Joint source and channel coding for MIMO systems: Is it better to be robust or quick?
Tim Holliday, Andrea J. Goldsmith, and H. Vincent Poor

TL;DR
This paper develops an optimization framework for MIMO systems to balance diversity, multiplexing, and delay, minimizing end-to-end distortion through analytical and dynamic programming approaches, considering both delay constraints and ARQ retransmissions.
Contribution
It introduces a comprehensive framework for optimizing the diversity-multiplexing-delay tradeoff in MIMO systems, including adaptive strategies for delay-sensitive scenarios.
Findings
Optimal operating points on the tradeoff curve minimize distortion.
ARQ retransmissions enhance diversity and reduce distortion.
Adaptive policies outperform static configurations in delay-sensitive systems.
Abstract
We develop a framework to optimize the tradeoff between diversity, multiplexing, and delay in MIMO systems to minimize end-to-end distortion. We first focus on the diversity-multiplexing tradeoff in MIMO systems, and develop analytical results to minimize distortion of a vector quantizer concatenated with a space-time MIMO channel code. In the high SNR regime we obtain a closed-form expression for the end-to-end distortion as a function of the optimal point on the diversity-multiplexing tradeoff curve. For large but finite SNR we find this optimal point via convex optimization. We then consider MIMO systems using ARQ retransmission to provide additional diversity at the expense of delay. For sources without a delay constraint, distortion is minimized by maximizing the ARQ window size. This results in an ARQ-enhanced multiplexing-diversity tradeoff region, with distortion minimized over…
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