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Touchdown: Natural Language Navigation and Spatial Reasoning in Visual Street Environments

About

We study the problem of jointly reasoning about language and vision through a navigation and spatial reasoning task. We introduce the Touchdown task and dataset, where an agent must first follow navigation instructions in a real-life visual urban environment, and then identify a location described in natural language to find a hidden object at the goal position. The data contains 9,326 examples of English instructions and spatial descriptions paired with demonstrations. Empirical analysis shows the data presents an open challenge to existing methods, and qualitative linguistic analysis shows that the data displays richer use of spatial reasoning compared to related resources.

Howard Chen, Alane Suhr, Dipendra Misra, Noah Snavely, Yoav Artzi• 2018

Related benchmarks

TaskDatasetResultRank
Object Goal NavigationHM3D-OVON Seen (val)
SR41.3
44
Object Goal NavigationHM3D-OVON unseen (val)
Success Rate18.3
43
Object Goal NavigationHM3D-OVON Seen-Synonyms (val)
SR29.4
35
Open-set ObjectGoal NavigationHM3D-OVON unseen (val)
SR18.3
28
Open-Vocabulary Object Goal NavigationHM3D-OVON (val-seen)
SR41.3
21
Open-Vocabulary Object Goal NavigationHM3D-OVON seen-syn (val)
SR29.4
21
Vision-Language NavigationTOUCHDOWN (dev)
Task Completion Rate (TC)1.11e+3
17
Vision-Language NavigationTOUCHDOWN (test)
TC965
17
Vision-and-Language NavigationMap2seq (test)
TC17
10
Vision-and-Language NavigationMap2seq (dev)
TC0.182
10
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