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Calibrating the Classifier: Siamese Neural Network Architecture for End-to-End Arousal Recognition from ECG

机译:校准分类器:暹罗神经网络架构,用于ECG的端到端令人震惊

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Affective analysis of physiological signals enables emotion recognition in mobile wearable devices. In this paper, we present a deep learning framework for arousal recognition from ECG (electrocardiogram) signals. Specifically, we design an end-to-end convolutional and recurrent neural network architecture to (i) extract features from ECG; (ii) analyse time-domain variation patterns; and (iii) non-linearly relate those to the user's arousal level. The key novelty is our use of a shared-parameter siamese architecture to implement user-specific feature calibration. At each forward and backward pass, we concatenate to the input a user-dependent template that is processed by an identical copy of the network. The siamese architecture makes feature calibration an integral part of the training process, allowing modelling of general dependencies between the user's ECG at rest and those during emotion elicitation. On leave-one-user-out cross validation, the proposed architecture obtains +21.5% score increase compared to state-of-the-art techniques. Comparison with alternative network architectures demonstrates the effectiveness of the siamese network in achieving user-specific feature calibration.
机译:生理信号的情感分析能够在移动可穿戴设备中的情感识别。在本文中,我们为来自ECG(心电图)信号的唤醒识别提供了深入的学习框架。具体而言,我们设计了一个端到端的卷积和经常性神经网络架构(i)来自心电图的提取特征; (ii)分析时域变异模式; (iii)非线性地将那些人与用户的唤醒水平相关联。关键新奇是我们使用共享参数暹罗架构来实现用户特定的特征校准。在每个前向和后退通过时,我们连接到输入的用户依赖模板,该模板由网络的相同副本处理。暹罗架构使特征校准成为培训过程的一个组成部分,允许在休息期间和情感诱导期间的用户的心电图之间的一般依赖性建模。在休假交叉验证时,与最先进的技术相比,拟议的架构获得了+ 21.5%的成绩。与替代网络架构的比较展示了暹罗网络在实现用户特定的特征校准方面的有效性。

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