Towards Edge Intelligence via Autonomous Navigation: A Robot-Assisted Data Collection Approach
arXiv cs.RO / 4/7/2026
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Key Points
- The paper targets data collection for edge intelligence in complex, non-line-of-sight (NLoS) environments where existing robot-assisted approaches struggle with reliability and efficiency.
- It proposes a communication-and-learning dual-driven (CLD) autonomous navigation scheme that jointly optimizes navigation, communication, and learning using region-aware propagation characteristics and a non-point-mass robot model.
- A majorization-minimization (MM) based algorithm is introduced to handle the resulting non-convex, non-smooth CLD optimization problem.
- Simulation results indicate improved performance over benchmarks in collision-avoidance navigation, data collection quality, and downstream model training.
- The approach is shown to be scenario-adaptive by adjusting a weight factor that balances navigation, communication, and learning objectives.
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