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Development and Validation of an EEG-Based Real-Time Emotion Recognition System Using Edge AI Computing Platform With Convolutional Neural Network System-on-Chip Design

机译:基于EEG的实时情感识别系统使用边缘AI计算平台的开发与验证,卷积神经网络芯片系统设计

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This study proposed an electroencephalogram (EEG)-based real-time emotion recognition hardware system architecture based on multiphase convolutional neural network (CNN) algorithm implemented on a 28-nm technology chip and on field programmable gate array (FPGA) for binary and quaternary classification. Sample entropy, differential asymmetry, short-time Fourier transform, and a channel reconstruction method were used for emotion feature extraction. In this work, six EEG channels were selected (FP1, FP2, F3, F4, F7, and F8), and EEG images were generated from spectrogram fusions. The complete CNN architecture included training and acceleration for efficient artificial intelligence (AI) edge application, and we proposed a multiphase CNN execution method to accommodate hardware resource constraints. Datasets of 32 subjects from the DEAP database were used to validate the proposed design, exhibiting mean accuracies for valance binary classification and valance-arousal quaternary classification of 83.36% and 76.67%, respectively. The core area and total power consumption of the CNN chip were 1.83 x 1.83 mm(2), respectively, and 76.61 mW. The chip operation was validated using ADVANTEST V93000 PS1600, and the training process and real-time classification processing time took 0.12495 ms and 0.02634 ms for each EEG image, respectively. The proposed EEG-based realtime emotion recognition system included a dry electrode EEG headset, feature extraction processor, CNN chip platform, and graphical user interface, and the execution time costed 450 ms for each emotional state recognition.
机译:本研究提出了基于在28-NM技术芯片上实现的多相卷积神经网络(CNN)算法的基于多相卷积神经网络(CNN)算法的脑电图(EEG)的实时情感识别硬件系统架构,以及用于二进制和四元分类的现场可编程门阵列(FPGA) 。样品熵,差分不对称,短时傅里叶变换和信道重建方法用于情绪特征提取。在这项工作中,选择了六个EEG通道(FP1,FP2,F3,F4,F7和F8),并且从谱图融合产生EEG图像。完整的CNN架构包括高效人工智能(AI)EDGE应用的培训和加速,我们提出了一种多相CNN执行方法来适应硬件资源约束。 32个来自DEAP数据库的受试者的数据集用于验证所提出的设计,分别表现出平均算子分类和价值的准确性,分别为83.36%和76.67%。 CNN芯片的核心区域和总功耗分别为1.83×1.83mm(2)和76.61兆瓦。使用Adautest V93000 PS1600验证芯片操作,训练过程和实时分类处理时间分别为每个EEG图像花费0.12495 ms和0.02634 ms。所提出的基于EEG的实时情绪识别系统包括干电极EEG耳机,特征提取处理器,CNN芯片平台和图形用户界面,并且对于每个情绪状态识别,执行时间耗费450毫秒。

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