视频字幕用孟加拉语加上视觉注意

Suvom Shaha, F. Shah, Amir Hossain Raj, Ashek Seum, Saiful Islam, Sifat Ahmed
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摘要

自动生成视频字幕是最具挑战性的人工智能任务之一,因为它结合了计算机视觉和自然语言处理的研究领域。对于像孟加拉语这样的复杂语言来说,这项任务更加困难,因为孟加拉语的视频字幕数据集普遍缺乏。为了克服这一挑战,我们在本研究中为MSVD数据集的视频引入了一个完全人工注释的孟加拉语字幕数据集。我们提出了一种新颖的端到端架构,使用基于注意力的解码器来生成有意义的孟加拉语视频字幕。首先,使用双向门控循环单元(Bi-GRU)将视频的空间和时间特征结合起来,生成输入特征,然后将其与嵌入的字幕特征一起馈送到注意层。这种注意机制探讨了视觉表征和文本表征之间的相互依存关系。然后,一个双层GRU利用这些组合的注意特征来生成有意义的句子。我们在我们提出的数据集上训练该模型,BLEU-4的得分为39.35%,CIDEr的得分为59.67%,ROUGE的得分为65.34%。与任何其他可用的孟加拉语视频字幕工作相比,这是最先进的结果。
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Video Captioning in Bengali With Visual Attention
Generating automatic video captions is one of the most challenging Artificial Intelligence tasks as it combines Computer Vision and Natural Language Processing research areas. The task is more difficult for a complex language like Bengali as there is a general lack of video captioning datasets in the Bengali language. To overcome this challenge, we introduce a fully human-annotated dataset of Bengali captions in this research for the videos of the MSVD dataset. We have proposed a novel end-to-end architecture with an attention-based decoder to generate meaningful video captions in the Bengali language. First, spatial and temporal features of videos are combined using Bidirectional Gated Recurrent Units (Bi-GRU) that generate the input feature, which is later fed to the attention layer along with embedded caption features. This attention mechanism explores the interdependence between visual and textual representations. Then, a double-layered GRU takes these combined attention features for generating meaningful sentences. We trained this model on our proposed dataset and achieved 39.35% in BLEU-4, 59.67% in CIDEr, and 65.34% score in ROUGE. This is the state-of-the-art result compared to any other video captioning work available in the Bengali language.
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