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Improving Eye Motion Sequence Recognition Using Electrooculography Based on Context-Dependent HMM

机译:基于上下文相关HMM的眼电法改善眼动序列识别

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摘要

Eye motion-based human-machine interfaces are used to provide a means of communication for those who can move nothing but their eyes because of injury or disease. To detect eye motions, electrooculography (EOG) is used. For efficient communication, the input speed is critical. However, it is difficult for conventional EOG recognition methods to accurately recognize fast, sequentially input eye motions because adjacent eye motions influence each other. In this paper, we propose a context-dependent hidden Markov model- (HMM-) based EOG modeling approach that uses separate models for identical eye motions with different contexts. Because the influence of adjacent eye motions is explicitly modeled, higher recognition accuracy is achieved. Additionally, we propose a method of user adaptation based on a user-independent EOG model to investigate the trade-off between recognition accuracy and the amount of user-dependent data required for HMM training. Experimental results show that when the proposed context-dependent HMMs are used, the character error rate (CER) is significantly reduced compared with the conventional baseline under user-dependent conditions, from 36.0 to 1.3%. Although the CER increases again to 17.3% when the context-dependent but user-independent HMMs are used, it can be reduced to 7.3% by applying the proposed user adaptation method.
机译:基于眼动的人机界面用于为那些因受伤或疾病而只能动眼的人提供一种交流手段。为了检测眼动,使用了眼动描记法(EOG)。对于有效的通信,输入速度至关重要。但是,传统的EOG识别方法很难准确识别快速,顺序输入的眼睛运动,因为相邻的眼睛运动会相互影响。在本文中,我们提出了一种基于上下文依赖的隐式马尔可夫模型(HMM-)的EOG建模方法,该方法将单独的模型用于具有不同上下文的相同眼动。由于对相邻眼睛运动的影响进行了显式建模,因此可以实现更高的识别精度。此外,我们提出了一种基于用户独立的EOG模型的用户适应方法,以研究识别精度和HMM训练所需的用户相关数据量之间的权衡。实验结果表明,当使用建议的上下文相关HMM时,与常规基线相比,在用户相关条件下,字符错误率(CER)从36.0降低到1.3%。尽管当使用上下文相关但用户无关的HMM时CER再次增加到17.3%,但是可以通过应用建议的用户适应方法将CER减少到7.3%。

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