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GANav: Efficient Terrain Segmentation for Robot Navigation in Unstructured Outdoor Environments

About

We propose GANav, a novel group-wise attention mechanism to identify safe and navigable regions in off-road terrains and unstructured environments from RGB images. Our approach classifies terrains based on their navigability levels using coarse-grained semantic segmentation. Our novel group-wise attention loss enables any backbone network to explicitly focus on the different groups' features with low spatial resolution. Our design leads to efficient inference while maintaining a high level of accuracy compared to existing SOTA methods. Our extensive evaluations on the RUGD and RELLIS-3D datasets shows that GANav achieves an improvement over the SOTA mIoU by 2.25-39.05% on RUGD and 5.17-19.06% on RELLIS-3D. We interface GANav with a deep reinforcement learning-based navigation algorithm and highlight its benefits in terms of navigation in real-world unstructured terrains. We integrate our GANav-based navigation algorithm with ClearPath Jackal and Husky robots, and observe an increase of 10% in terms of success rate, 2-47% in terms of selecting the surface with the best navigability and a decrease of 4.6-13.9% in trajectory roughness. Further, GANav reduces the false positive rate of forbidden regions by 37.79%. Code, videos, and a full technical report are available at https://gamma.umd.edu/offroad/.

Tianrui Guan, Divya Kothandaraman, Rohan Chandra, Adarsh Jagan Sathyamoorthy, Kasun Weerakoon, Dinesh Manocha• 2021

Related benchmarks

TaskDatasetResultRank
Semantic segmentationRELLIS-3D
mIoU74.44
31
Semantic segmentationRUGD (standard split)
IoU (Smooth)95.15
15
Traversability EstimationCityscapes
mIoU71.6
11
Traversability EstimationACDC
IoU53.7
11
Traversability EstimationCampus
IoU53.1
11
Traversability EstimationGOOSE C (val)
IoU47.2
11
Traversability EstimationGOOSE (val)
IoU68.2
11
Traversability EstimationMountain
IoU61.2
11
Semantic segmentationDeepscene
mIoU52.62
7
Semantic segmentationRGR-C Internal Distribution-shifted (val)
mIoU (Brightness)76.19
7
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