基于语言模型的波斯语脑机接口拼写器目标词选择

Hessam Amini, H. Veisi, Elham Mohammadi
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引用次数: 2

摘要

在基于脑机接口(bci)的拼写器中使用语言模型已被证明有助于提高系统的性能。由于评估语言模型对系统的影响是很重要的,所以有必要根据语言模型选择能够代表不同难度级别的单词。在本文中,我们将简要介绍我们将要开发的波斯语BCI拼写器。然后,我们将解释如何根据字符级和单词级语言模型选择具有三个难度级别的单词。我们考虑三个难度级别,分别命名为简单、中等和困难,我们分别选择了3个、6个和3个单词。然后我们为每个单词造一个句子,这样这些单词就会出现在一个上下文中。通过这样做,语言模型可以预测每个单词出现的可能性。本文的新颖之处在于,到目前为止,还没有实现任何波斯语BCI拼写器,利用语言模型作为使用大脑信号进行字符识别的辅助。
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Target words selection for a Persian brain-computer-interface-based speller using language model
Utilizing a language model in a brain-computer-interface-based (BCI-based) speller has been proven helpful in improving the performance of the system. Since it is important to evaluate the effect of the language model on the system, it is necessary to choose the words in a way that they can represent different levels of difficulty based on the language model. In this paper, we will give a brief introduction to the Persian BCI speller that we are going to develop. Then, we will explain how we select words with three levels of difficulty based on both a character-level and a word-level language model. We consider three levels of difficulty, named Easy, Medium and Hard, for which we have selected 3, 6 and 3 words, respectively. We then make a sentence for each of the words, so that the words are presented within a context. By doing so, the language model can predict the possibility of occurrence for each word. The novelty of this paper is in the fact that so far, there have not been implemented any Persian BCI spellers utilizing a language model as an aid in character recognition using the brain signals.
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