首页> 外文会议>International Conference on Augmented Cognition >How Low Can You Go? Empirically Assessing Minimum Usable DAQ Performance for Highly Fieldable EEG Systems
【24h】

How Low Can You Go? Empirically Assessing Minimum Usable DAQ Performance for Highly Fieldable EEG Systems

机译:你有多低?经验评估高度现有的EEG系统的最小可用DAQ性能

获取原文

摘要

Electroencephalography (EEG) as a physiological assessment technique holds high promise for on-line monitoring of cognitive states. Examples include detecting when a user is overly fatigued, if they are paying attention to a target item, or even detecting sub-conscious object recognition, all of which can be used for greatly enhanced human-system interaction. However, because EEG involves measuring extremely small voltage fluctuations (microvolts) against a potential background that is very large (milivolts), conventional EEG data acquisition (DAQ) systems utilize very high-resolution components, such as low-noise amplifiers and 24-bit sigma-delta analog-to-digital converters (ADCs) on the ideal premise of acquiring a maximal resolution signal to guarantee information content from the data. Unfortunately this comes at the cost of high power consumption and requires expensive system components. We hypothesize that, for many targeted research applications, this level of resolution may not be necessary, and that by intelligently allowing a reduction in the signal fidelity, substantial savings in cost and power consumption can be obtained. To date though a pragmatic minimum resolution remains unexplored. Here, we discuss the utility of using a parametric approach of simulating signal degradation analogous to decreasing ADC bit (vertical) resolution and amplifier fidelity. Results derived from classification of both drowsiness (alpha oscillation) and oddity (P300) detection show strong overall robustness to poor-quality signals, such that classifier performance remains unaffected until resolution is well outside of typical recording specifications. These observations suggest that researchers and system designers should carefully consider that resolution trade-offs for power and cost are entirely reasonable for targeted applications, enabling feasibility of ultra-low power or highly fieldable data collection systems in the near future.
机译:脑电图(EEG)作为生理学评估技术对认知状态的在线监测具有高承担能力。示例包括检测用户何时过度疲劳,如果它们正在注意目标项,或者甚至检测到亚有意识的对象识别,则所有这些都可以用于大大提高人工系统交互。但是,因为脑电图涉及对非常大(Milivolts)的潜在背景测量极小的电压波动(微伏),传统的EEG数据采集(DAQ)系统利用非常高分辨率的组件,例如低噪声放大器和24位Sigma-Delta模数转换器(ADC)获取最大分辨率信号以保证来自数据的信息内容。不幸的是,这是以高功耗的成本,需要昂贵的系统组件。我们假设,对于许多有针对性的研究应用,可能不需要这种分辨率,并且通过智能地允许降低信号保真度,可以获得成本和功耗的大大节省。迄今为止,尽管务实的最低决议仍未探索。在这里,我们讨论使用参数化方法模拟信号劣化的实用性类似于降低ADC位(垂直)分辨率和放大器保真度。结果源自嗜睡(α振荡)和奇数(P300)检测的分类显示出对质量差的信号的强大的整体鲁棒性,使得分类器性能不受影响,直到分辨率良好地在典型的记录规范之外。这些观察结果表明,研究人员和系统设计人员应仔细考虑电力和成本的决议权衡是针对性应用的完全合理,使超低功耗或高度可实现的数据收集系统在不久的将来能够实现可行性。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号