A Stepwise, Label-based Approach for Improving the Adversarial Training in Unsupervised Video Summarization

Evlampios Apostolidis, Alexandros I. Metsai, E. Adamantidou, V. Mezaris, I. Patras
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引用次数: 33

Abstract

In this paper we present our work on improving the efficiency of adversarial training for unsupervised video summarization. Our starting point is the SUM-GAN model, which creates a representative summary based on the intuition that such a summary should make it possible to reconstruct a video that is indistinguishable from the original one. We build on a publicly available implementation of a variation of this model, that includes a linear compression layer to reduce the number of learned parameters and applies an incremental approach for training the different components of the architecture. After assessing the impact of these changes to the model's performance, we propose a stepwise, label-based learning process to improve the training efficiency of the adversarial part of the model. Before evaluating our model's efficiency, we perform a thorough study with respect to the used evaluation protocols and we examine the possible performance on two benchmarking datasets, namely SumMe and TVSum. Experimental evaluations and comparisons with the state of the art highlight the competitiveness of the proposed method. An ablation study indicates the benefit of each applied change on the model's performance, and points out the advantageous role of the introduced stepwise, label-based training strategy on the learning efficiency of the adversarial part of the architecture.
一种基于标签的逐步改进无监督视频摘要对抗训练的方法
在本文中,我们提出了提高无监督视频摘要对抗性训练效率的工作。我们的起点是SUM-GAN模型,它基于直觉创建了一个有代表性的摘要,这样的摘要应该可以重建一个与原始视频无法区分的视频。我们建立在这个模型变体的一个公开可用的实现上,它包括一个线性压缩层,以减少学习参数的数量,并应用增量方法来训练体系结构的不同组件。在评估了这些变化对模型性能的影响之后,我们提出了一个逐步的、基于标签的学习过程,以提高模型对抗部分的训练效率。在评估模型的效率之前,我们对所使用的评估协议进行了彻底的研究,并在两个基准测试数据集(即SumMe和TVSum)上检查了可能的性能。实验评估和与最新技术的比较突出了所提出方法的竞争力。一项消融研究表明了每种应用变化对模型性能的好处,并指出了引入的基于标签的逐步训练策略对体系结构对抗部分的学习效率的有利作用。
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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