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Characterizing the impact of using features extracted from pre-trained models on the quality of video captioning sequence-to-sequence models

2019-11-22 12:06:19
Menatallh Hammad, May Hammad, Mohamed Elshenawy

Abstract

The task of video captioning, that is, the automatic generation of sentences describing a sequence of actions in a video, has attracted an increasing attention recently. The complex and high-dimensional representation of video data makes it difficult for a typical encoder-decoder architectures to recognize relevant features and encode them in a proper format. Video data contains different modalities that can be recognized using a mix image, scene, action and audio features. In this paper, we characterize the different features affecting video descriptions and explore the interactions among these features and how they affect the final quality of a video representation. Building on existing encoder-decoder models that utilize limited range of video information, our comparisons show how the inclusion of multi-modal video features can make a significant effect on improving the quality of generated statements. The work is of special interest to scientists and practitioners who are using sequence-to-sequence models to generate video captions.

Abstract (translated)

URL

https://arxiv.org/abs/1911.09989

PDF

https://arxiv.org/pdf/1911.09989.pdf


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