ON THE INTERMEDIATE SYMBOL RECOVERY RATE OF RATELESS CODES Ali Talari, and Nazanin Rahnavard IEEE TRANSACTIONS ON COMMUNICATIONS, VOL. 60, NO. 5, MAY 2012.

Slides:



Advertisements
Similar presentations
Jesper H. Sørensen, Toshiaki Koike-Akino, and Philip Orlik 2012 IEEE International Symposium on Information Theory Proceedings Rateless Feedback Codes.
Advertisements

Performance analysis of LT codes with different degree distribution
Doc.: IEEE wng-r1 Contribution Labeling Diversity Date: November 2013 Maciej Krasicki (Poznan University of Technology)Slide.
OFDM Modulated Cooperative Multiple-Access Channel With Network-Channel Coding.
Effect of Maintaining Wavelength Continuity on Minimizing Network Coding Resources in Optical Long-haul Networks Ramanathan S Thinniyam.
LT-AF Codes: LT Codes with Alternating Feedback Ali Talari and Nazanin Rahnavard Oklahoma State University IEEE ISIT (International Symposium on Information.
Data Persistence in Sensor Networks: Towards Optimal Encoding for Data Recovery in Partial Network Failures Abhinav Kamra, Jon Feldman, Vishal Misra and.
Adaptive Multiple Relay Selection Scheme for Cooperative Wireless Networks WCNC 2010 Gayan Amarasuriya, Masoud Ardakani and Chintha Tellambura {amarasur,
Dynamic Tuning of the IEEE Protocol to Achieve a Theoretical Throughput Limit Frederico Calì, Marco Conti, and Enrico Gregori IEEE/ACM TRANSACTIONS.
1 Rateless Packet Approach for Data Gathering in Wireless Sensor Networks Dejan Vukobratovic, Cedomir Stefanovic, Vladimir Crnojevic, Francesco Chiti,
Using Redundancy to Cope with Failures in a Delay Tolerant Network Sushant Jain, Michael Demmer, Rabin Patra, Kevin Fall Source:
Chinese University of Hong Kong Department of Information Engineering A Capacity Estimate Technique for JPEG-to-JPEG Image Watermarking Peter Hon Wah Wong.
10th Canadian Workshop on Information Theory June 7, 2007 Rank-Metric Codes for Priority Encoding Transmission with Network Coding Danilo Silva and Frank.
DNA Research Group 1 Growth Codes: Maximizing Sensor Network Data Persistence Vishal Misra Joint work with Abhinav Kamra, Jon Feldman (Google) and Dan.
Division of Engineering and Applied Sciences DIMACS-04 Iterative Timing Recovery Aleksandar Kavčić Division of Engineering and Applied Sciences Harvard.
A New Algorithm for Solving Many-objective Optimization Problem Md. Shihabul Islam ( ) and Bashiul Alam Sabab ( ) Department of Computer Science.
Liquan Shen Zhi Liu Xinpeng Zhang Wenqiang Zhao Zhaoyang Zhang An Effective CU Size Decision Method for HEVC Encoders IEEE TRANSACTIONS ON MULTIMEDIA,
An Adaptive Probability Broadcast- based Data Preservation Protocol in Wireless Sensor Networks Liang, Jun-Bin ; Wang, Jianxin; Zhang, X.; Chen, Jianer.
On the Coded Complex Field Network Coding Scheme for Multiuser Cooperative Communications with Regenerative Relays Caixi Key Lab of Information.
Seyed Mohamad Alavi, Chi Zhou, Yu Cheng Department of Electrical and Computer Engineering Illinois Institute of Technology, Chicago, IL, USA ICC 2009.
On comparison of different approaches to the stability radius calculation Olga Karelkina Department of Mathematics University of Turku MCDM 2011.
Rateless Codes with Optimum Intermediate Performance Ali Talari and Nazanin Rahnavard Oklahoma State University, USA IEEE GLOBECOM 2009 & IEEE TRANSACTIONS.
When rate of interferer’s codebook small Does not place burden for destination to decode interference When rate of interferer’s codebook large Treating.
Rateless Coding with Feedback Andrew Hagedorn, Sachin Agarwal, David Starobinski, and Ari Trachtenberg Department of ECE, Boston University, MA, USA IEEE.
Optimal Power Control, Rate Adaptation and Scheduling for UWB-Based Wireless Networked Control Systems Sinem Coleri Ergen (joint with Yalcin Sadi) Wireless.
Related Works of Data Persistence in WSN htchiu 1.
Function Computation over Heterogeneous Wireless Sensor Networks Xuanyu Cao, Xinbing Wang, Songwu Lu Department of Electronic Engineering Shanghai Jiao.
1 Security and Robustness Enhancement for Image Data Hiding Authors: Ning Liu, Palak Amin, and K. P. Subbalakshmi, Senior Member, IEEE IEEE TRANSACTIONS.
Shifted Codes Sachin Agarwal Deutsch Telekom A.G., Laboratories Ernst-Reuter-Platz Berlin Germany Joint work with Andrew Hagedorn and Ari Trachtenberg.
An Optimal Partial Decoding Algorithm for Rateless Codes Valerio Bioglio, Rossano Gaeta, Marco Grangetto, and Matteo Sereno Dipartimento di Informatica.
A Memory-efficient Huffman Decoding Algorithm
X1X1 X2X2 Encoding : Bits are transmitting over 2 different independent channels.  Rn bits Correlation channel  (1-R)n bits Wireless channel Code Design:
User Cooperation via Rateless Coding Mahyar Shirvanimoghaddam, Yonghui Li, and Branka Vucetic The University of Sydney, Australia IEEE GLOBECOM 2012 &
Energy-Conserving Access Protocols for Identification Networks By Imrich Chlamtac, Chiara Petrioli, and Jason Redi IEEE/ACM TRANSACTIONS ON NETWORKING,
Optimization of the ESRF upgrade lattice lifetime and dynamic aperture using genetic algorithms Nicola Carmignani 11/03/2015.
Ali Al-Saihati ID# Ghassan Linjawi
Growth Codes: Maximizing Sensor Network Data Persistence abhinav Kamra, Vishal Misra, Jon Feldman, Dan Rubenstein Columbia University, Google Inc. (SIGSOMM’06)
Space-Time and Space-Frequency Coded Orthogonal Frequency Division Multiplexing Transmitter Diversity Techniques King F. Lee.
Andrew Liau, Shahram Yousefi, Senior Member, IEEE, and Il-Min Kim Senior Member, IEEE Binary Soliton-Like Rateless Coding for the Y-Network IEEE TRANSACTIONS.
Optimization of Wavelength Assignment for QoS Multicast in WDM Networks Xiao-Hua Jia, Ding-Zhu Du, Xiao-Dong Hu, Man-Kei Lee, and Jun Gu, IEEE TRANSACTIONS.
Stochastic Networks Conference, June 19-24, Connections between network coding and stochastic network theory Bruce Hajek Abstract: Randomly generated.
Cooperative Communication in Sensor Networks: Relay Channels with Correlated Sources Brian Smith and Sriram Vishwanath University of Texas at Austin October.
A Mathematical Theory of Communication Jin Woo Shin Sang Joon Kim Paper Review By C.E. Shannon.
Multimedia Transmission Over Cognitive Radio Networks using Decode-and-Forward Multi-Relays and Rateless Coding Abdelaali Chaoub, Elhassane Ibn-Elhaj National.
Downlink Scheduling With Economic Considerations to Future Wireless Networks Bader Al-Manthari, Nidal Nasser, and Hossam Hassanein IEEE Transactions on.
Capacity Enhancement with Relay Station Placement in Wireless Cooperative Networks Bin Lin1, Mehri Mehrjoo, Pin-Han Ho, Liang-Liang Xie and Xuemin (Sherman)
UEP LT Codes with Intermediate Feedback Jesper H. Sørensen, Petar Popovski, and Jan Østergaard Aalborg University, Denmark IEEE COMMUNICATIONS LETTERS,
Multi-Edge Framework for Unequal Error Protecting LT Codes H. V. Beltr˜ao Neto, W. Henkel, V. C. da Rocha Jr. Jacobs University Bremen, Germany IEEE ITW(Information.
Synchronization of Turbo Codes Based on Online Statistics
On Coding for Real-Time Streaming under Packet Erasures Derek Leong *#, Asma Qureshi *, and Tracey Ho * * California Institute of Technology, Pasadena,
1 Unequal Error Protection Using Fountain Codes With Applications to Video Communication Shakeel Ahmad, Raouf Hamzaoui, Marwan Al-Akaidi Faculty of Technology,
Nour KADI, Khaldoun Al AGHA 21 st Annual IEEE International Symposium on Personal, Indoor and Mobile Radio Communications 1.
Sequential Soft Decision Decoding of Reed Solomon Codes Hari Palaiyanur Cornell University Prof. John Komo Clemson University 2003 SURE Program.
1 On the Channel Capacity of Wireless Fading Channels C. D. Charalambous and S. Z. Denic School of Information Technology and Engineering, University of.
Distributed Rateless Codes with UEP Property Ali Talari, Nazanin Rahnavard 2010 IEEE ISIT(International Symposium on Information Theory) & IEEE TRANSACTIONS.
OPTIMIZATION of GENERALIZED LT CODES for PROGRESSIVE IMAGE TRANSFER Suayb S. Arslan, Pamela C. Cosman and Laurence B. Milstein Department of Electrical.
Reed-Solomon Codes in Slow Frequency Hop Spread Spectrum Andrew Bolstad Iowa State University Advisor: Dr. John J. Komo Clemson University.
CHANNEL ALLOCATION FOR SMOOTH VIDEO DELIVERY OVER COGNITIVE RADIO NETWORKS Globecom 2010, FL, USA 1 Sanying Li, Tom H. Luan, Xuemin (Sherman) Shen Department.
Hongjie Zhu,Chao Zhang,Jianhua Lu Designing of Fountain Codes with Short Code-Length International Workshop on Signal Design and Its Applications in Communications,
CDC 2006, San Diego 1 Control of Discrete-Time Partially- Observed Jump Linear Systems Over Causal Communication Systems C. D. Charalambous Depart. of.
Scalable Video Multicast with Adaptive Modulation and Coding in Broadband Wireless Data Systems Peilong Li *, Honghai Zhang *, Baohua Zhao +, Sampath Rangarajan.
1 Low Latency Multimedia Broadcast in Multi-Rate Wireless Meshes Chun Tung Chou, Archan Misra Proc. 1st IEEE Workshop on Wireless Mesh Networks (WIMESH),
4 Introduction Carrier-sensing Range Network Model Distributed Data Collection Simulation 6 Conclusion 2.
Doc.: IEEE wng-r0 Contribution Labeling diversity Date: November 2013 Maciej Krasicki (Poznan University of Technology)Slide.
Coding for Multipath TCP: Opportunities and Challenges Øyvind Ytrehus University of Bergen and Simula Res. Lab. NNUW-2, August 29, 2014.
Group Multicast Capacity in Large Scale Wireless Networks
Reversible Data Hiding in Encrypted Images With Distributed Source Encoding Source: IEEE Transactions on Circuits and Systems for Video Technology Vol.26.
IEEE Protocol: Design and Performance Evaluation of An Adaptive Backoff Mechanism JSAC, vol.18, No.9, Sept Authors: F. Cali, M. Conti and.
The Capacity of Wireless Networks
Chen-Yu Lee, Jia-Fong Yeh, and Tsung-Che Chiang
Presentation transcript:

ON THE INTERMEDIATE SYMBOL RECOVERY RATE OF RATELESS CODES Ali Talari, and Nazanin Rahnavard IEEE TRANSACTIONS ON COMMUNICATIONS, VOL. 60, NO. 5, MAY

OUTLINE  Introduction  Related work  Rateless Code Design with High ISRR  RCSS: Rateless Code Symbol Sorting  Conclusion 2

INTRODUCTION  Design new rateless codes with close to optimal intermediate symbol recovery rates (ISRR) employing genetic algorithms.  Next, propose an algorithm to further improve the ISRR of the designed code, assuming an estimate of the channel erasure rate is available. 3

INTRODUCTION 4 Encoder S Decoder D Channel Limiteless Iteratively decoding z γ γ : intermediate range. Channel erasure rate

RELATED WORK 5 [4] S. Sanghavi, “Intermediate performance of rateless codes,” in Proc IEEE Inf. Theory Workshop, pp. 478–482.

RELATED WORK  Employ feedbacks from D to keep S aware of z. [5][7]  Transmit output symbols in the order of their ascending degree. [6] 6 [5] A. Kamra, V. Misra, J. Feldman, and D. Rubenstein, “Growth codes: maximizing sensor network data persistence,” in Proc Conf. Applications, Technologies, Architectures, Protocols Computer Commun., vol. 36, no. 4, pp. 255–266. [7] A. Beimel, S. Dolev, and N. Singer, “RT oblivious erasure correcting,” IEEE/ACM Trans. Netw., vol. 15, no. 6, pp. 1321–1332, [6] S. Kim and S. Lee, “Improved intermediate performance of rateless codes,” in Proc Int. Conf. Advanced Commun. Technol., ICACT, vol. 3, pp. 1682– 1686.

RATELESS CODE DESIGN WITH HIGH ISRR 7

A. DECISION VARIABLES AND OBJECTIVE FUNCTIONS 8

A. DECISION VARIABLES AND OBJECTIVE FUNCTIONS (FOR ASYMPTOTIC CASE) 9

A. DECISION VARIABLES AND OBJECTIVE FUNCTIONS (FOR FINITE K) 10

B. OPTIMIZED RATELESS CODES FOR HIGH ISRR 11 [15] K. Deb, A. Pratap, S. Agarwal, and T. Meyarivan, “A fast and elitist multiobjective genetic algorithm: NSGA-II,” IEEE Trans. Evol. Comput., vol. 6, no. 2, pp. 182–197, Apr

C. PERFORMANCE EVALUATION OF THE DESIGNED CODES 12

C. PERFORMANCE EVALUATION OF THE DESIGNED CODES 13 Summary: 1.Slightly differ from the distributions proposed in [4]. 2.The maximum degree is 19 from database observation. 3.As k decreases, large degrees are also eliminated.

C. PERFORMANCE EVALUATION OF THE DESIGNED CODES 14

C. PERFORMANCE EVALUATION OF THE DESIGNED CODES 15

RCSS: RATELESS CODED SYMBOL SORTING  The channel erasure rate ε may be available at S.  ε may be exploited as a side information to further improve the ISRR of rateless codes. 16

A. RCSS: RATELESS SYMBOL SORTING ALGORITHM 17

A. RCSS: RATELESS SYMBOL SORTING ALGORITHM 18

A. RCSS: RATELESS SYMBOL SORTING ALGORITHM 19 Input symbol Output symbol Initial() = 0 Action:

20 A. RCSS: RATELESS SYMBOL SORTING ALGORITHM 20 Input symbol Output symbol

A. RCSS: RATELESS SYMBOL SORTING ALGORITHM 21

B. RCSS LOWER AND UPPER PERFORMANCE BOUNDS  Lemma 1: The performance of RCSS is upper bounded by z = γ for ε → 0.  Lemma 2: The performance of RCSS is lower bounded by the performance of [6] (where symbols are only sorted based on their degree) for ε → 1. 22

C. COMPLEXITY AND DELAY INCURRED BY RCSS 23

D. PERFORMANCE EVALUATION OF RCSS 24

E. EMPLOYING RCSS WITH CAPACITY- ACHIEVING CODES 25

26

CONCLUSION  Design degree distributions that have optimal performance at all three selected points employing multi-objective genetic algorithms.  Proposed RCSS that exploits erasure rate ε and rearranges the transmission order of output symbols to further improve the ISRR of rateless codes. 27