首页> 外文会议>IEEE International Conference on Bioinformatics and Biomedicine >Detection of functional state after alcohol consumption by classification and machine learning technics
【24h】

Detection of functional state after alcohol consumption by classification and machine learning technics

机译:通过分类和机器学习技术检测饮酒后的功能状态

获取原文

摘要

Machine learning (ML) technics have been recently used to detect emotion and predict crash severity. This research work aims at assessing different classifications and machine learning technics in predicting the alcohol consumption and associated functional states. 28 young drivers were tested for a 45 min drive with a blood alcohol concentration (BAC) of 0.0, 0.2 and 0.5g/m. Subjective functional states were analysed using Thayer's scale and NASA-TLX. The physiological parameters (electroencephalogram, electrodermal and cardiac activity) and driver simulators parameters (speed, lateral positioning and wheel steering) were acquired during the three alcohol sessions. Data were analysed on 10s temporal windows without superposition nor gap. Two analyses using classification and ML technics were used: to determine both capacity of the algorithms to detect alcohol consumption (BAC level) and functional states (effort, performance and alertness) from NASA and Thayer's scales. Different algorithms were trained using 10 folds cross validation technics using Weka (University of Waikato, NZ). Using both vehicle and physiological data was beneficial for BAC prediction and ROC area of the top three algorithms were found between 0.62 and 0.72 with higher results for Random Forest (RF) algorithms. In functional states prediction, results were similar for all effort, performance and alertness predictions with ROC area reaching 0.75 for RF. Once algorithm setting optimized, performances for BAC prediction reached 0.73 while were, lower than for functional states prediction with ROC area of 0.91 when pairing data. Such results could help in the strategy for detecting alcohol consumption in drivers.
机译:机器学习(ML)技术最近已用于检测情绪并预测碰撞严重性。这项研究工作旨在评估不同的分类和机器学习技术,以预测酒精消耗和相关的功能状态。对28名年轻驾驶员进行了45分钟的驾驶测试,血液酒精浓度(BAC)为0.0、0.2和0.5g / m。使用Thayer量表和NASA-TLX分析主观功能状态。在三个酒精阶段中获取了生理参数(脑电图,皮肤电和心脏活动)和驾驶员模拟器参数(速度,侧向定位和方向盘转向)。在10s的时间窗口上分析数据,没有重叠也没有间隙。使用了两种使用分类和ML技术的分析方法:确定从NASA和Thayer量表中检测酒精消耗(BAC水平)和功能状态(努力,表现和机敏性)的算法能力。使用Weka(新西兰怀卡托大学)使用10倍交叉验证技术对不同算法进行了训练。同时使用媒介物和生理数据对BAC预测是有益的,并且发现前三种算法的ROC面积在0.62和0.72之间,而随机森林(RF)算法的结果更高。在功能状态预测中,所有努力,性能和警觉性预测的结果都相似,RF的ROC面积达到0.75。一旦优化了算法设置,配对数据时BAC预测的性能将达到0.73,而ROC面积为0.91的功能状态预测会更低。这样的结果可能有助于检测驾驶员饮酒的策略。

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