首页> 外文期刊>International journal of architectural computing: IJAC >Towards encoding shape features with visual event-related potential based brain–computer interface for generative design
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Towards encoding shape features with visual event-related potential based brain–computer interface for generative design

机译:朝着使用基于视觉事件相关的基于潜在的基于脑电电脑界面的形状特征进行编码,用于生成设计

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摘要

This article will focus on abstracting and generalising a well-studied paradigm in visual, event-related potential based brain–computer interfaces, for the spelling of characters forming words, into the visually encoded discrimination of shape features forming design aggregates. After identifying typical technologies in neuroscience and neuropsychology of high interest for integrating fast cognitive responses into generative design and proposing the machine learning model of an ensemble of linear classifiers in order to tackle the challenging features that electroencephalography data carry, it will present experiments in encoding shape features for generative models by a mechanism of visual context updating and the computational implementation of vision as inverse graphics, to suggest that discriminative neural phenomena of event-related potentials such as P300 may be used in a visual articulation strategy for modelling in generative design.
机译:本文将专注于抽象和推广在视觉,事件相关的潜在的基于脑电电脑接口中的良好的范式,用于形成字符的拼写,进入形成设计聚集体的视觉上编码的形状辨别。 在识别神经科学和神经心理学中的典型技术,将快速认知响应集成到生成设计中并提出线性分类器的集合机器学习模型,以解决脑电图数据携带的具有挑战性的特征,它将在编码形状上存在实验 通过视觉上下文更新的机制和视觉的计算实现的生成模型的特征,以表明诸如P300的事件相关电位的判别神经现象可以用于在生成设计中建模的视觉铰接策略中。

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