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.

Abstract

With the growing demand for large-scale and high-quality data in edge intelligence systems, mobile robots are increasingly deployed to collect data proactively, particularly in complex environments. However, existing robot-assisted data collection methods face significant challenges in achieving reliable and efficient performance, especially in non-line-of-sight (NLoS) environments. This paper proposes a communication-and-learning dual-driven (CLD) autonomous navigation scheme that incorporates region-aware propagation characteristics and a non-point-mass robot representation. This scheme enables simultaneous optimization of navigation, communication, and learning performance. An efficient algorithm based on majorization-minimization (MM) is proposed to solve the non-convex and non-smooth CLD problem. Simulation results demonstrate that the proposed scheme achieves superior performance in collision-avoidance navigation, data collection, and model training compared to benchmark methods. It is also shown that CLD can adapt to different scenarios by flexibly adjusting the weight factor among navigation, communication and learning objectives.