Channel Capacity-Aware Distributed Encoding for Multi-View Sensing and Edge Inference
Integrated sensing and communication (ISAC) unifies wireless communication and sensing by sharing spectrum and hardware, which often incurs trade-offs between two functions due to limited resources. However, this paper shifts focus to exploring the synergy between communication and sensing, using Wi...
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Zusammenfassung: | Integrated sensing and communication (ISAC) unifies wireless communication
and sensing by sharing spectrum and hardware, which often incurs trade-offs
between two functions due to limited resources. However, this paper shifts
focus to exploring the synergy between communication and sensing, using WiFi
sensing as an exemplary scenario where communication signals are repurposed to
probe the environment without dedicated sensing waveforms, followed by data
uploading to the edge server for inference. While increased device
participation enhances multi-view sensing data, it also imposes significant
communication overhead between devices and the edge server. To address this
challenge, we aim to maximize the sensing task performance, measured by mutual
information, under the channel capacity constraint. The information-theoretic
optimization problem is solved by the proposed ADE-MI, a novel framework that
employs a two-stage optimization two-stage optimization approach: (1) adaptive
distributed encoding (ADE) at the device, which ensures transmitted bits are
most relevant to sensing tasks, and (2) multi-view Inference (MI) at the edge
server, which orchestrates multi-view data from distributed devices. Our
experimental results highlight the synergy between communication and sensing,
showing that more frequent communication from WiFi access points to edge
devices improves sensing inference accuracy. The proposed ADE-MI achieves 92\%
recognition accuracy with over $10^4$-fold reduction in latency compared to
schemes with raw data communication, achieving both high sensing inference
accuracy and low communication latency simultaneously. |
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DOI: | 10.48550/arxiv.2411.11539 |