Minimizing End-to-End Latency for Joint Source-Channel Coding Systems
CoRR(2024)
摘要
While existing studies have highlighted the advantages of deep learning
(DL)-based joint source-channel coding (JSCC) schemes in enhancing transmission
efficiency, they often overlook the crucial aspect of resource management
during the deployment phase. In this paper, we propose an approach to minimize
the transmission latency in an uplink JSCC-based system. We first analyze the
correlation between end-to-end latency and task performance, based on which the
end-to-end delay model for each device is established. Then, we formulate a
non-convex optimization problem aiming at minimizing the maximum end-to-end
latency across all devices, which is proved to be NP-hard. We then transform
the original problem into a more tractable one, from which we derive the closed
form solution on the optimal compression ratio, truncation threshold selection
policy, and resource allocation strategy. We further introduce a heuristic
algorithm with low complexity, leveraging insights from the structure of the
optimal solution. Simulation results demonstrate that both the proposed optimal
algorithm and the heuristic algorithm significantly reduce end-to-end latency.
Notably, the proposed heuristic algorithm achieves nearly the same performance
to the optimal solution but with considerably lower computational complexity.
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