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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >The SSVEP-Based BCI Text Input System Using Entropy Encoding Algorithm
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The SSVEP-Based BCI Text Input System Using Entropy Encoding Algorithm

机译:基于SSVEP的BCI文本输入系统的熵编码算法

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The so-called amyotrophic lateral sclerosis (ALS) or motor neuron disease (MND) is a neurodegenerative disease with various causes. It is characterized by muscle spasticity, rapidly progressive weakness due to muscle atrophy, and difficulty in speaking, swallowing, and breathing. The severe disabled always have a common problem that is about communication except physical malfunctions. The steady-state visually evoked potential based brain computer interfaces (BCI), which apply visual stimulus, are very suitable to play the role of communication interface for patients with neuromuscular impairments. In this study, the entropy encoding algorithm is proposed to encode the letters of multilevel selection interface for BCI text input systems. According to the appearance frequency of each letter, the entropy encoding algorithm is proposed to construct a variable-length tree for the letter arrangement of multilevel selection interface. Then, the Gaussian mixture models are applied to recognize electrical activity of the brain. According to the recognition results, the multilevel selection interface guides the subject to spell and type the words. The experimental results showed that the proposed approach outperforms the baseline system, which does not consider the appearance frequency of each letter. Hence, the proposed approach is able to ease text input interface for patients with neuromuscular impairments.
机译:所谓的肌萎缩性侧索硬化症(ALS)或运动神经元疾病(MND)是一种具有多种原因的神经退行性疾病。它的特点是肌肉痉挛,由于肌肉萎缩而迅速进行性无力,以及说话,吞咽和呼吸困难。除了身体上的故障外,严重的残疾人总是有一个与沟通有关的常见问题。基于视觉诱发电位的稳态状态的脑计算机接口(BCI)应用视觉刺激,非常适合在神经肌肉功能障碍患者中发挥通信接口的作用。在这项研究中,提出了一种熵编码算法来对BCI文本输入系统的多级选择界面的字母进行编码。根据每个字母的出现频率,提出了一种熵编码算法,为多级选择界面的字母排列构造一个变长树。然后,将高斯混合模型应用于识别大脑的电活动。根据识别结果,多级选择界面指导对象拼写和键入单词。实验结果表明,该方法优于基线系统,该系统没有考虑每个字母的出现频率。因此,所提出的方法能够简化具有神经肌肉损伤的患者的文本输入界面。

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