Learning to hash-tag videos with Tag2Vec

A. Singh, Saurabh Saini, R. Shah, P J Narayanan
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引用次数: 1

Abstract

User-given tags or labels are valuable resources for semantic understanding of visual media such as images and videos. Recently, a new type of labeling mechanism known as hash-tags have become increasingly popular on social media sites. In this paper, we study the problem of generating relevant and useful hash-tags for short video clips. Traditional data-driven approaches for tag enrichment and recommendation use direct visual similarity for label transfer and propagation. We attempt to learn a direct low-cost mapping from video to hash-tags using a two step training process. We first employ a natural language processing (NLP) technique, skip-gram models with neural network training to learn a low-dimensional vector representation of hash-tags (Tag2Vec) using a corpus of ∼ 10 million hash-tags. We then train an embedding function to map video features to the low-dimensional Tag2vec space. We learn this embedding for 29 categories of short video clips with hash-tags. A query video without any tag-information can then be directly mapped to the vector space of tags using the learned embedding and relevant tags can be found by performing a simple nearest-neighbor retrieval in the Tag2Vec space. We validate the relevance of the tags suggested by our system qualitatively and quantitatively with a user study.
学习标签视频与Tag2Vec
用户给出的标签或标签是对图像和视频等视觉媒体进行语义理解的宝贵资源。最近,一种被称为标签的新型标签机制在社交媒体网站上越来越流行。在本文中,我们研究了为短视频片段生成相关和有用的标签的问题。传统的数据驱动的标签丰富和推荐方法使用直接的视觉相似性来进行标签转移和传播。我们尝试使用两步训练过程来学习从视频到标签的直接低成本映射。我们首先采用自然语言处理(NLP)技术,使用神经网络训练的skip-gram模型,使用约1000万个哈希标签的语料库学习哈希标签的低维向量表示(Tag2Vec)。然后我们训练一个嵌入函数将视频特征映射到低维Tag2vec空间。我们在29类带有标签的短视频片段中学习了这种嵌入。然后,使用学习嵌入将没有任何标签信息的查询视频直接映射到标签向量空间,并通过在Tag2Vec空间中执行简单的最近邻检索来找到相关标签。我们通过用户研究定性和定量地验证我们系统建议的标签的相关性。
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