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Applying Machine Learning Techniques to Transportation Mode Recognition Using Mobile Phone Sensor Data

机译:将机器学习技术应用于使用手机传感器数据的运输模式识别

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摘要

This paper adopts different supervised learning methods from the field of machine learning to develop multiclass classifiers that identify the transportation mode, including driving a car, riding a bicycle, riding a bus, walking, and running. Methods that were considered include K-nearest neighbor, support vector machines (SVMs), and tree-based models that comprise a single decision tree, bagging, and random forest (RF) methods. For training and validating purposes, data were obtained from smartphone sensors, including accelerometer, gyroscope, and rotation vector sensors. K-fold cross-validation as well as out-of-bag error was used for model selection and validation purposes. Several features were created from which a subset was identified through the minimum redundancy maximum relevance method. Data obtained from the smartphone sensors were found to provide important information to distinguish between transportation modes. The performance of different methods was evaluated and compared. The RF and SVM methods were found to produce the best performance. Furthermore, an effort was made to develop a new additional feature that entails creating a combination of other features by adopting a simulated annealing algorithm and a random forest method.
机译:本文采用了机器学习领域中不同的监督学习方法,以开发用于识别交通方式的多分类器,包括驾驶汽车,骑自行车,乘公共汽车,步行和跑步。考虑的方法包括K近邻法,支持向量机(SVM)和基于树的模型,这些模型包括单个决策树,装袋法和随机森林(RF)方法。为了进行培训和验证,从智能手机传感器(包括加速度计,陀螺仪和旋转矢量传感器)获取了数据。使用K折交叉验证以及袋外误差进行模型选择和验证。创建了几个功能,通过最小冗余最大相关性方法从中识别出一个子集。发现从智能手机传感器获得的数据可提供重要信息,以区分运输方式。评估并比较了不同方法的性能。发现RF和SVM方法可产生最佳性能。此外,还努力开发一种新的附加功能,该功能需要采用模拟退火算法和随机森林方法来创建其他功能的组合。

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