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Cognitive load-strength estimation for NIRS with self-organizing particle filtering

机译:自组织粒子滤波的NIRS认知负荷强度估计

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In this paper, an algorithm to estimate instantaneous cognitive load-strength using near infrared spectroscopy(NIRS) is proposed. For the estimation of the cognitive load-strength, two factors derived from the conventional method with raw cerebral blood flow (rCBF) and from the frequency characteristics were considered. The latter focus on changes of the statistical properties in the rCBF signals based on the author’s previous findings that the frequency bandwidth and characteristics of rCBF depend on cognitive load. For an instantaneous estimation of the statistical properties, a self-organizing particle filter was constructed, and the validity of the estimation of the instantaneous standard deviation of the rCBF was confirmed with dummy data. In the experiment, the cognitive load-strength estimation algorithm was verified by utilizing three levels mental computational tasks. Moreover, in order to adjust parameters in the algorithm, regression lines obtained from the difficulty levels and the estimated cognitive loads are analyzed, and an uncorrelated test was performed. As a result, the effectiveness of the proposed algorithm was confirmed that twelve out of thirteen participants were significantly difference (r = .39, N = 48, p = .006).
机译:提出了一种利用近红外光谱估计瞬时认知负荷强度的算法。为了估计认知负荷强度,考虑了两个因素,这些因素来自传统方法的原始脑血流量(rCBF)和频率特性。后者基于作者先前的发现,即rCBF的频率带宽和特征取决于认知负荷,着重研究rCBF信号的统计特性的变化。为了统计特性的瞬时估计,构造了一个自组织粒子滤波器,并用虚拟数据确认了rCBF瞬时标准差估计的有效性。在实验中,利用三级心理计算任务验证了认知负荷-强度估计算法。此外,为了调整算法中的参数,分析了从难度级别和估计的认知负荷获得的回归线,并进行了不相关的测试。结果,所提出算法的有效性被证实,十三名参与者中有十二名存在显着差异(r = .39,N = 48,p = .006)。

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