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Convolutional Network with Densely Backward Attention for Facial Expression Recognition

机译:卷积网络与面部表情识别密集地关注

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The emergence of convolutional neural network (CNN) has enabled facial expression recognition to accomplish significant outcomes nowadays. However, while existing multistream networks are subject to costly computation, the attention- embedded approaches do not involve multiple levels of semantic context in the predefined CNN. Based on the observation that emotions via a person's face are fusion of various muscular modalities, relying upon the outputs and corresponding attentional features of the deepest layer in the CNN is insufficient due to loss of informative details through multiple sub-sampling stages. Therefore, this paper introduces a CNN with densely backward attention to leverage the aggregation of channel-wise attention at multi-level features in a backbone network for reaching high recognition performance with cost-effective resource consumption. Particularly, cross-channel semantic information in high-level features are exploited densely to recalibrate finegrained details in low-level versions. Then, a step of multi-level aggregation is further executed for thorougly involving spatial representations of important facial modalities. As a consequence, the proposed approach gains highest mean class accuracy of 79.37% on RAF-DB, which is competitive with the state-of-the- arts.
机译:卷积神经网络(CNN)的出现使面部表情识别使得现在实现重大结果。然而,虽然现有的多际网络受到昂贵的计算,但是注意力嵌入的方法不涉及预定义的CNN中的多个级别的语义上下文。基于观察到通过人的脸部的情绪是各种肌肉模式的融合,依赖于CNN中最深层的输出和相应的注意力,由于通过多个子采样阶段丢失了信息性细节。因此,本文介绍了一种CNN,具有密集的落后注意,以利用骨干网中的多级特征在骨干网中的聚集,以达到具有成本效益的资源消耗的高识别性能。特别地,高级功能中的跨通道语义信息密集地密集地重新校准低级版本中的细节。然后,进一步执行多级聚合的步骤,用于涉及重要面部方式的空间表示。因此,拟议的方法在RAF-DB上获得了最高的平均阶级准确性,其与最先进的竞争对手竞争。

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