Robust and Interpretable Grounding of Spatial References

with Relation Networks

Tsung-Yen Yang*, Andrew S. Lan^, Karthik Narasimhan*

*Princeton University, Princeton, NJ

^University of Massachusetts, Amherst, MA

{ty3, karthikn}@princeton.edu, andrewlan@cs.umass.edu


Abstract

Learning representations of spatial references in natural language is a key challenge in tasks like autonomous navigation and robotic manipulation. Recent work has investigated various neural architectures for learning multi-modal representations for spatial concepts. However, the lack of explicit reasoning over entities makes such approaches vulnerable to noise in input text or state observations. In this paper, we develop effective models for understanding spatial references in text that are robust and interpretable, without sacrificing performance. We design a text-conditioned whose parameters are dynamically computed with a cross-modal attention module to capture fine-grained spatial relations between entities. This design choice provides interpretability of learned intermediate outputs. Experiments across three tasks demonstrate that our model achieves superior performance, with a 17% improvement in predicting goal locations and a 15% improvement in robustness compared to state-of-the-art systems.

Code to Reproduce Results

Code