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Facial Expression Recognition Based on Convolutional Neural Networks and Edge Computing

机译:基于卷积神经网络和边缘计算的面部表情识别

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With edge devices playing an increasingly important role in our daily lives, edge computing and human-computer interaction, especially facial expression recognition, become research central issues in academia and industry. However, surprisingly, utilizing edge computing and neural networks for facial expression recognition has been neglected for many years, very few research can be found. To be focusing on such topics. In this paper, we improve Visual Geometry Group 19 with the idea of residual learning. To be specific, for each block of Visual Geometry Group 19, we add its input to its output. The result of the addition will be the input of the next block. Then, we minimize the size of our model by pruning and post-training quantization to achieve a higher efficiency and maintain the model's accuracy at the same time when deploying it on edge devices. The experiment result shows that our model has a 98.99% accuracy on the CK+ dataset. Besides, when deploying on edge devices, its inference time is less than many other popular neural networks that are designed for deploying on edge-devices.
机译:利用边缘设备在日常生活中发挥越来越重要的作用,边缘计算和人机互动,特别是面部表情识别,成为学术界和工业的研究核心问题。然而,令人惊讶的是,利用用于面部表情识别的边缘计算和神经网络已经忽略了多年,可以找到很少的研究。专注于这样的主题。在本文中,我们以剩余学习的思想改善视觉几何组19。特定于每个视觉几何组19,我们将其输入添加到其输出。添加结果将是下一个块的输入。然后,我们通过修剪和训练后的量化来最小化模型的大小,以实现更高的效率并在将其在边缘设备上部署时同时保持模型的准确性。实验结果表明,我们的模型在CK + DataSet上具有98.99%的准确性。此外,在在边缘设备上部署时,其推理时间少于许多其他流行的神经网络,用于在边缘设备上部署。

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