School of Electronic and Information Engineering, South China University of Technology, Guangzhou 510641, China.
Institute of Modern Industrial Technology of SCUT in Zhongshan, Zhongshan 528400, China.
Sensors (Basel). 2020 Jan 28;20(3):718. doi: 10.3390/s20030718.
Emotion recognition and monitoring based on commonly used wearable devices can play an important role in psychological health monitoring and human-computer interaction. However, the existing methods cannot rely on the common smart bracelets or watches for emotion monitoring in daily life. To address this issue, our study proposes a method for emotional recognition using heart rate data from a wearable smart bracelet. A 'neutral + target' pair emotion stimulation experimental paradigm was presented, and a dataset of heart rate from 25 subjects was established, where neutral plus target emotion (neutral, happy, and sad) stimulation video pairs from China's standard Emotional Video Stimuli materials (CEVS) were applied to the recruited subjects. Normalized features from the data of target emotions normalized by the baseline data of neutral mood were adopted. Emotion recognition experiment results approved the effectiveness of 'neutral + target' video pair simulation experimental paradigm, the baseline setting using neutral mood data, and the normalized features, as well as the classifiers of Adaboost and GBDT on this dataset. This method will promote the development of wearable consumer electronic devices for monitoring human emotional moods.
基于常用可穿戴设备的情绪识别和监测在心理健康监测和人机交互中可以发挥重要作用。然而,现有的方法无法依靠常见的智能手环或手表在日常生活中进行情绪监测。针对这一问题,我们的研究提出了一种使用可穿戴智能手环心率数据进行情绪识别的方法。提出了一种“中性+目标”对情绪刺激实验范式,并建立了一个由 25 名被试者组成的心率数据集,其中应用了中国情绪视频刺激材料(CEVS)中的中性加目标情绪(中性、快乐和悲伤)刺激视频对被试者进行刺激。采用由中性情绪基线数据归一化的目标情绪数据的归一化特征。情绪识别实验结果验证了“中性+目标”视频对模拟实验范式、使用中性情绪数据的基线设置以及在此数据集上的 Adaboost 和 GBDT 分类器的有效性。该方法将促进用于监测人类情绪的可穿戴消费电子设备的发展。