KIO-planner combines CBAM attention with a Dual Mapping mechanism of physical bounds and geometric safety shield to deliver 24 ms latency, 28.4% lower control cost, and 0.76 m obstacle clearance at 3 m/s in simulated confined environments.
Landscape-Aware Bandit Hyper-Heuristics for Online Operator Selection in UAV Inspection Routing
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abstract
UAV multi-site inspection often reduces to choosing a high-quality visiting order after target sites have been extracted from a map. This paper develops LA-BHH, a landscape-aware bandit hyper-heuristic that learns an operator-selection policy online for this routing layer. LA-BHH treats 2-opt, swap, relocate, and Or-opt moves as low-level arms, builds context from static landscape descriptors and online search-state features, and updates a LinUCB controller from improvement rewards during the same run. Experimental results on 45 generated Euclidean TSP instances show that LA-BHH achieves the best mean final gap and convergence AUC, with 0.0223 and 0.0389 respectively. It reduces final gap by 17.6\% over UCB-HH, 22.6\% over Random-HH, and 68.2\% over nearest-neighbor construction. Ablation results further show that contextual credit assignment, 2-opt repair, and stagnation-aware state use are the main contributors.
fields
cs.RO 1years
2026 1verdicts
UNVERDICTED 1representative citing papers
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KIO-planner: Attention-Guided Single-Stage Motion Planning with Dual Mapping for UAV Navigation
KIO-planner combines CBAM attention with a Dual Mapping mechanism of physical bounds and geometric safety shield to deliver 24 ms latency, 28.4% lower control cost, and 0.76 m obstacle clearance at 3 m/s in simulated confined environments.