A Multi-channel NIRS System for Prefrontal Mental Task Classification Employing Deep Forest Algorithm

Yizhen Wen, Xiangao Qi, Shaoyang Cui, Cheng Chen, Mingye Chen, Jian Zhao, Guoxing Wang
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引用次数: 7

Abstract

This paper presents a multi-channel continuous-wave near-infrared spectroscopy (NIRS) system, which is applied to classify different cortical activation states of the prefrontal cortex (PFC). Mental arithmetic, digit span, semantic task and relax were selected as four mental tasks. A deep forest algorithm is employed to achieve high classification accuracy. With employing multi-grained scanning to NIRS data, this system can extract the structural features and result in higher performance. The proposed system with proper optimization can achieve 85.7% accuracy on the self-built dataset, which is the highest results compared to the existing systems.
基于深度森林算法的多通道近红外系统前额叶心理任务分类
本文提出了一种多通道连续波近红外光谱(NIRS)系统,用于对前额皮质(PFC)皮层的不同激活状态进行分类。选择心算、数字跨度、语义任务和放松作为四个心理任务。采用深度森林算法实现了较高的分类精度。通过对近红外光谱数据进行多粒度扫描,该系统可以提取出结构特征,提高了系统的性能。经过适当的优化,该系统在自建数据集上的准确率达到85.7%,是现有系统的最高结果。
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