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Cross-Stream Selective Networks for Action Recognition

机译:跨流选择性网络用于动作识别

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Combining multiple information streams has shown obvious improvements in video action recognition. Most existing works handle each stream independently or perform a simple combination on temporally simultaneous samples in multi-streams, which fails to make full use of the streamwise complementary property due to the negligence of the temporal pattern gaps among streams. In this paper, we propose a cross-stream selective network (CSN) to properly integrate and evaluate information in multi-streams. The proposed CSN first introduces a local selective-sampling module (LSM), which can find asynchronous correspondences among streams and construct high-correlated sample groups across multiple information streams. This LSM can effectively deal with the temporal dis-alignment among different streams, leading to a better integration of cross-stream information. We further introduce a global adaptive-weighting module (GAM). It adaptively evaluates the importance weights for each cross-stream sample group and selects temporally more important ones in action recognition. With the integration of cross-stream information, our GAM can obtain more reasonable importance than the existing single-stream weighting schemes. Extensive experiments on benchmark datasets of UCF101 and HMDB51 demonstrate the effectiveness of our approach over previous state-of-the-art methods.
机译:组合多个信息流已显示出视频动作识别方面的明显改进。大多数现有的作品独立地处理每个流或对多流中的时间同时采样执行简单的组合,由于流之间的时间模式间隙的疏忽,未能充分利用流的互补特性。在本文中,我们提出了一种跨流选择性网络(CSN),以正确集成和评估多流中的信息。提出的CSN首先引入一个本地选择性采样模块(LSM),该模块可以找到流之间的异步对应关系,并在多个信息流之间构造高相关的样本组。该LSM可以有效地处理不同流之间的时间错位,从而更好地整合跨流信息。我们进一步介绍了全局自适应加权模块(GAM)。它自适应地评估每个跨流样本组的重要性权重,并在动作识别中选择时间上更重要的重要性权重。通过整合跨流信息,与现有的单流加权方案相比,我们的GAM可以获得更合理的重要性。在UCF101和HMDB51的基准数据集上进行的大量实验证明了我们的方法比以前的最新方法有效。

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