This work represents the experimental and development process of system facial expression recognition and facial stress analysis algorithms for an immersive digital learning platform. The system retrieves from users web camera and evaluates it using artificial neural network (ANN) algorithms. The ANN output signals can be used to score and improve the learning process. Adapting an ANN to a new system can require a significant implementation effort or the need to repeat the ANN training. There are also limitations related to the minimum hardware required to run an ANN. To overpass these constraints, some possible implementations of facial expression recognition and facial stress analysis algorithms in real-time systems are presented. The implementation of the new solution has made it possible to improve the accuracy in the recognition of facial expressions and also to increase their response speed. Experimental results showed that using the developed algorithms allow to detect the heart rate with better rate in comparison with social equipment.
翻译:这项工作代表了系统面部表情识别和面部压力分析算法的实验和开发过程,用于浸泡式数字学习平台。该系统从用户网络相机中检索,并使用人工神经网络算法进行评估。ANN输出信号可用于评分和改进学习过程。将ANN输出信号改造为新系统可能需要大量实施努力或需要重复ANN培训。运行ANN所需的最低硬件也存在局限性。为了克服这些限制,在实时系统中可能采用面部表情识别和面部压力分析算法。新解决方案的实施使提高面部表情识别准确性并提高其反应速度成为可能。实验结果表明,使用开发的算法可以比社会设备更准确地检测心率。