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FOAM: A Follower-aware Speaker Model For Vision-and-Language Navigation

Zi-Yi Dou, Nanyun Peng

2022Proceedings of the 2022 Conference of the North American Chapter of the Association for Computational Linguistics: Human Language Technologies13 citationsDOIOpen Access PDF

Abstract

The speaker-follower models have proven to be effective in vision-and-language navigation, where a speaker model is used to synthesize new instructions to augment the training data for a follower navigation model. However, in many of the previous methods, the generated instructions are not directly trained to optimize the performance of the follower. In this paper, we present FOAM, a FOllower-Aware speaker Model that is constantly updated given the follower feedback, so that the generated instructions can be more suitable to the current learning state of the follower. Specifically, we optimize the speaker using a bi-level optimization framework and obtain its training signals by evaluating the follower on labeled data. Experimental results on the Room-to-Room and Room-across-Room datasets demonstrate that our methods can outperform strong baseline models across settings. Analyses also reveal that our generated instructions are of higher quality than the baselines. 1

Topics & Concepts

Computer scienceBaseline (sea)Speaker recognitionQuality (philosophy)Language modelSpeech recognitionState (computer science)Artificial intelligenceData modelingHuman–computer interactionDatabaseOceanographyGeologyAlgorithmPhilosophyEpistemologyMultimodal Machine Learning ApplicationsSpeech and dialogue systemsNatural Language Processing Techniques