Alzahrani Salwa, Banjar Haneen, Mirza Rsha
Department of Computer Science, Faculty of Computing and Information Technology, King Abdulaziz University, Jeddah 21589, Saudi Arabia.
Sensors (Basel). 2024 Dec 21;24(24):8168. doi: 10.3390/s24248168.
This systematic review examines EEG-based imagined speech classification, emphasizing directional words essential for development in the brain-computer interface (BCI). This study employed a structured methodology to analyze approaches using public datasets, ensuring systematic evaluation and validation of results. This review highlights the feature extraction techniques that are pivotal to classification performance. These include deep learning, adaptive optimization, and frequency-specific decomposition, which enhance accuracy and robustness. Classification methods were explored by comparing traditional machine learning with deep learning and emphasizing the role of brain lateralization in imagined speech for effective recognition and classification. This study discusses the challenges of generalizability and scalability in imagined speech recognition, focusing on subject-independent approaches and multiclass scalability. Performance benchmarking across various datasets and methodologies revealed varied classification accuracies, reflecting the complexity and variability of EEG signals. This review concludes that challenges remain despite progress, particularly in classifying directional words. Future research directions include improved signal processing techniques, advanced neural network architectures, and more personalized, adaptive BCI systems. This review is critical for future efforts to develop practical communication tools for individuals with speech and motor impairments using EEG-based BCIs.
本系统综述考察基于脑电图的想象言语分类,重点关注脑机接口(BCI)发展中至关重要的方向性词汇。本研究采用结构化方法,分析使用公共数据集的方法,确保对结果进行系统评估和验证。本综述突出了对分类性能至关重要的特征提取技术。这些技术包括深度学习、自适应优化和特定频率分解,它们提高了准确性和稳健性。通过比较传统机器学习和深度学习来探索分类方法,并强调脑侧化在想象言语中对有效识别和分类的作用。本研究讨论了想象言语识别中的泛化性和可扩展性挑战,重点关注独立于个体的方法和多类可扩展性。跨各种数据集和方法的性能基准测试显示出不同的分类准确率,反映了脑电图信号的复杂性和变异性。本综述得出结论,尽管取得了进展,但挑战依然存在,尤其是在对方向性词汇进行分类方面。未来的研究方向包括改进信号处理技术、先进的神经网络架构以及更个性化、自适应的脑机接口系统。本综述对于未来利用基于脑电图的脑机接口为言语和运动障碍患者开发实用通信工具的努力至关重要。