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Relevant Feature Integration and Extraction for Single-Trial Motor Imagery Classification

机译:单次运动图像分类的相关特征集成与提取

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摘要

Brain computer interfaces provide a novel channel for the communication between brain and output devices. The effectiveness of the brain computer interface is based on the classification accuracy of single trial brain signals. The common spatial pattern (CSP) algorithm is believed to be an effective algorithm for the classification of single trial brain signals. As the amplitude feature for spatial projection applied by this algorithm is based on a broad frequency bandpass filter (mainly 5–30 Hz) in which the frequency band is often selected by experience, the CSP is sensitive to noise and the influence of other irrelevant information in the selected broad frequency band. In this paper, to improve the CSP, a novel relevant feature integration and extraction algorithm is proposed. Before projecting, we integrated the motor relevant information to suppress the interference of noise and irrelevant information, as well as to improve the spatial difference for projection. The algorithm was evaluated with public datasets. It showed significantly better classification performance with single trial electroencephalography (EEG) data, increasing by 6.8% compared with the CSP.
机译:大脑计算机接口为大脑与输出设备之间的通信提供了新颖的渠道。大脑计算机接口的有效性基于单个试验大脑信号的分类准确性。通用空间模式(CSP)算法被认为是对单个试验性大脑信号进行分类的有效算法。由于此算法所应用的空间投影的幅度特征是基于宽频带通滤波器(主要是5-30 Hz),其中经常根据经验选择频带,因此CSP对噪声和其他无关信息的影响敏感。在选定的宽频带中。为了改进CSP,提出了一种新颖的相关特征集成与提取算法。在投影之前,我们集成了电动机的相关信息,以抑制噪声和无关信息的干扰,并改善投影的空间差异。使用公共数据集评估了该算法。通过单次试验脑电图(EEG)数据,它显示出明显更好的分类性能,与CSP相比增加了6.8%。

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