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Estimation of Neural Inputs and Detection of Saccades and Smooth Pursuit Eye Movements by Sparse Bayesian Learning

机译:稀疏贝叶斯学习对神经输入的估计以及扫视和平滑追踪眼睛运动的检测

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Eye movements reveal a great wealth of information about the visual system and the brain. Therefore, eye movements can serve as diagnostic markers for various neurological disorders. For an objective analysis, it is crucial to have an automatic and robust procedure to extract relevant eye movement parameters. An essential step towards this goal is to detect and separate different types of eye movements such as fixations, saccades and smooth pursuit. We have developed a model-based approach to perform signal detection and separation on eye movement recordings, using source separation techniques from sparse Bayesian learning. The key idea is to model the oculomotor system with a state space model and to perform signal separation in the neural domain by estimating sparse inputs which trigger saccades. The algorithm was evaluated on synthetic data, neural recordings from rhesus monkeys and on manually annotated human eye movement recordings with different smooth pursuit paradigms. The developed approach shows a high noise-robustness, provides saccade and smooth pursuit parameters, as well as estimates of the position, velocity and acceleration profiles. In addition, by estimating the input to the oculomotor system, we obtain an estimate of the neural inputs to the oculomotor muscles.
机译:眼球运动揭示了大量有关视觉系统和大脑的信息。因此,眼球运动可以作为各种神经系统疾病的诊断标志。对于客观分析,至关重要的是要有一个自动且健壮的过程来提取相关的眼睛运动参数。达到此目标的关键步骤是检测并分离不同类型的眼睛运动,例如注视,扫视和平稳跟踪。我们已经开发了一种基于模型的方法,可以使用稀疏贝叶斯学习中的信号源分离技术对眼睛的运动记录进行信号检测和分离。关键思想是用状态空间模型对动眼系统进行建模,并通过估计触发扫视的稀疏输入来在神经域中执行信号分离。该算法在合成数据,恒河猴的神经记录以及具有不同平滑追随范例的人工注释人眼运动记录上进行了评估。所开发的方法显示出高的鲁棒性,提供扫视和平滑的跟踪参数,以及位置,速度和加速度曲线的估计值。另外,通过估计动眼系统的输入,我们获得了对动眼神经的神经输入的估计。

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