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Residual attention unit for action recognition

机译:残余注意力单元,用于动作识别

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摘要

3D CNNs are powerful tools for action recognition that can intuitively extract spatio-temporal features from raw videos. However, most of the existing 3D CNNs have not fully considered the disadvantageous effects of the background motion that frequently appears in videos. The background motion is usually misclassified as a part of human action, which may undermine modeling the dynamic pattern of the action. In this paper, we propose the residual attention unit (RAU) to address this problem. RAU aims to suppress the background motion by upweighting the values associated with the foreground region in the feature maps. Specifically, RAU contains two separate submodules in parallel, i.e., spatial attention as well as channel-wise attention. Given an intermediate feature map, the spatial attention works in a bottom-up top-down manner to generate the attention mask, while the channel-wise attention recalibrates the feature responses of all channels automatically. As applying the attention mechanism directly to the input features may lead to the loss of discriminative information, we design a bypass to preserve the integrity of the original features by a shortcut connection between the input and output of the attention module. Notably, our RAU can be embedded into 3D CNNs easily and enables end-to-end training along with the networks. The experimental results on UCF101 and HMDB51 demonstrate the validity of our RAU.
机译:3D CNN是用于动作识别的强大工具,可以直观地从原始视频中提取时空特征。但是,大多数现有的3D CNN尚未完全考虑经常出现在视频中的背景运动的不利影响。背景运动通常被错误地归类为人类动作的一部分,这可能会破坏对动作动态模式的建模。在本文中,我们提出了剩余注意力单元(RAU)来解决这个问题。 RAU的目的是通过在特征图中增加与前景区域关联的值来抑制背景运动。具体来说,RAU包含两个并行的独立子模块,即空间注意力和通道注意力。给定一个中间特征图,空间注意力以自下而上,自上而下的方式工作以生成注意力遮罩,而逐通道注意则自动重新校准所有通道的特征响应。由于将注意力机制直接应用于输入特征可能会导致区分信息的丢失,因此我们设计了一种旁路,通过注意力模块的输入和输出之间的快捷连接来保留原始特征的完整性。值得注意的是,我们的RAU可以轻松地嵌入3D CNN中,并可以与网络一起进行端到端培训。在UCF101和HMDB51上的实验结果证明了我们的RAU的有效性。

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