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Reiterative minimum mean square error estimator for direction of arrival estimation and biomedical functional brain imaging.

机译:迭代最小均方误差估计器,用于到达方向估计和生物医学功能性脑成像。

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Two novel approaches are developed for direction-of-arrival (DOA) estimation and functional brain imaging estimation, which are denoted as ReIterative Super-Resolution (RISR) and Source AFFine Image REconstruction (SAFFIRE), respectively. Both recursive approaches are based on a minimum mean-square error (MMSE) framework.;The RISR estimator recursively determines an optimal filter bank by updating an estimate of the spatial power distribution at each successive stage. Unlike previous non-parametric covariance-based approaches, which require numerous time snapshots of data, RISR is a parametric approach thus enabling operation on as few as one time snapshot, thereby yielding very high temporal resolution and robustness to the deleterious effects of temporal correlation. RISR has been found to resolve distinct spatial sources several times better than that afforded by the nominal array resolution even under conditions of temporally correlated sources and spatially colored noise.;The SAFFIRE algorithm localizes the underlying neural activity in the brain based on the response of a patient under sensory stimuli, such as an auditory tone. The estimator processes electroencephalography (EEG) or magnetoencephalography (MEG) data simulated for sensors outside the patient's head in a recursive manner converging closer to the true solution at each consecutive stage. The algorithm requires a minimal number of time samples to localize active neural sources, thereby enabling the observation of the neural activity as it progresses over time. SAFFIRE has been applied to simulated MEG data and has shown to achieve unprecedented spatial and temporal resolution. The estimation approach has also demonstrated the capability to precisely isolate the primary and secondary auditory cortex responses, a challenging problem in the brain MEG imaging community.
机译:为到达方向(DOA)估计和功能性脑成像估计开发了两种新颖的方法,分别称为ReIterative Super-Resolution(RISR)和Source AFFine Image Reconstruction(SAFFIRE)。两种递归方法均基于最小均方误差(MMSE)框架。RISR估算器通过更新每个连续阶段的空间功率分布估算值,递归确定最佳滤波器组。与以前的基于非参数协方差的方法需要大量的数据时间快照不同,RISR是一种参数方法,因此可以在少至一个时间快照上进行操作,从而对时间相关性的有害影响产生了很高的时间分辨率和鲁棒性。发现RISR可以分辨不同的空间源,甚至在时间相关源和空间彩色噪声的条件下,其分辨能力也要比标称阵列分辨率好几倍; SAFFIRE算法基于对信号的响应来定位大脑中潜在的神经活动。感觉刺激(如听觉调)下的患者。估计器以递归的方式处理在患者头部外的传感器模拟的脑电图(EEG)或磁脑电图(MEG)数据,在每个连续阶段收敛到接近真实解。该算法需要最少数量的时间样本来定位活动的神经源,从而能够随着时间的推移观察神经活动。 SAFFIRE已应用于模拟的MEG数据,并已显示出前所未有的时空分辨率。估计方法还证明了能够精确隔离初级和次级听觉皮层反应的能力,这是大脑MEG成像社区面临的一个难题。

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