In the area of autonomous driving, navigating off-road terrains presents a unique set of challenges, from unpredictable surfaces like grass and dirt to unexpected obstacles such as bushes and puddles. In this work, we present a novel learning-based local planner that addresses these challenges by directly capturing human driving nuances from real-world demonstrations using only a monocular camera. The key features of our planner are its ability to navigate in challenging off-road environments with various terrain types and its fast learning capabilities. By utilizing minimal human demonstration data (5-10 mins), it quickly learns to navigate in a wide array of off-road conditions. The local planner significantly reduces the real world data required to learn human driving preferences. This allows the planner to apply learned behaviors to real-world scenarios without the need for manual fine-tuning, demonstrating quick adjustment and adaptability in off-road autonomous driving technology.
View on arXiv@article{nagariya2025_2502.18760, title={ Learning Autonomy: Off-Road Navigation Enhanced by Human Input }, author={ Akhil Nagariya and Dimitar Filev and Srikanth Saripalli and Gaurav Pandey }, journal={arXiv preprint arXiv:2502.18760}, year={ 2025 } }