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3 months ago

Room-Across-Room: Multilingual Vision-and-Language Navigation with Dense Spatiotemporal Grounding

Alexander Ku Peter Anderson Roma Patel Eugene Ie Jason Baldridge

Room-Across-Room: Multilingual Vision-and-Language Navigation with Dense Spatiotemporal Grounding

Abstract

We introduce Room-Across-Room (RxR), a new Vision-and-Language Navigation (VLN) dataset. RxR is multilingual (English, Hindi, and Telugu) and larger (more paths and instructions) than other VLN datasets. It emphasizes the role of language in VLN by addressing known biases in paths and eliciting more references to visible entities. Furthermore, each word in an instruction is time-aligned to the virtual poses of instruction creators and validators. We establish baseline scores for monolingual and multilingual settings and multitask learning when including Room-to-Room annotations. We also provide results for a model that learns from synchronized pose traces by focusing only on portions of the panorama attended to in human demonstrations. The size, scope and detail of RxR dramatically expands the frontier for research on embodied language agents in simulated, photo-realistic environments.

Code Repositories

jacobkrantz/VLN-CE
pytorch
Mentioned in GitHub
VegB/Diagnose_VLN
pytorch
Mentioned in GitHub
google-research-datasets/RxR
Official
tf
Mentioned in GitHub

Benchmarks

BenchmarkMethodologyMetrics
vision-and-language-navigation-on-rxrMonolingual Baseline
ndtw: 41.05
vision-and-language-navigation-on-rxrMultilingual Baseline
ndtw: 36.81

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