基于语义的阿拉伯语视频字幕时态注意网络

Adel Jalal Yousif , Mohammed H. Al-Jammas
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引用次数: 0

摘要

近年来,针对计算机视觉和自然语言之间的差距的研究激增。在像阿拉伯世界这样一个语言多样化的地区,建立一种机制以促进对母语视觉方面的理解是至关重要的。提出了一种基于CNN和LSTM的编码器-解码器模式的阿拉伯语视频字幕方法。我们采用时间注意机制以及语义特征来将关键帧与相关语义标签对齐。由于缺乏阿拉伯语字幕数据集,我们使用谷歌的机器翻译系统为MSVD和MSR-VTT数据集生成阿拉伯语字幕,可用于训练端到端阿拉伯语视频字幕模型。语义特征是从一个神经语义表示网络中提取出来的,该网络专门针对阿拉伯语标签进行了训练,以便更好地理解。像阿拉伯语这样的闪族语言很大程度上归因于复杂的形态学,这给视频字幕带来了挑战。我们通过使用AraBERT模型作为预处理工具来缓解这些困难。综合实验结果表明,与最先进的模型相比,该方法在两个广泛使用的基准上具有优越的性能:在MSVD上获得72.1%的CIDEr分数,在MSR-VTT上获得38.0%的CIDEr分数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Semantic-based temporal attention network for Arabic Video Captioning
In recent years, there has been a surge in active research aiming to bridge the gap between computer vision and natural language. In a linguistically diverse region like the Arab world, it is essential to establish a mechanism that facilitates the understanding of visual aspects in native languages. Presents an Arabic video captioning method using an encoder–decoder paradigm based on CNN and LSTM. We employ a temporal attention mechanism along with semantic features to align keyframes with relevant semantic tags. Due to the lack of an Arabic captioning dataset, we use Google’s machine translation system to generate Arabic captions for the MSVD and MSR-VTT datasets, which can be used to train end-to-end Arabic video captioning models. The semantic features are extracted from a neural semantic representation network, which has been specifically trained on Arabic tags for better understanding. Semitic languages like Arabic are heavily attributed to complex morphology, which poses challenges for video captioning. We alleviate these difficulties by employing the AraBERT model as a preprocessing tool. Comprehensive experimental results demonstrate the superior performance of the proposed method compared to state-of-the-art models on two widely-used benchmarks: achieving a CIDEr score of 72.1% on MSVD and 38.0% on MSR-VTT.
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