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Feature Optimization for Gifted Children Diagnosis

机译:针对天才儿童诊断的功能优化

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摘要

This paper deals with the diagnosis of intellectual precocity in gifted children (GC) cases. The P300 component is usually used for giftedness identification. By the use of empirical mode decomposition (EMD), a significant P300 detection is obtained through electroencephalogram signals (EEG). The novelty of the proposed work is to speed up the intellectual ability characterization based on statistical features extraction from P300 response. In order to get an optimized number of estimated information, a selection technique based on the characterization degree criterion (CD-J) is then introduced. This allows a considerably computing time decreasing and an excessive performance of the achieved results. Besides that, the proposed analysis method is applied on (GC) dataset, covering a parental relationship. Compared to the previous works, the proposed approach seems to be promising and useful for the characterization children and their diagnostic improvement.
机译:本文探讨了天才儿童(GC)病例中智力早熟的诊断。 P300组件通常用于识别天才。通过使用经验模式分解(EMD),可通过脑电图信号(EEG)获得显着的P300检测。拟议工作的新颖之处在于,基于从P300响应中提取的统计特征,加快对智力能力的刻画。为了获得最佳数量的估计信息,然后介绍了基于特征度标准(CD-J)的选择技术。这将大大减少计算时间,并导致所获得结果的性能过高。除此之外,将所提出的分析方法应用于(GC)数据集,涵盖了父母之间的关系。与以前的工作相比,所提出的方法对于表征儿童及其诊断改善似乎是有希望的和有用的。

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