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Attention Clusters: Purely Attention Based Local Feature Integration for Video Classification

机译:注意集群:基于纯粹注意的局部特征集成,用于视频分类

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Recently, substantial research effort has focused on how to apply CNNs or RNNs to better capture temporal patterns in videos, so as to improve the accuracy of video classification. In this paper, however, we show that temporal information, especially longer-term patterns, may not be necessary to achieve competitive results on common trimmed video classification datasets. We investigate the potential of a purely attention based local feature integration. Accounting for the characteristics of such features in video classification, we propose a local feature integration framework based on attention clusters, and introduce a shifting operation to capture more diverse signals. We carefully analyze and compare the effect of different attention mechanisms, cluster sizes, and the use of the shifting operation, and also investigate the combination of attention clusters for multimodal integration. We demonstrate the effectiveness of our framework on three real-world video classification datasets. Our model achieves competitive results across all of these. In particular, on the large-scale Kinetics dataset, our framework obtains an excellent single model accuracy of 79.4% in terms of the top-1 and 94.0% in terms of the top-5 accuracy on the validation set.
机译:最近,大量的研究工作集中在如何应用CNN或RNN来更好地捕获视频中的时间模式,从而提高视频分类的准确性。但是,在本文中,我们显示了时间信息(尤其是长期模式)对于在常见的经过修剪的视频分类数据集上获得竞争性结果可能不是必需的。我们研究了纯粹基于注意力的局部特征集成的潜力。考虑到视频分类中此类特征的特征,我们提出了一种基于注意力聚类的局部特征集成框架,并引入了一种移位操作以捕获更多种不同的信号。我们仔细分析并比较了不同注意力机制,集群大小和移位操作的使用效果,并研究了注意力集群的组合用于多模式整合。我们在三个现实世界的视频分类数据集上证明了我们框架的有效性。我们的模型在所有这些方面均取得了竞争性结果。特别是,在大规模动力学数据集上,我们的框架在验证集上获得了前1名的极佳单模型准确性,分别为前7名和94.0%,前5名为94.0%。

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