SDAS Research Group, Hay Moulay Rachid, Ben Guerir 43150, Morocco.
Computer Science Department, IT University of Copenhagen, 2300 Copenhagen, Denmark.
Sensors (Basel). 2024 May 23;24(11):3350. doi: 10.3390/s24113350.
One of the biggest challenges of computers is collecting data from human behavior, such as interpreting human emotions. Traditionally, this process is carried out by computer vision or multichannel electroencephalograms. However, they comprise heavy computational resources, far from final users or where the dataset was made. On the other side, sensors can capture muscle reactions and respond on the spot, preserving information locally without using robust computers. Therefore, the research subject is the recognition of the six primary human emotions using electromyography sensors in a portable device. They are placed on specific facial muscles to detect happiness, anger, surprise, fear, sadness, and disgust. The experimental results showed that when working with the CortexM0 microcontroller, enough computational capabilities were achieved to store a deep learning model with a classification store of 92%. Furthermore, we demonstrate the necessity of collecting data from natural environments and how they need to be processed by a machine learning pipeline.
计算机面临的最大挑战之一是从人类行为中收集数据,例如解释人类的情绪。传统上,这个过程是通过计算机视觉或多通道脑电图来完成的。然而,它们需要大量的计算资源,远离最终用户或数据集所在的位置。另一方面,传感器可以捕捉肌肉反应并即时做出响应,在不使用强大计算机的情况下在本地保存信息。因此,研究的主题是使用便携式设备中的肌电图传感器识别六种基本的人类情绪。它们被放置在特定的面部肌肉上,以检测快乐、愤怒、惊讶、恐惧、悲伤和厌恶。实验结果表明,当与 CortexM0 微控制器一起使用时,获得了足够的计算能力来存储具有 92%分类存储的深度学习模型。此外,我们展示了从自然环境中收集数据的必要性,以及机器学习管道需要如何对其进行处理。