Demystifying Multi-Faceted Video Summarization: Tradeoff Between Diversity, Representation, Coverage and Importance

Vishal Kaushal, Rishabh K. Iyer, Khoshrav Doctor, Anurag Sahoo, P. Dubal, S. Kothawade, Rohan Mahadev, Kunal Dargan, Ganesh Ramakrishnan
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引用次数: 9

Abstract

This paper addresses automatic summarization of videos in a unified manner. In particular, we propose a framework for multi-faceted summarization for extractive, query base and entity summarization (summarization at the level of entities like objects, scenes, humans and faces in the video). We investigate several summarization models which capture notions of diversity, coverage, representation and importance, and argue the utility of these different models depending on the application. While most of the prior work on submodular summarization approaches has focused on combining several models and learning weighted mixtures, we focus on the explainability of different models and featurizations, and how they apply to different domains. We also provide implementation details on summarization systems and the different modalities involved. We hope that the study from this paper will give insights into practitioners to appropriately choose the right summarization models for the problems at hand.
揭开多面视频摘要的神秘面纱:多样性、代表性、覆盖面和重要性之间的权衡
本文研究了一种统一的视频自动摘要方法。特别地,我们提出了一个用于抽取、查询库和实体摘要(如视频中的对象、场景、人和面孔等实体级别的摘要)的多方面摘要框架。我们研究了几种总结模型,这些模型捕捉了多样性、覆盖率、代表性和重要性的概念,并根据应用讨论了这些不同模型的效用。虽然之前关于子模块总结方法的大部分工作都集中在组合几个模型和学习加权混合上,但我们关注的是不同模型和特征的可解释性,以及它们如何应用于不同的领域。我们还提供了摘要系统的实施细节和所涉及的不同模式。我们希望本文的研究能给实践者提供一些见解,帮助他们针对手头的问题选择正确的总结模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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