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Edge-Computing Convolutional Neural Network with Homography-Augmented Data for Facial Emotion Recognition

机译:边缘计算卷积神经网络,具有适用于面部情感识别的同字增强数据

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We design a convolutional neural network with homographyaugmented data to deal with facial emotion recognition applications. Different to other convolutional neural networks, our AsicNet is well-designed for embedded CPU and even aiming for ASIC, such as Intel Movidius VPU. We adjust the architecture of our AsicNet and train our AsicNet on the GPU server, meanwhile we consider the computation costs of embedded systems and ASICs. Moreover, we reconsider the deep learning flow and train the homography-augmented data so as to reach higher accuracy. Experimental results on both FER2013 anf JAFFE face datasets show that our AsicNet can not only have high accuracy (72.42% on FER2013; 99.82% on JAFFE) as compared to the state-of-arts but also reach 41.22 millisecond (24.26 FPS) on the embedded CPU and 15.25 millisecond (65.57 FPS) on Intel Movidius VPU to tell the facial emotion from a face image.
机译:我们设计具有讨论的娱乐性神经网络,以处理面部情感识别应用。我们的ASICnet与其他卷积神经网络不同,为嵌入式CPU提供了精心设计,甚至针对Intel Movidius VPU等ASIC。我们调整ASICnet的架构并在GPU服务器上培训我们的ASICnet,同时我们考虑嵌入式系统和ASIC的计算成本。此外,我们重新考虑了深度学习流程并培训了相同的数据,以达到更高的准确性。 FER2013 ANF jaffe面部数据集的实验结果表明,与现有语相比,我们的ASICNET不仅可以高精度(FER2013上的99.82%),而且达到41.22毫秒(24.26 fps) Intel Movidius VPU上的嵌入式CPU和15.25毫秒(65.57 FPS),以讲述面部形象的面部情绪。

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