62 research outputs found
Progressive Image Transmission Based on Joint Source-Channel Decoding Using Adaptive Sum-Product Algorithm
A joint source-channel decoding method is designed to accelerate the iterative log-domain sum-product decoding procedure of LDPC codes as well as to improve the reconstructed image quality. Error resilience modes are used in the JPEG2000 source codec making it possible to provide useful source decoded information to the channel decoder. After each iteration, a tentative decoding is made and the channel decoded bits are then sent to the JPEG2000 decoder. The positions of bits belonging to error-free coding passes are then fed back to the channel decoder. The log-likelihood ratios (LLRs) of these bits are then modified by a weighting factor for the next iteration. By observing the statistics of the decoding procedure, the weighting factor is designed as a function of the channel condition. Results show that the proposed joint decoding methods can greatly reduce the number of iterations, and thereby reduce the decoding delay considerably. At the same time, this method always outperforms the nonsource controlled decoding method by up to 3 dB in terms of PSNR
Product Code Optimization for Determinate State LDPC Decoding in Robust Image Transmission
We propose a novel scheme for error resilient image transmission. The proposed scheme employs a product coder consisting of LDPC codes and RS codes in order to deal effectively with bit errors. The efficiency of the proposed scheme is based on the exploitation of determinate symbols in Tanner graph decoding of LDPC codes and a novel product code optimization technique based on error estimation. Experimental evaluation demonstrates the superiority of the proposed system in comparison to recent state-of-the art techniques for image transmission
Joint Task and Data Oriented Semantic Communications: A Deep Separate Source-channel Coding Scheme
Semantic communications are expected to accomplish various semantic tasks
with relatively less spectrum resource by exploiting the semantic feature of
source data. To simultaneously serve both the data transmission and semantic
tasks, joint data compression and semantic analysis has become pivotal issue in
semantic communications. This paper proposes a deep separate source-channel
coding (DSSCC) framework for the joint task and data oriented semantic
communications (JTD-SC) and utilizes the variational autoencoder approach to
solve the rate-distortion problem with semantic distortion. First, by analyzing
the Bayesian model of the DSSCC framework, we derive a novel rate-distortion
optimization problem via the Bayesian inference approach for general data
distributions and semantic tasks. Next, for a typical application of joint
image transmission and classification, we combine the variational autoencoder
approach with a forward adaption scheme to effectively extract image features
and adaptively learn the density information of the obtained features. Finally,
an iterative training algorithm is proposed to tackle the overfitting issue of
deep learning models. Simulation results reveal that the proposed scheme
achieves better coding gain as well as data recovery and classification
performance in most scenarios, compared to the classical compression schemes
and the emerging deep joint source-channel schemes
Joint Source-Channel Coding of JPEG 2000 Image Transmission Over Two-Way Multi-Relay Networks
In this paper, we develop a two-way multi-relay scheme for JPEG 2000 image transmission. We adopt a modified time-division broadcast (TDBC) cooperative protocol, and derive its power allocation and relay selection under a fairness constraint. The symbol error probability of the optimal system configuration is then derived. After that, a joint source-channel coding (JSCC) problem is formulated to find the optimal number of JPEG 2000 quality layers for the image and the number of channel coding packets for each JPEG 2000 codeblock that can minimize the reconstructed image distortion for the two users, subject to a rate constraint. Two fast algorithms based on dynamic programming (DP) and branch and bound (BB) are then developed. Simulation demonstrates that the proposed JSCC scheme achieves better performance and lower complexity than other similar transmission systems
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