ITITApr 29

Distributed Multi-View Vision-Only RSSI Estimation

arXiv:2604.2673810.6
Predicted impact top 90% in IT · last 90 daysOriginality Incremental advance
AI Analysis

For wireless network management, this provides a proactive, low-overhead RSSI estimation method that overcomes limitations of feedback-based and existing vision-based approaches.

The paper tackles RSSI estimation for wireless link management using a vision-only approach. MulViT-TF achieves RMSE reductions of up to 26.3% and improves 3dB error coverage by up to 13.8 percentage points over single-view baselines.

Received Signal Strength Indicator (RSSI) estimation is essential for wireless link management, yet conventional feedback-based approaches incur uplink overhead, suffer from measurement instability, and are subject to inherent feedback loop latency, rendering proactive adaptation infeasible. Although vision-based approaches have been explored, existing methods remain limited by hardware dependency or auxiliary inputs, and lack the spatial diversity needed to resolve camera-side NLoS conditions. To address these limitations, we propose MulViT-TF, a vision-only RSSI estimation framework that exploits distributed multi-view observations through Transformer-based fusion, achieving complementary spatial coverage without any auxiliary sensing inputs. Experimental results across two distinct indoor scenes demonstrate that MulViT-TF achieves RMSE reductions of up to 26.3% and improves the 3dB error coverage by up to 13.8 percentage points over the best-performing single-view baseline, while using fewer FLOPs and parameters.

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