Spatial Language Understanding for Object Search in Partially Observed City-scale Environments
Kaiyu Zheng, Deniz Bayazit, Rebecca Mathew, Ellie Pavlick, Stefanie, Tellex

TL;DR
This paper introduces SLOOP, a probabilistic framework that interprets spatial language as stochastic observations for object search in city-scale environments, improving search efficiency and success rates.
Contribution
The paper presents SLOOP, a novel POMDP-based approach that models spatial language as probabilistic observations and uses neural networks for context interpretation in large environments.
Findings
SLOOP outperforms baselines in search speed and success rate.
The approach effectively interprets ambiguous spatial prepositions.
Performance improves with increased complexity of spatial language.
Abstract
Humans use spatial language to naturally describe object locations and their relations. Interpreting spatial language not only adds a perceptual modality for robots, but also reduces the barrier of interfacing with humans. Previous work primarily considers spatial language as goal specification for instruction following tasks in fully observable domains, often paired with reference paths for reward-based learning. However, spatial language is inherently subjective and potentially ambiguous or misleading. Hence, in this paper, we consider spatial language as a form of stochastic observation. We propose SLOOP (Spatial Language Object-Oriented POMDP), a new framework for partially observable decision making with a probabilistic observation model for spatial language. We apply SLOOP to object search in city-scale environments. To interpret ambiguous, context-dependent prepositions (e.g.…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Speech and dialogue systems · Geographic Information Systems Studies
