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Learnable pooling weights for facial expression recognition

机译:用于面部表情识别的学习汇集重量

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Pooling layers are spatial down-sampling layers used in convolutional neural networks (CNN) to gradually downscale the feature map, increase the receptive field size and reduce the number of the parameters in the model. The use of pooling layers leads to less computing complexity and memory consumption reduction but also introduces invariance to certain filter distortions which may induce subtle detail loss. This behaviour is undesired for some fine-grained recognition tasks such as facial expression recognition (FER) which highly relies on specific regional distortion detection. In this paper, we introduce a more filter distortion aware pooling layer based on kernel functions. The proposed pooling reduces the feature map dimensions while keeping track of the majority of the information fed to the next layer instead of ignoring part of them. The experiments on RAF, FER2013 and ExpW databases demonstrate the benefits of such layer and show that our model achieves competitive results with respect to the state-of-the-art approaches. (C) 2020 Elsevier B.V. All rights reserved.
机译:汇集层是在卷积神经网络(CNN)中使用的空间下抽样图层,以逐步降低特征映射,增加接收场大小并减少模型中的参数的数量。汇集层的使用导致计算复杂性和内存消耗减少,但也引入了某些过滤器失真的不变性,这可能会引起细微细节损失。对于一些细粒度识别任务(例如,高度依赖于特定区域失真检测),这种行为是不希望的。在本文中,我们基于内核函数引入了更频繁的滤波器失真感知池层。所提出的池减少了特征映射尺寸,同时跟踪送入下一个层的大多数信息而不是忽略它们的一部分。 RAF,FER2013和EXPW数据库的实验表明了这些层的益处,并表明我们的模型在最先进的方法方面取得了竞争力。 (c)2020 Elsevier B.v.保留所有权利。

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