基于信息瓶颈的视频动作识别正则化框架

Jiawei Fan, Yu Zhao, Xie Yu, Lihua Ma, Junqi Liu, Fangqiu Yi, Boxun Li
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引用次数: 1

摘要

根据信息瓶颈原理,最优表示应该包含最大的任务相关信息和最小的任务无关信息。在视频动作识别中,基于CNN的方法通过对时间上下文进行建模,获得了更好的时空表征。然而,这些方法的泛化程度仍然很低。在本文中,我们提出了一种基于信息瓶颈原理的适度优化方法,称为双视图时间正则化(DTR),以在不牺牲模型效率的情况下有效地通用视频表示。一方面,我们设计了双视图正则化(Dual-view Regularization, DR)来约束任务无关信息,可以有效压缩背景和无关运动信息;另一方面,我们设计了时间正则化(TR),通过寻找帧之间的最优差来保持任务相关信息,这有利于提取足够的运动信息。实验结果表明:(1)DTR与时间建模和数据增强是正交的,在基于模型的方法和基于数据的方法上都得到了一般性的改进;(2) DTR在7个不同的数据集上都是有效的,特别是在以运动为中心的数据集,即SSv1/ SSv2上,DTR在前1名的准确率上获得了6%/3.8%的绝对提升。
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DTR: An Information Bottleneck Based Regularization Framework for Video Action Recognition
An optimal representation should contain the maximum task-relevant information and minimum task-irrelevant information, as revealed from Information Bottleneck Principle. In video action recognition, CNN based approaches have obtained better spatio-temporal representation by modeling temporal context. However, these approaches still suffer low generalization. In this paper, we propose a moderate optimization based approach called Dual-view Temporal Regularization (DTR) based on Information Bottleneck Principle for an effective and generalized video representation without sacrificing any efficiency of the model. On the one hand, we design Dual-view Regularization (DR) to constrain task-irrelevant information, which can effectively compress background and irrelevant motion information. On the other hand, we design Temporal Regularization (TR) to maintain task-relevant information by finding an optimal difference between frames, which benefits extracting sufficient motion information. The experimental results demonstrate: (1) DTR is orthogonal to temporal modeling as well as data augmentation, and it achieves general improvement on both model-based and data-based approaches; (2) DTR is effective among 7 different datasets, especially on motion-centric datasets i.e. SSv1/ SSv2, in which DTR gets 6%/3.8% absolute gains in top-1 accuracy.
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