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Think Global, Act Local: Dual-scale Graph Transformer for Vision-and-Language Navigation

About

Following language instructions to navigate in unseen environments is a challenging problem for autonomous embodied agents. The agent not only needs to ground languages in visual scenes, but also should explore the environment to reach its target. In this work, we propose a dual-scale graph transformer (DUET) for joint long-term action planning and fine-grained cross-modal understanding. We build a topological map on-the-fly to enable efficient exploration in global action space. To balance the complexity of large action space reasoning and fine-grained language grounding, we dynamically combine a fine-scale encoding over local observations and a coarse-scale encoding on a global map via graph transformers. The proposed approach, DUET, significantly outperforms state-of-the-art methods on goal-oriented vision-and-language navigation (VLN) benchmarks REVERIE and SOON. It also improves the success rate on the fine-grained VLN benchmark R2R.

Shizhe Chen, Pierre-Louis Guhur, Makarand Tapaswi, Cordelia Schmid, Ivan Laptev• 2022

Related benchmarks

TaskDatasetResultRank
Vision-Language NavigationR2R-CE (val-unseen)
Success Rate (SR)54
433
Vision-and-Language NavigationR2R (val unseen)
Success Rate (SR)72.8
344
Vision-and-Language NavigationREVERIE (val unseen)
SPL35.3
173
Vision-Language NavigationR2R Unseen (test)
SR69.25
134
Vision-Language NavigationR2R (test unseen)
SR69
122
Vision-Language NavigationR2R (val seen)
Success Rate (SR)79
120
Vision-and-Language NavigationR2R (val seen)
Success Rate (SR)79
68
Vision-and-Language NavigationR2R-CE (test-unseen)
SR47.1
63
Vision-and-Language NavigationREVERIE Unseen (test)
Success Rate (SR)52.51
59
Vision-and-Language NavigationRoom-to-Room (R2R) Unseen (val)
SR72
52
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