用过采样滤波器组代码对图像传输系统中的脉冲噪声进行校正

S. Marinkovic, C. Guillemot
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引用次数: 2

摘要

基于块变换和过采样滤波器组(OFB)的量化帧展开最近被认为是在噪声信道上进行擦除和容错信号传输的联合源信道码。本文研究了量化OFB信号展开中的综合征解码问题,特别是误差定位与校正问题。误差定位问题被视为一个多假设检验问题。这些测试是由在各种假设的脉冲噪声位置和在接收样本的若干连续窗口(考虑到卷积码的编码记忆)下的综合征的联合概率密度函数导出的。然后通过在最小二乘意义上求解综合症方程来估计误差幅度。消息信号由一个伪逆接收器从校正后的接收信号重建。将该算法应用于基于过采样小波滤波器组的图像源信道联合编码(JSCC)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Impulse noise correction in an image transmission system by means of an oversampled filter bank code
Quantized frame expansions based on block transforms and oversampled filter banks (OFB) have been considered recently as joint source-channel codes for erasure and error resilient signal transmission over noisy channels. This paper examines the problem of syndrome decoding and especially of error localization and correction in quantized OFB signal expansions. The error localization problem is treated as an M-ary hypothesis testing problem. The tests are derived from the joint probability density function of the syndromes under various hypothesis of impulse noise positions and in a number of consecutive windows of the received samples (to account for the encoding memory of the convolutional code). The error amplitudes are then estimated from the syndrome equations by solving them in the least square sense. The message signal is reconstructed from the corrected received signal by a pseudoinverse receiver. The algorithm is applied to joint source and channel coding (JSCC) of images based on oversampled wavelet filter banks.
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