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Simple Effective Methods for Decision-Level Fusion in Two-Stream Convolutional Neural Networks for Video Classification

机译:用于视频分类的两流卷积神经网络中决策级融合的简单有效方法

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Convolutional Neural Networks (CNNs) have recently been applied for video classification applications where various methods for combining the appearance (spatial) and motion (temporal) information from video clips are considered. The most common method for combining the spatial and temporal information for video classification is averaging prediction scores at softmax layer. Inspired by the Mycin uncertainty system for combining production rules in expert systems, this paper proposes using the Mycin formula for decision fusion in two-stream convolutional neural networks. Based on the intuition that spatial information is more useful than temporal information for video classification, this paper also proposes multiplication and asymmetrical multiplication for decision fusion, aiming to better combine the spatial and temporal information for video classification using two-stream convolutional neural networks. The experimental results show that (i) both spatial and temporal information are important, but the decision from the spatial stream should be dominating with the decision from temporal stream as complementary and (ⅱ) the proposed asymmetrical multiplication method for decision fusion significantly outperforms the Mycin method and average method as well.
机译:最近已经应用了卷积神经网络(CNNS)用于视频分类应用,其中考虑了用于组合来自视频剪辑的外观(空间)和运动(时间)信息的各种方法。用于组合视频分类的空间和时间信息的最常用方法是Softmax层的平均预测得分。本文提出了使用专家系统中的生产规则在专家系统中结合生产规则的霉菌不确定性制度的启发,采用霉素公式进行两流卷积神经网络中的决策融合。基于空间信息比视频分类的时间信息更有用,本文还提出了决策融合的乘法和不对称乘法,旨在利用双流卷积神经网络更好地结合视频分类的空间和时间信息。实验结果表明,(i)空间和时间信息都很重要,但空间流的决定应以颞流的决定作为互补,(Ⅱ)决策融合所提出的不对称倍增方法显着优于霉菌方法和平均方法。

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