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GF-CapsNet: Using Gabor Jet and Capsule Networks for Facial Age, Gender, and Expression Recognition

机译:GF-CapsNet:使用Gabor Jet和胶囊网络进行面部年龄,性别和表情识别

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The convolutional neural network (CNN) works very well in many computer vision tasks including the face-related problems. However, in the case of age estimation and facial expression recognition (FER), the accuracy provided by the CNN is still not good enough to be used for the real-world problems. It seems that the CNN does not well find the subtle differences in thickness and amount of wrinkles on the face, which are the essential features for the age estimation and FER. Also, the face images in the real world have many variations due to the face rotation and illumination, where the CNN is not robust in finding the rotated objects when not every possible variation is in the training data. To alleviate these problems, we first propose to use the Gabor filter responses of faces as the input to the CNN, along with the original face image. This method enhances the wrinkles on the face so that the face-related features are found in the earlier stage of convolutional layers, and hence the overall performance is increased. We also adopt the idea of capsule network, which is shown to be robust to the rotation of objects and be able to capture the relationship of facial landmarks. We show that the performance of age estimation and FER are improved by using the capsule network than using the plain CNNs. Moreover, by using the Gabor responses as the input to the capsule network, the overall performances of face-related problems are increased compared to the recent CNN-based methods.
机译:卷积神经网络(CNN)在许多计算机视觉任务(包括与面部有关的问题)中都能很好地工作。但是,在年龄估计和面部表情识别(FER)的情况下,CNN提供的准确性仍不足以用于现实问题。 CNN似乎无法很好地发现面部皱纹的厚度和数量的细微差别,这是年龄估算和FER的基本特征。而且,由于面部旋转和照明,现实世界中的面部图像会有许多变化,其中,当并非所有可能的变化都在训练数据中时,CNN不能很好地找到旋转的对象。为了缓解这些问题,我们首先建议将人脸的Gabor滤波器响应与原始人脸图像一起用作CNN的输入。该方法增强了脸部的皱纹,从而在卷积层的较早阶段发现了与脸部相关的特征,因此提高了整体性能。我们还采用了胶囊网络的概念,该网络显示出对对象旋转的鲁棒性,并能够捕获面部标志的关系。我们显示使用胶囊网络比使用普通CNN可以改善年龄估计和FER的性能。此外,与最近的基于CNN的方法相比,通过使用Gabor响应作为胶囊网络的输入,与面部有关的问题的总体性能得到了提高。

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