This reporistory contains the test-dev data of the paper "xGQA: Cross-lingual Visual Question Answering".

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Deep LearningxGQA
Overview

xGQA

This reporistory contains the test-dev data of the paper "xGQA: Cross-lingual Visual Question Answering".

xGQA builds on the original work of Hudson et al. 2019: GQA: A New Dataset for Real-World Visual Reasoning and Compositional Question Answering. The training data can be downloaded here.

Overview

The repository is structured as follows:

  • data/zero_shot/ contains the xGQA test-dev files for all 8 languages
  • data/few_shot/ contains the new standard splits for few shot learning. The number in the file name indicates how many distinct images the split includes. i.e. train_10.json implies that this subset contains questions about 10 distinct images.

Training Data

Please download the English training data of GQA (Hudson et al. 2019) here.

Zero-Shot Results

Zero-shot transfer results on xGQA when transferring from English GQA. Average accuracy is reported. Mean scores are not averaged over the source language (English).

model en de pt ru id bn ko zh mean
M3P 58.43 23.93 24.37 20.37 22.57 15.83 16.90 18.60 20.37
OSCAR+Emb 62.23 17.35 19.25 10.52 18.26 14.93 17.10 16.41 16.26
OSCAR+Ada 60.30 18.91 27.02 17.50 18.77 15.42 15.28 14.96 18.27
mBERTAda 56.25 29.76 30.37 24.42 19.15 15.12 19.09 24.86 23.25

Few-Shot

Few-shot dataset sizes. The GQA test-dev set is split into new development, test sets, and training splits of different sizes. We maintain the distribution of structural types in each split.

Set Test Dev Train
#Images 300 50 1 5 10 20 25 48
#Questions 9666 1422 27 155 317 594 704 1490

Citation

If you find this repository helpful, please cite our paper "xGQA: Cross-lingual Visual Question Answering":

@article{pfeiffer-etal-2021-xGQA,
    title={{xGQA: Cross-Lingual Visual Question Answering}},
    author={ Jonas Pfeiffer and Gregor Geigle and Aishwarya Kamath and Jan-Martin O. Steitz and Stefan Roth and Ivan Vuli{\'{c}} and Iryna Gurevych},
    journal = "arXiv preprint", 
    year = "2021",  
    url = "https://arxiv.org/pdf/2109.06082.pdf"
}

Shield: CC BY 4.0

This work is licensed under a Creative Commons Attribution 4.0 International License.

CC BY 4.0

Owner
AdapterHub
AdapterHub
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