標題: Compress-and-Estimate Source Coding for a Vector Gaussian Source
作者: Song, Ruiyang
Rini, Stefano
Kipnis, Alon
Goldsmith, Andrea J.
交大名義發表
National Chiao Tung University
公開日期: 1-一月-2017
摘要: We consider the remote vector source coding problem in which a vector Gaussian source is estimated from noisy linear measurements. For this problem, we derive the performance of the compress-and-estimate (CE) coding scheme and compare it to the optimal performance. In the CE coding scheme, the remote encoder compresses the noisy source observations so as to minimize a local distortion measure, independent from the joint distribution between the source and the observations. In reconstruction, the decoder, having full knowledge of the joint distribution of the source and observations, estimates the original source realization from the lossy-compressed noisy observations. For the CE scheme in the vector Gaussian case, we show that, if the code rate is less than a specific threshold, then the CE coding scheme attains the same performance as the optimal coding scheme. For code rates above this threshold, we introduce lower and upper bounds on the performance gap between the CE and the optimal scheme. The case of a two-dimensional Gaussian source observed through two noisy measurements is studied to illustrate the behavior of the performance gap.
URI: http://hdl.handle.net/11536/147039
ISSN: 2475-420X
期刊: 2017 IEEE INFORMATION THEORY WORKSHOP (ITW)
起始頁: 539
結束頁: 543
顯示於類別:會議論文