Robust Error Control and Optimal Bit Allocation for Image and Video Transmission Over Wireless Channels

Robust Error Control and Optimal Bit Allocation for Image and Video Transmission Over Wireless Channels

Author: Jianfei Cai

Publisher:

Published: 2002

Total Pages: 356

ISBN-13:

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Visual communications plays an increasingly important role in information infrastructures. Despite a large number of standards and commercial products for applications of visual communications, providing high quality visual information over resource-limited wireless networks still remains a major challenge. This is because of the huge data size of visual information and the complicated characteristics of wireless channels. Due to the limited bandwidth of wireless channels, it is desired that visual information is compressed by highly efficient compression schemes while, due to the time-varying error prone environments of wireless channels, controlled redundancy is necessary to be added in the compressed bitstreams in order to ensure reliable transmissions. Therefore, there is a tradeoff between efficiency and reliability. The objective of this research is to find the optimal tradeoff between efficiency and reliability for image and video transmission over wireless channels. In this dissertation, several image and video transmission systems are developed based on robust error control and optimal bit allocation. For image transmission, two systems are developed, namely, TCQ-based error-resilient coding and robust joint source-channel coding (RJSCC). In the TCQ-based error-resilient coding, DCT-transformed blocks are classified and bits are optimally allocated among different classes and different coefficients according to their importance and sensitivity to the channel noise. In RJSCC, in addition to the bit allocation in source coding, we also consider the bit allocation between source coding and channel coding. We develop an end-to-end rate-distortion (R-D) function, which incorporates both transition probability and bit error rate of a bursty channel model. Based on the R-D function, bits can be allocated in such a way that we are able to achieve an optimum tradeoff between source coding accuracy and channel error protection under a fixed bandwidth limitation. As a result, RJSCC is among the best wireless image transmission systems reported in the literature. The study for wireless image transmission leads to our research in wireless video transmission. We propose a novel pre-interleaving scheme for video streaming over bursty loss channels. The pre-interleaving scheme is able to generate the desired error patterns for video source decoding while still preserving the features of the conventional combination of channel decoding and interleaving. The pre-interleaving scheme can be applied to any standard video codecs and to both wireless channels and packet-loss channels. Finally, we show the extensive study on the rate controls in wireless video streaming systems. The study includes three aspects: the rate control for off line video coding, the rate control for rate-reduction transcoding and the rate control for adaptive wireless video streaming. We propose a rate control scheme which is able to optimally allocate bits among video frames. We demonstrate that the proposed rate control scheme can provide better quality than that of the state-of-the-art H.263 standard.


Joint Source-Channel Video Transmission

Joint Source-Channel Video Transmission

Author: Fan Zhai

Publisher: Springer Nature

Published: 2022-06-01

Total Pages: 12

ISBN-13: 3031022440

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This book deals with the problem of joint source-channel video transmission, i.e., the joint optimal allocation of resources at the application layer and the other network layers, such as data rate adaptation, channel coding, power adaptation in wireless networks, quality of service (QoS) support from the network, and packet scheduling, for efficient video transmission. Real-time video communication applications, such as videoconferencing, video telephony, and on-demand video streaming, have gained increased popularity. However, a key problem in video transmission over the existing Internet and wireless networks is the incompatibility between the nature of the network conditions and the QoS requirements (in terms, for example, of bandwidth, delay, and packet loss) of real-time video applications. To deal with this incompatibility, a natural approach is to adapt the end-system to the network. The joint source-channel coding approach aims to efficiently perform content-aware cross-layer resource allocation, thus increasing the communication efficiency of multiple network layers. Our purpose in this book is to review the basic elements of the state-of-the-art approaches toward joint source-channel video transmission for wired and wireless systems. In this book, we present a general resource-distortion optimization framework, which is used throughout the book to guide our discussions on various techniques of joint source-channel video transmission. In this framework, network resources from multiple layers are assigned to each video packet according to its level of importance. It provides not only an optimization benchmark against which the performance of other sub-optimal systems can be evaluated, but also a useful tool for assessing the effectiveness of different error control components in practical system design. This book is therefore written to be accessible to researchers, expert industrial R&D engineers, and university students who are interested in the cutting edge technologies in joint source-channel video transmission. Contents: Introduction / Elements of a Video Communication System / Joint Source-Channel Coding / Error-Resilient Video Coding / Channel Modeling and Channel Coding / Internet Video Transmission / Wireless Video Transmission / Conclusions


Recent Advances in Multimedia Signal Processing and Communications

Recent Advances in Multimedia Signal Processing and Communications

Author: Mislav Grgic

Publisher: Springer Science & Business Media

Published: 2009-10-14

Total Pages: 657

ISBN-13: 3642028993

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The rapid increase in computing power and communication speed, coupled with computer storage facilities availability, has led to a new age of multimedia applications. This book presents recent advances in Multimedia Signal Processing and Communications.


Unequal Error Protection for Compressed Video Over Noisy Channels

Unequal Error Protection for Compressed Video Over Noisy Channels

Author: Arash Vosoughi

Publisher:

Published: 2015

Total Pages: 111

ISBN-13:

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The huge amount of data embodied in a video signal is by far the biggest burden on existing wireless communication systems. Adopting an efficient video transmission strategy is thus crucial in order to deliver video data at the lowest bit rate and the highest quality possible. Unequal error protection (UEP) is a powerful tool in this regard, whose ultimate goal is to wisely provide a stronger protection for the more important data, and a weaker protection for the less important data carried by a video signal. The use of efficient video delivery techniques becomes more important when 3D video content is transmitted over a wireless channel, since it contains twice as much data as 2D video. In this dissertation, we consider the UEP problem for transmission of 3D video over wireless channels. The proposed UEP techniques entail relatively high computational complexity which lend themselves to be more suitable for video-on-demand delivery, where the time-consuming computations are done offline at the transmitter/encoder side. To adopt UEP for 3D video, we consider a general problem of joint source-channel coding (JSCC). Solving the JSCC problem yields the optimum amount of 3D video compression as well as the optimum FEC (forward error correction) code rates exploited for UEP. We first need to estimate the perceived quality of the reconstructed video at the receiver. The lack of a good objective metric for 3D video makes adopting UEP a more challenging and problematic task compared to 2D video. Fortunately, for 3D video, some quality thresholds are derived in the literature based on the PSNR (peak-signal-to-noise-ratio) metric through experimental tests. These thresholds allow us to formulate the JSCC optimization problem using the PSNR in a straightforward but different way from the typical counterpart optimization problems in the literature. More precisely, we put the constraints of the optimization problem on the quality of the reconstructed 3D video and set our goal to minimize the total bit rate. We adopt the multiview coding (MVC) extension of the H.264/AVC. We also propose a scalable variant of MVC and formulate and solve the JSCC optimization problem for it. We show that significant gains are obtained if the proposed UEP scheme is combined with asymmetric coding. We also tackle the UEP problem for the video plus depth (V+D) format. We employ the SSIM (Structural SIMilarity) metric for designing UEP for V+D, since it has been shown that PSNR does not properly characterize the perceived quality of a 3D video represented in V+D format. Moreover, the synthesized right view always shows a huge PSNR loss (even in the absence of compression), which does not even allow us to use the asymmetric coding PSNR thresholds. This motivated us to adopt the classical JSCC problem formulation, where our goal is to maximize the quality of the reconstructed left and right views, given that there is a constraint on the sum of the number of source bits and the number of FEC bits. We show that UEP provides significant gains compared to equal error protection. We also derive several interesting results; some of them are in accordance with what have already been published in the literature and some of them are not. We show that the reason for this inconsistency is that we are solving the UEP problem in a more general situation, which yields novel solutions. Lastly, we focus on UEP for video broadcasting over wireless channels. Our goal here is to design a UEP-based video broadcasting system that well serves all the users within the service area of a base station. In a service area, there exist heterogeneous users with different display resolutions operating at different bit rates. Spatially scalable video is an excellent video compression format for this scenario, since it allows a user to decode that portion of the scalable bit stream that fits its operating bit rate as well as its display resolution. We tackle this problem for a MIMO (multi-input-multi-output) channel which enables us to exploit either spatial diversity or spatial multiplexing in a multipath fading channel to increase channel reliability or throughput, respectively. We employ spatial diversity techniques, in particular the Alamouti code, to encode the base layer. We also adopt spatial multiplexing techniques, in particular the V-BLAST, to encode the enhancement layer. By controlling the power allocation between the base layer and the enhancement layer, we can control the level of protection we provide to each of them. We also show that the adoption of scalable video in our system yields much higher gains compared to non-scalable video.


Communication, Cloud and Big Data

Communication, Cloud and Big Data

Author: Hiren Kumar Deva Sarma

Publisher: ACCB Publishing

Published: 2014-12-31

Total Pages: 167

ISBN-13: 1908368039

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Analysis of big data is becoming a hot stuff for engineers, researchers and business enterprises now a days. It refers to the process of collecting, organizing and analyzing large sets of data to discover hidden patterns and other useful information. Not solely can massive information analytics assist to know the knowledge contained inside the information, however it will additionally facilitate to determine the information that is most significant to the business and future business choices. Cloud computing is the type of computing that relies on sharing computing resources rather than having local servers or personal devices to handle applications. Cloud computing aims at applying traditional supercomputing, or high-performance computing power to perform tens of trillions of computations per second, in consumer-oriented applications such as financial portfolios, to deliver personalized information, to provide data storage etc. Since big data places on networks, storage and servers, requirements arise to analyse this huge amount data on the cloud. Even cloud providers also welcome this new business opportunity of supporting big data analysis in the cloud. But in the same time they are facing various, architectural and technical hurdles. Therefore, big data analysis in cloud attacting many researchers now a days. The National Conference on Communication, Cloud and Big Data (CCB) 2014 organized by Department of Information Technology, SMIT has received keen response from researchers across the country. Each paper went through reviews process and finally, 30 papers were selected for presentation. The papers are an even mix of research topics from the fields of Communication, Cloud and Big Data and its applications in various fields of engineering and science.


Intelligent Integrated Media Communication Techniques

Intelligent Integrated Media Communication Techniques

Author: Jurij F. Tasic

Publisher: Springer Science & Business Media

Published: 2005-12-30

Total Pages: 435

ISBN-13: 0306487187

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This volume contains many examples and applied methods explaining the basic architecture of the mobile terminals. It includes sufficient introductory material to enabling even non-expert readers to understand the topics and to make a step towards system integration of complex future applications.


Channel Coding: Theory, Algorithms, and Applications

Channel Coding: Theory, Algorithms, and Applications

Author:

Publisher: Academic Press

Published: 2014-07-29

Total Pages: 687

ISBN-13: 012397223X

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This book gives a review of the principles, methods and techniques of important and emerging research topics and technologies in Channel Coding, including theory, algorithms, and applications. Edited by leading people in the field who, through their reputation, have been able to commission experts to write on a particular topic. With this reference source you will: Quickly grasp a new area of research Understand the underlying principles of a topic and its applications Ascertain how a topic relates to other areas and learn of the research issues yet to be resolved Quick tutorial reviews of important and emerging topics of research in Channel Coding Presents core principles in Channel Coding theory and shows their applications Reference content on core principles, technologies, algorithms and applications Comprehensive references to journal articles and other literature on which to build further, more specific and detailed knowledge


Recent Advances in Image and Video Coding

Recent Advances in Image and Video Coding

Author: Sudhakar Radhakrishnan

Publisher: BoD – Books on Demand

Published: 2016-11-23

Total Pages: 278

ISBN-13: 9535127756

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This book is intended to attract the attention of practitioners and researchers in academia and industry interested in challenging paradigms of image and video coding algorithms with an emphasis on recent technological developments. All the chapters are well demonstrated by various researchers around the world covering the field of image and video processing. This book highlights the current research in the image and video processing area such as image fusion, image segmentation and classification, image compression, machine vision algorithms and video compression. The entire work available in the book is mainly focusing on researchers who can do quality research in the area of image and video processing and related fields. Each chapter is an independent research which will definitely motivate the young researchers to ponder into. These eleven chapters available in five sections will be an eye-opener for all who are doing systematic research in these fields.