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Channel Optimized Scalar Quantization over Orthogonal Multiple Access Channels with Memory.

机译:具有存储器的正交多路访问通道上的通道优化标量量化。

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摘要

In this thesis, the joint source-channel coding method, channel optimized scalar quantization, is applied to real-valued, correlated data. The data is sent over the orthogonal multiple access channel, with non-binary noisy discrete channels with memory as the two sub-channels. Three different schemes are compared for this system: in the first scheme encoding and decoding are performed independently, in the second scheme encoding is done independently and joint decoding is carried out, and the third scheme is with jointly optimized encoders and joint decoding. The goal is to derive optimality conditions that will result in a lower end-to-end distortion. To this end, necessary optimality conditions for the two latter schemes are fully derived and implemented for the bivariate Gaussian and bivariate Laplacian distributions of varying correlation.;The first and second methods are then further compared, by implementing them for an image transmission system. Here the images are first processed with the 2 dimensional discrete cosine transform, and then encoded using channel optimized scalar quantization. At the decoder, two different methods are used, the independent and joint decoder.;In addition to comparing the different coding methods, various channels characteristics are exploited. For example, the non-binary noisy discrete channel can be used to model memory and the 2q-ary output allows for performance improvement via soft-decision decoding. It is observed that by taking the source correlation into consideration, significant signal-to-distortion ratio gains can be achieved. For example, the highest gain incurred from the third scheme is when the bivariate Gaussian is compressed at rate 2, where the gain in signal-to-distortion ratio due to source correlation is 10.90 dB.
机译:本文将联合信源-信道编码方法,即信道优化标量量化,应用于实值,相关数据。数据通过正交多路访问信道发送,其中非二进制噪声离散信道具有内存作为两个子信道。针对该系统比较了三种不同的方案:在第一种方案中,编码和解码是独立执行的,在第二种方案中,编码是独立进行的,然后进行联合解码,第三种方案是联合优化的编码器和联合解码。目标是获得最佳条件,以降低端到端的失真。为此,针对具有不同相关性的双变量高斯分布和双变量拉普拉斯分布,完全导出并实现了后两种方案的必要最优条件。然后,通过将它们用于图像传输系统,进一步比较了第一和第二种方法。在此,首先使用二维离散余弦变换处理图像,然后使用通道优化的标量量化对图像进行编码。在解码器处,使用了两种不同的方法,即独立和联合解码器。;除了比较不同的编码方法外,还利用了各种信道特性。例如,非二进制噪声离散通道可用于对存储器建模,而2qary输出可通过软判决解码提高性能。观察到,通过考虑源相关性,可以实现显着的信噪比增益。例如,从第三种方案中获得的最高增益是在以速率2压缩双变量高斯时,其中源相关性引起的信噪比增益为10.90 dB。

著录项

  • 作者

    Preusser, Kiraseya.;

  • 作者单位

    Queen's University (Canada).;

  • 授予单位 Queen's University (Canada).;
  • 学科 Applied mathematics.;Electrical engineering.
  • 学位 M.A.Sc.
  • 年度 2017
  • 页码 101 p.
  • 总页数 101
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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