Beyond Endpoints: Path-Centric Reasoning for Vectorized Off-Road Network Extraction
By: Wenfei Guan , Jilin Mei , Tong Shen and more
Potential Business Impact:
Maps roads in wild places automatically.
Deep learning has advanced vectorized road extraction in urban settings, yet off-road environments remain underexplored and challenging. A significant domain gap causes advanced models to fail in wild terrains due to two key issues: lack of large-scale vectorized datasets and structural weakness in prevailing methods. Models such as SAM-Road employ a node-centric paradigm that reasons at sparse endpoints, making them fragile to occlusions and ambiguous junctions in off-road scenes, leading to topological errors.This work addresses these limitations in two complementary ways. First, we release WildRoad, a gloabal off-road road network dataset constructed efficiently with a dedicated interactive annotation tool tailored for road-network labeling. Second, we introduce MaGRoad (Mask-aware Geodesic Road network extractor), a path-centric framework that aggregates multi-scale visual evidence along candidate paths to infer connectivity robustly.Extensive experiments show that MaGRoad achieves state-of-the-art performance on our challenging WildRoad benchmark while generalizing well to urban datasets. A streamlined pipeline also yields roughly 2.5x faster inference, improving practical applicability. Together, the dataset and path-centric paradigm provide a stronger foundation for mapping roads in the wild.
Similar Papers
DOGE: Differentiable Bezier Graph Optimization for Road Network Extraction
CV and Pattern Recognition
Maps roads automatically from pictures.
Automated Road Distress Detection Using Vision Transformersand Generative Adversarial Networks
CV and Pattern Recognition
Finds road cracks faster using smart computer eyes.
Inferring Driving Maps by Deep Learning-based Trail Map Extraction
CV and Pattern Recognition
Makes self-driving cars learn roads from any car.