SWAG-V: Explanations for Video using Superpixels Weighted by Average Gradients

Thomas Hartley, K. Sidorov, Christopher Willis, A. D. Marshall
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引用次数: 4

Abstract

CNN architectures that take videos as an input are often overlooked when it comes to the development of explanation techniques. This is despite their use in often critical domains such as surveillance and healthcare. Explanation techniques developed for these networks must take into account the additional temporal domain if they are to be successful. In this paper we introduce SWAG-V, an extension of SWAG for use with networks that take video as an input. In addition we show how these explanations can be created in such a way that they are balanced between fine and coarse explanations. By creating superpixels that incorporate the frames of the input video we are able to create explanations that better locate regions of the input that are important to the networks prediction. We compare SWAG-V against a number of similar techniques using metrics such as insertion and deletion, and weak localisation. We compute these using Kinetics-400 with both the C3D and R(2+1)D network architectures and find that SWAG-V is able to outperform multiple techniques.
swagv:使用平均梯度加权的超像素视频解释
当涉及到解释技术的开发时,将视频作为输入的CNN架构经常被忽视。尽管它们通常用于监测和医疗保健等关键领域。为这些网络开发的解释技术如果要取得成功,就必须考虑到额外的时间域。在本文中,我们介绍了SWAG的扩展SWAG- v,用于将视频作为输入的网络。此外,我们还展示了如何以一种平衡于精细和粗糙解释之间的方式创建这些解释。通过创建包含输入视频帧的超像素,我们能够创建解释,从而更好地定位对网络预测重要的输入区域。我们使用插入和删除以及弱定位等指标将swagv与许多类似的技术进行比较。我们使用具有C3D和R(2+1)D网络架构的Kinetics-400计算这些,并发现swagv能够优于多种技术。
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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