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Bounded Residual Gradient Networks (BReG-Net) for Facial Affect Computing

机译:面部影响计算的有界残差梯度网络(BReG-Net)

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Residual-based neural networks have shown remarkable results in various visual recognition tasks including Facial Expression Recognition (FER). Despite the tremendous efforts have been made to improve the performance of FER systems using DNNs, existing methods are not generalizable enough for practical applications. This paper introduces Bounded Residual Gradient Networks (BReG-Net) for facial expression recognition, in which the shortcut connection between the input and the output of the ResNet module is replaced with a differentiable function with a bounded gradient. This configuration prevents the network from facing the vanishing or exploding gradient problem. We show that utilizing such non-linear units will result in shallower networks with better performance. Further, by using a weighted loss function which gives a higher priority to less represented categories, we can achieve an overall better recognition rate. The results of our experiments show that BReG-Nets outperform state-of-the-art methods on three publicly available facial databases in the wild, on both the categorical and dimensional models of affect.
机译:基于残差的神经网络已在包括面部表情识别(FER)在内的各种视觉识别任务中显示了非凡的成果。尽管已经做出了巨大的努力来改善使用DNN的FER系统的性能,但是对于实际应用而言,现有的方法还不够通用。本文介绍了用于面部表情识别的有界残差梯度网络(BReG-Net),其中ResNet模块的输入和输出之间的快捷连接被带有界梯度的微分函数所替代。这种配置可以防止网络面临消失或爆炸的梯度问题。我们表明,利用这种非线性单位将导致网络浅,性能更好。此外,通过使用加权损失函数,该函数对较少代表的类别给予更高的优先级,我们可以实现总体上更好的识别率。我们的实验结果表明,在情感的分类和维度模型上,BReG-Nets在野外的三个公开可用的面部数据库上均优于最新方法。

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