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Robust and energy-efficient expression recognition based on improved deep ResNets

机译:基于改进的深度ResNet的鲁棒且节能的表情识别

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摘要

To improve the robustness and to reduce the energy consumption of facial expression recognition, this study proposed a facial expression recognition method based on improved deep residual networks (ResNets). Residual learning has solved the degradation problem of deep Convolutional Neural Networks (CNNs); therefore, in theory, a ResNet can consist of infinite number of neural layers. On the one hand, ResNets benefit from better performance on artificial intelligence (AI) tasks, thanks to its deeper network structure; meanwhile, on the other hand, it faces a severe problem of energy consumption, especially on mobile devices. Hence, this study employs a novel activation function, the Noisy Softplus (NSP), to replace rectified linear units (ReLU) to get improved ResNets. NSP is a biologically plausible activation function, which was first proposed in training Spiking Neural Networks (SNNs); thus, NSP-trained models can be directly implemented on ultra-low-power neuromorphic hardware. We built an 18-layered ResNet using NSP to perform facial expression recognition across datasets Cohn-Kanade (CK+), Karolinska Directed Emotional Faces (KDEF) and GENKI-4K. The results achieved better antinoise ability than ResNet using the activation function ReLU and showed low energy consumption running on neuromorphic hardware. This study not only contributes a solution for robust facial expression recognition, but also consolidates the low energy cost of their implementation on neuromorphic devices, which could pave the way for high-performance, noise-robust and energy-efficient vision applications on mobile hardware.
机译:为了提高面部表情识别的鲁棒性并减少能耗,本研究提出了一种基于改进的深度残差网络(ResNets)的面部表情识别方法。残差学习解决了深度卷积神经网络(CNN)的退化问题。因此,从理论上讲,ResNet可以由无限数量的神经层组成。一方面,得益于其更深的网络结构,ResNets可以在人工智能(AI)任务上获得更好的性能;同时,另一方面,它面临着严重的能耗问题,尤其是在移动设备上。因此,这项研究采用了一种新颖的激活函数Noisy Softplus(NSP)来取代整流线性单元(ReLU),从而获得改进的ResNet。 NSP是一种生物学上可行的激活功能,最早是在训练Spiking神经网络(SNN)时提出的;因此,NSP训练的模型可以直接在超低功耗神经形态硬件上实现。我们使用NSP构建了一个18层的ResNet,以跨数据集Cohn-Kanade(CK +),Karolinska Directed Emotional Faces(KDEF)和GENKI-4K进行面部表情识别。与使用激活功能ReLU的ResNet相比,该结果具有更好的抗噪能力,并且在神经形态硬件上运行时显示出低能耗。这项研究不仅为鲁棒的面部表情识别提供了解决方案,而且还巩固了其在神经形态设备上实现的低能耗,这可能为在移动硬件上的高性能,鲁棒性和节能型视觉应用铺平道路。

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