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AARM Action Attention Recalibration Module for Action Recognition

机译:AARM行动注意力识别的重新校验模块

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Most of Action recognition methods deploy networks pretrained on image datasets, and a common limitation is that these networks hardly capture salient features of the video clip due to their training strategies. To address this issue, we propose Action Attention Recalibration Module (AARM), a lightweight but effective module which introduces the attention mechanism to process feature maps of the network. The proposed module is composed of two novel components: 1) convolutional attention submodule that obtains inter-channel attention maps and spatial-temporal attention maps during the convolutional stage, and 2) activation attention submodule that highlights the significant activations in the fully connected process. Based on ablation studies and extensive experiments, we demonstrate that AARM enables networks to be sensitive on informative parts and gain accuracy increasements, achieving the state-of-the-art performance on UCF101 and HMDB51.
机译:大多数动作识别方法部署在图像数据集上返回的网络,并且通常的限制是由于其培训策略,这些网络几乎不会捕获视频剪辑的突出特征。为了解决这个问题,我们提出了行动关注重新校准模块(AARM),轻量级但有效的模块引入了处理网络的要素映射的注意机制。所提出的模块由两种新组件组成:1)卷积注意子模块,可在卷积阶段期间获得通道间注意图和空间暂时注意图,以及2)激活注意子模块,突出显示完全连接过程中的显着激活。基于消融研究和广泛的实验,我们证明了AARM使网络能够对信息部件进行敏感,并获得准确性升高,实现UCF101和HMDB51上的最先进的性能。

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