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HMM Classifier Object Recognizing System in Brain-Computer Interface

机译:脑电电脑界面中的HMM分类器对象识别系统

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Machine learning (ML) is the field that adds intelligence to devices providing them with capabilities to process and identify patterns in data just like human beings do. Programming devices in this manner can help in identifying those patterns which human beings often cannot. Machine learning is based on modelling data mathematically. ML has been gaining a lot of attention in the last few decades, especially in fields of interdisciplinary research. Brain-Computer Interface (BCI) is an area where Machine Learning Technology is been rapidly using. Also, Machine Learning techniques have to be used so that one can get a better result and more efficiency. Information Transfer Rate is the best way to measure the performance of the signals. The current research is mainly focused on achieving the systems with higher ITR. The focus of the proposed system is to get better and high Information Transfer Rate by merging two different approaches. The approach used in this work is (SSVEP), Visually Evoked Potential and (SSAEP) Auditory Evoked Potential by using Hidden Markova Model (HMM). The system which is to be developed checks whether the existing system has such facility if it has, does it provides accuracy which is of a higher rate and can put it in the real-world applications.
机译:机器学习(ml)是为为设备提供的设备添加智能的领域,该设备提供处理和识别像人类的数据中的模式。以这种方式编程设备可以帮助识别人类往往不能的那些模式。机器学习基于数学上的建模数据。在过去的几十年中,ML一直在关注跨学科研究领域。脑电脑界面(BCI)是一种机器学习技术快速使用的区域。此外,必须使用机器学习技术,以便可以获得更好的结果和更高效率。信息传输速率是测量信号性能的最佳方法。目前的研究主要集中在实现具有更高ITR的系统。建议系统的重点是通过合并两种不同的方法来获得更好和高信息传输速度。本作品中使用的方法是(SSVEP),视觉诱发潜在的潜力和(SSAEP)听觉诱发电位诱发电位(HMM)。要开发的系统会检查现有系统是否具有这样的设施,如果它具有更高的速率,可以在现实世界应用中提供准确性。

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