基于特征描述子模式的心理旋转活动分析研究

Sayantani Ghosh, Lidia Ghosh, A. Konar
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引用次数: 0

摘要

本文的主要目的是研究健康和脑病变受试者在五种不同物体的心理旋转过程中特征描述子模式的差异。因此,脑电图(EEG)活动是在相对于物体当前方向的不同角度的心理旋转过程中测量的。使用eLORETA进行源定位推断,在心理旋转活动中,前额叶和额叶区域的激活增强。实验分析也证实了在执行这一认知任务时,较低α频带的最大激活。采用差分进化算法选择最优特征,并用特征描述符图表示最优特征。这些图推断出特征模式是不同的,并且因对象而异。此外,对于呈现对象的$90^{\ mathm {o}}$心理旋转,这些模式以$45^{\ mathm {o}}$定向;对于$180^{\ mathm {o}}$心理旋转,这些模式以$75^{\ mathm {o}}$定向。然而,前额叶失忆症和阿尔茨海默病患者的特征描述符图存在不一致。研究还发现,在心理旋转过程中,这些图表不受影响,这推断出他们无法执行这样的认知任务。因此,这项工作可以有效地用于检测患有记忆相关障碍的人。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Analytical Study of Mental Rotation Activity Based on Feature Descriptor Patterns
The chief objective of this paper is to investigate the differences in Feature Descriptor patterns during mental rotation of five different objects for both healthy as well as brain diseased subjects. Thus, electroencephalographic (EEG) activity was measured during mental rotation of objects by various angles with respect to its present orientation. Source localization using eLORETA inferred an enhanced activation of pre-frontal and frontal lobe regions during mental rotation activity. Experimental analysis also confirmed maximal activation of lower alpha frequency band while performing this cognitive task. Differential Evolutionary (DE) algorithm has been implemented to select the optimal features which are represented using the Feature Descriptor diagrams. These diagrams infer that the feature patterns are distinct and vary from object to object. Moreover, these patterns orient by $45^{\mathrm {o}}$ for $90^{\mathrm {o}}$ mental rotation and by $75^{\mathrm {o}}$ for $180^{\mathrm {o}}$ mental rotation of the presented objects. However, there exists an inconsistency in the Feature descriptor diagrams for patients suffering from pre-frontal lobe amnesia and Alzheimer's disease. It is also found that these diagrams remain unaffected during mental rotation which infers their incapability to perform such a cognitive task. Hence, this work can be effectively utilized to detect people suffering from memory related disorder.
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