Challenge: a new study examines zero-shot cross-lingual transfer of vision-language models . we study multilingual text-to-video search in non-English languages without annotations .
Approach: They propose a Transformer-based model that learns contextual multilingual multimodal embeddings . they propose 'zero-shot cross-lingual transfer' to improve multilingual search .
Outcome: The proposed model outperforms baselines on multilingual text-to-video search and multilingual image search on VTT and VATEX.

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