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Learning-Based Navigation for Indoor Mobile Robots

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This paper presents a learning-based navigation framework for indoor mobile robots. The proposed method combines a supervised neural global planner, trained from cost-aware A* expert trajectories, with the proposed Learning-Based DWA local planner, which is formulated as discrete candidate selection over the Dynamic Window Approach (DWA) action lattice. For local planning, the policy is first trained by behavior cloning and then refined by Proximal Policy Optimization (PPO) under feasibility-aware masking. The framework is implemented and evaluated in both simulated and real-world indoor environments. Experimental results show that the proposed method generates feasible global routes and reliable local motion commands for safe goal-directed navigation in the presence of obstacles. These results demonstrate the effectiveness of integrating learning-based global planning with reinforcement-learning-refined local control for indoor mobile robot navigation. The source code will be released at https://ntdathp.github.io/rl_robot_web/.

Tri-Tin Nguyen, Tien-Dat Nguyen, Gia-Uy Le, Vinh Nguyen, Vinh-Hao Nguyen• 2026

Related benchmarks

TaskDatasetResultRank
Local NavigationStatic Scenario
Path Length (m)6.2404
2
Robot navigationObstacle Scenario
Path Length (m)8.1256
2
Robot navigationSimulation
Success Rate100
2
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