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Application of an Improved Correlation Method in Electrostatic Gait Recognition of Hemiparetic Patients

机译:改进的相关方法在偏瘫患者静电步态识别中的应用

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摘要

Hemiparesis is one of the common sequelae of neurological diseases such as strokes, which can significantly change the gait behavior of patients and restrict their activities in daily life. The results of gait characteristic analysis can provide a reference for disease diagnosis and rehabilitation; however, gait correlation as a gait characteristic is less utilized currently. In this study, a new non-contact electrostatic field sensing method was used to obtain the electrostatic gait signals of hemiplegic patients and healthy control subjects, and an improved Detrended Cross-Correlation Analysis cross-correlation coefficient method was proposed to analyze the obtained electrostatic gait signals. The results show that the improved method can better obtain the dynamic changes of the scaling index under the multi-scale structure, which makes up for the shortcomings of the traditional Detrended Cross-Correlation Analysis cross-correlation coefficient method when calculating the electrostatic gait signal of the same kind of subjects, such as random and incomplete similarity in the trend of the scaling index spectrum change. At the same time, it can effectively quantify the correlation of electrostatic gait signals in subjects. The proposed method has the potential to be a powerful tool for extracting the gait correlation features and identifying the electrostatic gait of hemiplegic patients.
机译:偏瘫是中风等神经系统疾病的常见后遗症之一,可显着改变患者的步态行为并限制其日常生活。步态特征分析的结果可为疾病的诊断和康复提供参考。但是,作为步态特征的步态相关性目前很少被利用。本研究采用一种新的非接触式静电场感应方法获取偏瘫患者和健康对照者的静电步态信号,并提出了一种改进的去趋势互相关分析互相关系数法来分析获得的静电步态。信号。结果表明,改进的方法能够较好地获得多尺度结构下尺度指标的动态变化,弥补了传统的去趋势互相关分析互相关系数法在计算步态静电步态信号时的不足。相同种类的主题,例如随机和不完全相似的缩放指数频谱变化趋势。同时,它可以有效地量化对象中静电步态信号的相关性。所提出的方法有可能成为提取步态相关特征和识别偏瘫患者静电步态的有力工具。

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