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Cross-Lingual Vision-Language Navigation

Authors :
Yan, An
Wang, Xin Eric
Feng, Jiangtao
Li, Lei
Wang, William Yang
Publication Year :
2019

Abstract

Commanding a robot to navigate with natural language instructions is a long-term goal for grounded language understanding and robotics. But the dominant language is English, according to previous studies on vision-language navigation (VLN). To go beyond English and serve people speaking different languages, we collect a bilingual Room-to-Room (BL-R2R) dataset, extending the original benchmark with new Chinese instructions. Based on this newly introduced dataset, we study how an agent can be trained on existing English instructions but navigate effectively with another language under a zero-shot learning scenario. Without any training data of the target language, our model shows competitive results even compared to a model with full access to the target language training data. Moreover, we investigate the transferring ability of our model when given a certain amount of target language training data.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.1910.11301
Document Type :
Working Paper