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Robust EOG-based saccade recognition using multi-channel blind source deconvolution

机译:基于强大的EOG的SACCADE识别,使用多通道盲源代码

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Human activity recognition (HAR) is a research hotspot in the field of artificial intelligence and pattern recognition. The electrooculography (EOG)-based HAR system has attracted much attention due to its good realizability and great application potential. Focusing on the signal processing method of the EOG-HAR system, we propose a robust EOG-based saccade recognition using the multi-channel convolutional independent component analysis (ICA) method. To establish frequency-domain observation vectors, short-time Fourier transform (STFT) is used to process time-domain EOG signals by applying the sliding window technique. Subsequently, we apply the joint approximative diagonalization of eigenmatrix (JADE) algorithm to separate the mixed signals and choose the "clean" saccadic source to extract features. To address the problem of permutation ambiguity in a case with a six-channel condition, we developed a constraint direction of arrival (DOA) algorithm that can automatically adjust the order of eye movement sources according to the constraint angle. Recognition experiments of four different saccadic EOG signals (i.e. up, down, left and right) were conducted in a laboratory environment. The average recognition ratios over 13 subjects were 95.66% and 97.33% under the between-subjects test and the within-subjects test, respectively. Compared with "bandpass filtering", "wavelet denoising", "extended infomax algorithm", "frequency-domain JADE algorithm" and "time-domain JADE algorithm, the recognition ratios obtained relative increments of 4.6%, 3.49%, 2.85%, 2.81% and 2.91% (within-subjects test) and 4.91%, 3.43%, 2.21%, 2.24% and 2.28% (between-subjects test), respectively. The experimental results revealed that the proposed algorithm presents robust classification performance in saccadic EOG signal recognition.
机译:人类活动识别(HAR)是人工智能和模式识别领域的研究热点。由于其良好的可实现性和巨大的应用潜力,电胶凝(EOG)的掌握已经引起了很多关注。专注于EOG-HAR系统的信号处理方法,我们使用多通道卷积独立分量分析(ICA)方法提出基于EOG的扫视识别。为了建立频域观察向量,通过应用滑动窗技术来使用短时傅里叶变换(STFT)来处理时域EoG信号。随后,我们应用Eigenmatrix(jade)算法的联合近似对角线化,将混合信号分开并选择“清洁”扫视源以提取特征。为了在具有六通道条件的情况下解决置换歧义的问题,我们开发了一个到达的约束方向(DOA)算法,其可以根据约束角自动调整眼睛移动源的顺序。在实验室环境中进行了四种不同扫视EOG信号的识别实验(即,UP,DOWN,左右)。在受试者试验和受试者内检测中,平均识别比率超过13项受试者的识别比率为95.66%和97.33%。与“带通滤波”,“小波去噪”,“扩展InfoMax算法”,“频域玉算法”和“时域玉算法”相比,识别比率为4.6%,3.49%,2.85%,2.81 %和2.91%(受试者内检测)和4.91%,3.43%,2.21%,2.24%和2.24%和2.28%(受试者之间的测试)。实验结果表明,该算法在扫视EOG信号中提出了强大的分类性能认出。

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