Bench-Marking And Improving Arabic Automatic Image Captioning Through The Use Of Multi-Task Learning Paradigm
Muhy Eddin Za'ter, Bashar Talafha

TL;DR
This paper introduces benchmarks and explores multi-task learning to improve Arabic image captioning, demonstrating that such techniques enhance performance but still lag behind English captioning.
Contribution
It provides unified datasets and benchmarks for Arabic image captioning and investigates multi-task learning and word embeddings to boost performance.
Findings
Multi-task learning improves caption quality.
Pre-trained word embeddings enhance results.
Arabic captioning still lags behind English.
Abstract
The continuous increase in the use of social media and the visual content on the internet have accelerated the research in computer vision field in general and the image captioning task in specific. The process of generating a caption that best describes an image is a useful task for various applications such as it can be used in image indexing and as a hearing aid for the visually impaired. In recent years, the image captioning task has witnessed remarkable advances regarding both datasets and architectures, and as a result, the captioning quality has reached an astounding performance. However, the majority of these advances especially in datasets are targeted for English, which left other languages such as Arabic lagging behind. Although Arabic language, being spoken by more than 450 million people and being the most growing language on the internet, lacks the fundamental pillars it…
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Taxonomy
TopicsMultimodal Machine Learning Applications · Advanced Image and Video Retrieval Techniques
