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Online and offline anger detection via electromyography analysis

机译:通过肌电图分析在线和离线愤怒检测

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Emotional states involving anger, hostility, anxiety and stress have been associated with an increased risk of cardiovascular disease. Online emotion recognition has achieved little attention in the literature in comparison to offline approaches. We present both online and offline methods to identify anger based on EMG data. In the offline method, the Hilbert-Huang transform is used to extract energy features from different time-frequency blocks. This approach achieves an overall classification accuracy of 87.5%. We also develop a novel online method combining machine learning with the tracking of a single parameter for anger detection. Here, band energy is calculated within time windows, and is continuously adjusted based on classified peak amplitudes. Although this technique has a lower classification accuracy than the offline method, it is quite promising as it is well-suited for wearable monitoring and long-term stress management.
机译:涉及愤怒,敌意,焦虑和压力的情绪状态与心血管疾病的风险增加有关。与离线方法相比,在线情感认可在文献中取得了很少的关注。我们在线和离线方法展示了基于EMG数据的愤怒。在离线方法中,Hilbert-Huang变换用于从不同的时频块中提取能量特征。这种方法实现了87.5 %的整体分类准确性。我们还开发了一种新的在线方法,将机器学习与跟踪进行愤怒检测的单个参数。这里,频带能量在时间窗口内计算,并且基于分类的峰值幅度连续调整。虽然这种技术的分类精度比离线方法较低,但它非常有希望,因为它非常适合可穿戴监控和长期应力管理。

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