Deciphering Odor Perception through EEG Brain Activity and Gas Sensors.

Hsin-Ping Peng, Hao-Lung Hsiao, Chien-Hui Su, Yang-Chen Lin, Po-Chih Kuo
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引用次数: 0

Abstract

Recent technological advances have led to innovations like electronic noses and gas sensors, proficient in detecting distinct odors. Despite this, the field of AI and robotics has only marginally explored olfaction, a sense crucial for evoking emotions and memories. Our study investigates the correlation between gas sensor signals and EEG activity during odor recognition. By comparing our findings with questionnaire results, we suggest that individual experiences might influence odor recognition in the human brain. We designed an odor-dispensing system and recorded EEG responses from 15 subjects to six odors, alongside concentration data of four gases for each odor. These EEG and gas sensor data were analyzed using two neural networks for odor classification. Combining EEG and gas sensor data, we attained a 44% accuracy in 6-class odor discrimination, indicating the potential of this integrated approach as a unique 'odor fingerprint' for odor identification.

通过脑电图脑活动和气体传感器解读气味感知。
最近的技术进步带来了一些创新,比如电子鼻和气体传感器,它们能熟练地探测到不同的气味。尽管如此,人工智能和机器人领域对嗅觉的探索还很有限,而嗅觉对于唤起情感和记忆至关重要。我们的研究探讨了气味识别过程中气体传感器信号与脑电图活动之间的关系。通过将我们的研究结果与问卷调查结果进行比较,我们认为个人经历可能会影响人类大脑的气味识别。我们设计了一个气味分配系统,记录了15名受试者对6种气味的脑电图反应,以及每种气味的4种气体浓度数据。利用两种神经网络对EEG和气体传感器数据进行分类分析。结合EEG和气体传感器数据,我们在6类气味识别中获得了44%的准确率,表明这种综合方法作为气味识别的独特“气味指纹”的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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