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Movement EEG classification using parallel Hidden Markov Models

机译:使用并行隐马尔可夫模型对运动脑电图进行分类

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In this contribution we examine the use and utility of parallel HMM classification in single-trial movement-EEG classification of index finger reaching and grasping movement. Parallel HMMs allow us to easily utilize the information contained in multiple channels. Using HMM classifier output in parallel from examined EEG channels we have been able to achieve as good a classification score as with single electrode results, further we do not rely on a single electrode giving persistently good results. Our parallel approach has the added benefit of not having to rely on small inter-session variability as it gives very good results with fewer classifier parameters being optimized. Without any classification optimization we can get a score improvement of 11.2% against randomly selected physiologically relevant electrode. If we use subject specific information we can further improve on the reference score by 1%, achieving a classification score of 84.2±0.7%.
机译:在本文中,我们研究了平行HMM分类在单次尝试运动中的使用和实用性-食指到达和抓握运动的EEG分类。并行HMM使我们能够轻松利用多个通道中包含的信息。使用从检查的EEG通道并行输出的HMM分类器输出,我们已经能够获得与单电极结果一样好的分类评分,此外,我们不依赖于单个电极提供持续良好的结果。我们的并行方法的另一个好处是不必依赖较小的会话间可变性,因为它可以在优化了较少的分类器参数的情况下提供非常好的结果。如果没有任何分类优化,相对于随机选择的生理相关电极,我们的得分可提高11.2%。如果使用主题特定信息,我们可以将参考分数进一步提高1%,达到84.2±0.7%的分类分数。

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