Our new X account is live! Follow @wizwand_team for updates
WorkDL logo mark

Learning hierarchical relationships for object-goal navigation

About

Direct search for objects as part of navigation poses a challenge for small items. Utilizing context in the form of object-object relationships enable hierarchical search for targets efficiently. Most of the current approaches tend to directly incorporate sensory input into a reward-based learning approach, without learning about object relationships in the natural environment, and thus generalize poorly across domains. We present Memory-utilized Joint hierarchical Object Learning for Navigation in Indoor Rooms (MJOLNIR), a target-driven navigation algorithm, which considers the inherent relationship between target objects, and the more salient contextual objects occurring in its surrounding. Extensive experiments conducted across multiple environment settings show an $82.9\%$ and $93.5\%$ gain over existing state-of-the-art navigation methods in terms of the success rate (SR), and success weighted by path length (SPL), respectively. We also show that our model learns to converge much faster than other algorithms, without suffering from the well-known overfitting problem. Additional details regarding the supplementary material and code are available at https://sites.google.com/eng.ucsd.edu/mjolnir.

Yiding Qiu, Anwesan Pal, Henrik I. Christensen• 2020

Related benchmarks

TaskDatasetResultRank
ObjectNaviTHOR Seen class (18/4)
Success Rate (SR)81.2
5
ObjectNaviTHOR Unseen class (18/4)
SR90.7
5
ObjectNaviTHOR Unseen class (14/8)
Success Rate83
5
ObjectNaviTHOR Seen class (14/8)
Success Rate78.8
5
ExplorationIsaacSim Beechwood (unseen)
Failure Case Rate (FCR)39.2
4
ExplorationIsaacSim Chemistry (unseen)
FCR37.4
4
ExplorationIsaacSim Ihlen (unseen)
FCR0.144
4
Showing 7 of 7 rows

Other info

Follow for update