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Impact of Time Domain Features Inertial Sensors on Activity Recognition using Randomized Selection

机译:时域特征的影响和惯性传感器对使用随机选择的活动识别

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Activity performed by the user is one of the major components of context sensing. Now a day’s users are carrying Smartphones or wearable devices with them always. The device is fully equipped with the latest sensors, thus smart devices are prominently used in activity detection. The detection of activity is mainly dependent on three things-1- the sensors used for data collection, 2- the various features extracted from the raw data and 3-Machine Learning model used for training and testing. Researchers are using different sensors and extracting more numbers of features for getting better accuracy. However, feature dimensions are dependent on time of execution. Thus, an optimization is required between number of features used and its execution time. It is also required to find out the impact of different sensors on its accuracy and execution time. In this paper we have tried to discover the trade-off between number of features & sensor used with its accuracy and execution time. The evaluation of proposed work has been done by using publicly available dataset on UCI machine learning repository. Random selection methodology is used for selecting features and 5 popular machine learning algorithms is used to compare the results. The evaluation result shows that gyroscope helps in increasing accuracy if it is used along with accelerometer. We also conclude that features have significant effect on accuracy and execution time, and from various ML models Random forest & K nearest neighbor classifiers are providing better accuracy in most of the cases of Activity Recognition.
机译:用户执行的活动是上下文感测的主要组件之一。现在,一天的用户总是用它们携带智能手机或可穿戴设备。该设备配备有最新的传感器,因此智能设备突出地用于活动检测。活动的检测主要取决于三件事-1-数据收集的传感器,2-从用于训练和测试的原始数据和3机学习模型中提取的各种功能。研究人员正在使用不同的传感器,并提取更多的特征来获得更好的准确性。但是,特征尺寸取决于执行时间。因此,所使用的特征数和执行时间之间需要优化。还需要找出不同传感器对其准确性和执行时间的影响。在本文中,我们试图发现与其准确性和执行时间一起使用的功能和传感器之间的权衡。通过使用UCI机器学习存储库上的公共可用数据集进行了对拟议工作的评估。随机选择方法用于选择功能,5个流行的机器学习算法用于比较结果。评估结果表明,如果使用加速度计,陀螺仪有助于提高准确性。我们还得出结论,特征对准确性和执行时间具有显着影响,并且来自各种ML模型随机林和K最近邻分类在大多数活动识别情况下提供更好的准确性。

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