the existing protocol structure. It thoroughly examines a number of options for source coding of small text messages and makes recommendations as to implementation of such features. It also suggests security enhancements and introduces a novel form of stegangraphy.
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Multiterminal source coding: sum-rate loss, code designs, and applications to video sensor networksYang, Yang 15 May 2009 (has links)
Driven by a host of emerging applications (e.g., sensor networks and wireless video),
distributed source coding (i.e., Slepian-Wolf coding, Wyner-Ziv coding and various other
forms of multiterminal source coding), has recently become a very active research area.
This dissertation focuses on multiterminal (MT) source coding problem, and consists
of three parts. The first part studies the sum-rate loss of an important special case
of quadratic Gaussian multi-terminal source coding, where all sources are positively symmetric
and all target distortions are equal. We first give the minimum sum-rate for joint
encoding of Gaussian sources in the symmetric case, and then show that the supremum of
the sum-rate loss due to distributed encoding in this case is 1
2 log2
5
4 = 0:161 b/s when L = 2
and increases in the order of
º
L
2 log2 e b/s as the number of terminals L goes to infinity.
The supremum sum-rate loss of 0:161 b/s in the symmetric case equals to that in general
quadratic Gaussian two-terminal source coding without the symmetric assumption. It is
conjectured that this equality holds for any number of terminals.
In the second part, we present two practical MT coding schemes under the framework
of Slepian-Wolf coded quantization (SWCQ) for both direct and indirect MT problems.
The first, asymmetric SWCQ scheme relies on quantization and Wyner-Ziv coding, and it
is implemented via source splitting to achieve any point on the sum-rate bound. In the second,
conceptually simpler scheme, symmetric SWCQ, the two quantized sources are compressed
using symmetric Slepian-Wolf coding via a channel code partitioning technique that is capable of achieving any point on the Slepian-Wolf sum-rate bound. Our practical
designs employ trellis-coded quantization and turbo/LDPC codes for both asymmetric and
symmetric Slepian-Wolf coding. Simulation results show a gap of only 0.139-0.194 bit per
sample away from the sum-rate bound for both direct and indirect MT coding problems.
The third part applies the above two MT coding schemes to two practical sources, i.e.,
stereo video sequences to save the sum rate over independent coding of both sequences.
Experiments with both schemes on stereo video sequences using H.264, LDPC codes for
Slepian-Wolf coding of the motion vectors, and scalar quantization in conjunction with
LDPC codes for Wyner-Ziv coding of the residual coefficients give slightly smaller sum
rate than separate H.264 coding of both sequences at the same video quality.
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Slepian-Wolf coded nested quantization (SEC-NQ) for Wyner-Ziv coding: high-rate performance analysis, code design, and application to cooperative networksLiu, Zhixin 15 May 2009 (has links)
No description available.
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Source and Channel Coding for Audiovisual Communication SystemsKim, Moo Yound January 2004 (has links)
<p>Topics in source and channel coding for audiovisual communication systems are studied. The goal of source coding is to represent a source with the lowest possible rate to achieve a particular distortion, or with the lowest possible distortion at a given rate. Channel coding adds redundancy to quantized source information to recover channel errors. This thesis consists of four topics.</p><p>Firstly, based on high-rate theory, we propose Karhunen-Loéve transform (KLT)-based classified vector quantization (VQ) to efficiently utilize optimal VQ advantages over scalar quantization (SQ). Compared with code-excited linear predictive (CELP) speech coding, KLT-based classified VQ provides not only a higher SNR and perceptual quality, but also lower computational complexity. Further improvement is obtained by companding.</p><p>Secondly, we compare various transmitter-based packet-loss recovery techniques from a rate-distortion viewpoint for real-time audiovisual communication systems over the Internet. We conclude that, in most circumstances, multiple description coding (MDC) is the best packet-loss recovery technique. If channel conditions are informed, channel-optimized MDC yields better performance.</p><p>Compared with resolution-constrained quantization (RCQ), entropy-constrained quantization (ECQ) produces a smaller number of distortion outliers but is more sensitive to channel errors. We apply a generalized γ-th power distortion measure to design a new RCQ algorithm that has less distortion outliers and is more robust against source mismatch than conventional RCQ methods.</p><p>Finally, designing quantizers to effectively remove irrelevancy as well as redundancy is considered. Taking into account the just noticeable difference (JND) of human perception, we design a new RCQ method that has improved performance in terms of mean distortion and distortion outliers. Based on high-rate theory, optimal centroid density and its corresponding mean distortion are also accurately predicted.</p><p>The latter two quantization methods can be combined with practical source coding systems such as KLT-based classified VQ and with joint source-channel coding paradigms such as MDC.</p>
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On joint source-channel decoding and interference cancellation in CDMA-based large-scale wireless sensor networksIllangakoon, Chathura 26 May 2013 (has links)
Motivated by potential applications in wireless sensor networks, this thesis considers the problem of communicating a large number of correlated analog sources over a Gaussian multiple-access channel using non-orthogonal code-division multiple-access (CDMA). A joint source-channel decoder is presented which can exploit the inter-source correlation for interference reduction in the CDMA channel. This decoder uses a linear minimum mean square error (MMSE) multi-user detector (MUD) in tandem with a MMSE joint source decoder (JSD) for multiple sources to achieve a computational complexity that scales with the number of sources. The MUD and the JSD, then iteratively exchange extrinsic information to improve the interference cancellation. Experimental results show that, compared to a non-iterative decoder, the proposed iterative decoder is more robust against potential performance degradation due to correlated channel interference and offers better near far resistance.
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Low Density Parity Check Code Designs For Distributed Joint Source-Channel Coding Over Multiple Access ChannelsShahid, Iqbal 23 August 2013 (has links)
The efficient and reliable communication of data from multiple sources to a single receiver plays an important role in emerging applications such as wireless sensor networks. The correlation among observations picked-up by spatially distributed sensors in such a network can be exploited to enhance the efficiency and reliability of communication. In particular, information theory shows that optimal communication of information from correlated sources requires distributed joint source-channel (DJSC) coding.
This dissertation develops new approaches to designing DJSC codes based on low density parity check (LDPC) codes. The existence of low complexity code optimization algorithms and decoding algorithms make these codes ideal for joint optimization and decoding of multiple codes operating on correlated sources. The well known EXIT analysis-based LDPC code optimization method for channel coding in single-user point-to-point systems is extended to the optimization of two-user LDPC codes for DJSC coding in multi-access channels (MACs) with correlated users.
Considering an orthogonal MAC with two correlated binary sources, an asymptotically optimal DJSC code construction capable of achieving any rate-pair in the theoretically-achievable two-user rate-region is presented. A practical approach to realizing this scheme using irregular LDPC codes is then developed. Experimental results are presented which demonstrate that the proposed codes can approach theoretical bounds when the codeword length is increased. For short codeword length and high inter-source correlation, these DJSC codes are shown to significantly outperform separate source and channel codes.
Next, the DJSC code design for the transmission of a pair of correlated binary sources over a Gaussian MAC (GMAC) is investigated. The separate source and channel coding is known to be sub-optimal in this case. For the optimization of a pair of irregular LDPC codes, the EXIT analysis for message passing in a joint factor-graph decoder is analyzed, and an approach to modeling the probability density functions of messages associated with graph nodes which represent the inter-source dependence is proposed. Simulation results show that, for sufficiently large codeword lengths and high inter-source correlation, the proposed DJSC codes for GMAC can achieve rates higher than the theoretical upper bound for separate source and channel coding.
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On joint source-channel decoding and interference cancellation in CDMA-based large-scale wireless sensor networksIllangakoon, Chathura 26 May 2013 (has links)
Motivated by potential applications in wireless sensor networks, this thesis considers the problem of communicating a large number of correlated analog sources over a Gaussian multiple-access channel using non-orthogonal code-division multiple-access (CDMA). A joint source-channel decoder is presented which can exploit the inter-source correlation for interference reduction in the CDMA channel. This decoder uses a linear minimum mean square error (MMSE) multi-user detector (MUD) in tandem with a MMSE joint source decoder (JSD) for multiple sources to achieve a computational complexity that scales with the number of sources. The MUD and the JSD, then iteratively exchange extrinsic information to improve the interference cancellation. Experimental results show that, compared to a non-iterative decoder, the proposed iterative decoder is more robust against potential performance degradation due to correlated channel interference and offers better near far resistance.
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Low Density Parity Check Code Designs For Distributed Joint Source-Channel Coding Over Multiple Access ChannelsShahid, Iqbal 23 August 2013 (has links)
The efficient and reliable communication of data from multiple sources to a single receiver plays an important role in emerging applications such as wireless sensor networks. The correlation among observations picked-up by spatially distributed sensors in such a network can be exploited to enhance the efficiency and reliability of communication. In particular, information theory shows that optimal communication of information from correlated sources requires distributed joint source-channel (DJSC) coding.
This dissertation develops new approaches to designing DJSC codes based on low density parity check (LDPC) codes. The existence of low complexity code optimization algorithms and decoding algorithms make these codes ideal for joint optimization and decoding of multiple codes operating on correlated sources. The well known EXIT analysis-based LDPC code optimization method for channel coding in single-user point-to-point systems is extended to the optimization of two-user LDPC codes for DJSC coding in multi-access channels (MACs) with correlated users.
Considering an orthogonal MAC with two correlated binary sources, an asymptotically optimal DJSC code construction capable of achieving any rate-pair in the theoretically-achievable two-user rate-region is presented. A practical approach to realizing this scheme using irregular LDPC codes is then developed. Experimental results are presented which demonstrate that the proposed codes can approach theoretical bounds when the codeword length is increased. For short codeword length and high inter-source correlation, these DJSC codes are shown to significantly outperform separate source and channel codes.
Next, the DJSC code design for the transmission of a pair of correlated binary sources over a Gaussian MAC (GMAC) is investigated. The separate source and channel coding is known to be sub-optimal in this case. For the optimization of a pair of irregular LDPC codes, the EXIT analysis for message passing in a joint factor-graph decoder is analyzed, and an approach to modeling the probability density functions of messages associated with graph nodes which represent the inter-source dependence is proposed. Simulation results show that, for sufficiently large codeword lengths and high inter-source correlation, the proposed DJSC codes for GMAC can achieve rates higher than the theoretical upper bound for separate source and channel coding.
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