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Robust Image Coding Based Upon Compressive Sensing

机译:基于压缩感知的鲁棒图像编码

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摘要

Multiple description coding (MDC) is one of the widely used mechanisms to combat packet-loss in non-feedback systems. However, the number of descriptions in the existing MDC schemes is very small (typically 2). With the number of descriptions increasing, the coding complexity increases drastically and many decoders would be required. In this paper, the compressive sensing (CS) principles are studied and an alternative coding paradigm with a number of descriptions is proposed based upon CS for high packet loss transmission. Two-dimentional discrete wavelet transform (DWT) is applied for sparse representation. Unlike the typical wavelet coders (e.g., JPEG 2000), DWT coefficients here are not directly encoded, but re-sampled towards equal importance of information instead. At the decoder side, by fully exploiting the intra-scale and inter-scale correlation of multiscale DWT, two different CS recovery algorithms are developed for the low-frequency subband and high-frequency subbands, respectively. The recovery quality only depends on the number of received CS measurements (not on which of the measurements that are received). Experimental results show that the proposed CS-based codec is much more robust against lossy channels, while achieving higher rate-distortion (R-D) performance compared with conventional wavelet-based MDC methods and relevant existing CS-based coding schemes.
机译:多描述编码(MDC)是抗击非反馈系统中数据包丢失的一种广泛使用的机制。但是,现有MDC方案中的描述数量很少(通常为2)。随着描述数量的增加,编码复杂度急剧增加,并且将需要许多解码器。本文研究了压缩感知(CS)原理,并提出了一种基于CS的高编码丢包率传输的替代编码范例。二维离散小波变换(DWT)用于稀疏表示。与典型的小波编码器(例如,JPEG 2000)不同,这里的DWT系数不是直接编码的,而是朝着信息的同等重要性重新采样。在解码器端,通过充分利用多尺度DWT的尺度内和尺度间相关性,分别针对低频子带和高频子带开发了两种不同的CS恢复算法。恢复质量仅取决于接收到的CS测量的数量(而不取决于接收到哪些测量)。实验结果表明,与传统的基于小波的MDC方法和相关的现有的基于CS的编码方案相比,所提出的基于CS的编解码器对有损信道的鲁棒性更高,同时实现了更高的速率失真(R-D)性能。

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