Two-stream Deep Residual Learning with Fisher Criterion for Human Action Recognition

D. V. Sang, Hoang Trung Dung
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引用次数: 1

Abstract

Action recognition is one of the most important areas in the computer vision community. Many previous work use two-stream CNN model to obtain both spatial and temporal clues for predicting task. However, two stream are trained separately and combined later by late fusion. This strategy has overlooked the spatial-temporal features interaction. In this paper, we propose new two-stream CNN architectures that are able to learn the relation between two kinds of features. Furthermore, they can be trained end-to-end with standard back propagation algorithm. We also introduce a Fisher loss that makes features more discriminative. The experiments show that Fisher loss yields higher accuracy than using only the softmax loss.
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基于Fisher准则的两流深度残差学习人体动作识别
动作识别是计算机视觉领域最重要的领域之一。以前的许多工作都是使用双流CNN模型来获得空间和时间线索来预测任务。但是,两个流分别训练,然后通过后期融合合并。这一策略忽略了时空特征的相互作用。在本文中,我们提出了一种新的双流CNN架构,它能够学习两种特征之间的关系。此外,还可以使用标准的反向传播算法进行端到端训练。我们还引入了费雪损失,使特征更具判别性。实验表明,Fisher损失比仅使用softmax损失具有更高的精度。
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