紫罗兰使用双子座解码器为阿拉伯语图像添加字幕的视觉语言模型

Abdelrahman Mohamed, Fakhraddin Alwajih, El Moatez Billah Nagoudi, Alcides Alcoba Inciarte, M. Abdul-Mageed
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引用次数: 0

摘要

尽管图像字幕应用广泛,但在英语之外的其他语言中尚未充分发挥其潜力。例如,阿拉伯语虽然是 4 亿多人的母语,但在这一领域的应用仍显不足。这是由于缺乏标注数据和强大的阿拉伯语生成模型。我们提出了一种专用于阿拉伯语的新型视觉语言模型(配音为 Violet),从而缓解了这一问题。我们的模型基于一个视觉编码器和一个 Gemini 文本解码器,在保持生成流畅性的同时,允许视觉和语言组件之间的融合。为了训练我们的模型,我们引入了一种从现有英语数据集自动获取数据的新方法。我们还手动准备了一个新的数据集进行评估。在所有的评估数据集上,Violet 的表现都大大优于我们的基线。例如,它在人工标注数据集上的 CIDEr 得分为 61.2,在 Flickr8k 上提高了 13 分。
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Violet: A Vision-Language Model for Arabic Image Captioning with Gemini Decoder
Although image captioning has a vast array of applications, it has not reached its full potential in languages other than English. Arabic, for instance, although the native language of more than 400 million people, remains largely underrepresented in this area. This is due to the lack of labeled data and powerful Arabic generative models. We alleviate this issue by presenting a novel vision-language model dedicated to Arabic, dubbed Violet. Our model is based on a vision encoder and a Gemini text decoder that maintains generation fluency while allowing fusion between the vision and language components. To train our model, we introduce a new method for automatically acquiring data from available English datasets. We also manually prepare a new dataset for evaluation. Violet performs sizeably better than our baselines on all of our evaluation datasets. For example, it reaches a CIDEr score of 61.2 on our manually annotated dataset and achieves an improvement of 13 points on Flickr8k.
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TCE at Qur’an QA 2023 Shared Task: Low Resource Enhanced Transformer-based Ensemble Approach for Qur’anic QA USTHB at NADI 2023 shared task: Exploring Preprocessing and Feature Engineering Strategies for Arabic Dialect Identification Beyond English: Evaluating LLMs for Arabic Grammatical Error Correction Mavericks at ArAIEval Shared Task: Towards a Safer Digital Space - Transformer Ensemble Models Tackling Deception and Persuasion Violet: A Vision-Language Model for Arabic Image Captioning with Gemini Decoder
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