Share your thoughts, 1 month free Claude Pro on usSee more
WorkDL logo mark

GeNIE: A Generalizable Navigation System for In-the-Wild Environments

About

Reliable navigation in unstructured, real-world environments remains a significant challenge for embodied agents, especially when operating across diverse terrains, weather conditions, and sensor configurations. In this paper, we introduce GeNIE (Generalizable Navigation System for In-the-Wild Environments), a robust navigation framework designed for global deployment. GeNIE integrates a generalizable traversability prediction model built on SAM2 with a novel path fusion strategy that enhances planning stability in noisy and ambiguous settings. We deployed GeNIE in the Earth Rover Challenge (ERC) at ICRA 2025, where it was evaluated across six countries spanning three continents. GeNIE took first place and achieved 79% of the maximum possible score, outperforming the second-best team by 17%, and completed the entire competition without a single human intervention. These results set a new benchmark for robust, generalizable outdoor robot navigation. We will release the codebase, pretrained model weights, and newly curated datasets to support future research in real-world navigation.

Jiaming Wang, Diwen Liu, Jizhuo Chen, Jiaxuan Da, Nuowen Qian, Tram Minh Man, Harold Soh• 2025

Related benchmarks

TaskDatasetResultRank
Traversability EstimationGOOSE (val)
IoU75.9
11
Traversability EstimationCampus
IoU81.9
11
Traversability EstimationMountain
IoU81.6
11
Traversability EstimationCityscapes
mIoU81.1
11
Traversability EstimationACDC
IoU70.8
11
Traversability EstimationGOOSE C (val)
IoU50.8
11
Semantic Traversability EstimationORFD (test)
IoU62.9
9
Vision-Language NavigationReal-world Campus Routes Scout Mini (Route 1, Route 2, and Combined)
Success Rate (Route 1)15
6
Vision-Language NavigationWild simulation scene
Success Rate (SR)22
6
Vision-Language NavigationSuburban simulation scene
Success Rate (SR)27.3
6
Showing 10 of 10 rows

Other info

Follow for update