基于减核极限学习机的体重管理人体活动识别

Arwin Halim, Erick Kwantan, Silfi Langie, Vinson Chandra, Hernawati Gohzali
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引用次数: 0

摘要

体重管理的问题在于无法计算燃烧和消耗的卡路里数量。许多应用程序可以帮助计算它,其中之一是使用可穿戴传感器和智能手机实现人类活动识别。在本文中,使用嵌入智能手机中的加速度计传感器,使用简化核极限学习机(RKELM)算法构建了一个活动识别模型,该传感器用于计算燃烧的卡路里。该模型在极限学习机的基础上进行了改进,加入了高斯核。数据集来自2016年伦敦py数据事件,由五个活动标签组成。该模型将与其他五种模型进行比较,并使用准确率、召回率、f1score、训练时间和测试时间进行评估。结果经10倍交叉验证。实验结果表明,在可接受的训练和测试时间下,基于rkelm的识别模型比其他模型具有更高的性能,f1得分为97%,小于0.06秒。
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Human Activity Recognition using Reduced Kernel Extreme Learning Machine for Body Weight Management
The problem with bodyweight management is the inability to calculate the number of calories burned and consumed. Many applications can help to calculate it and one of them is implementing Human Activity Recognition using wearable sensors and smartphones. In this paper, an activity recognition model is built using the Reduced Kernel Extreme Learning Machine (RKELM) algorithm using an accelerometer sensor embedded in a smartphone that is used for calculating calories burned. This model was improved from the Extreme Learning Machine with the addition of the Gaussian kernel. The dataset comes from the London py data event in 2016 which consists of five activity labels. The proposed model will be compared with five other models and evaluated using precision, recall, f1score, training time, and testing time. The results have been validated with 10-fold cross-validation. The experimental results show that the RKELM-based recognition model has a higher performance than the other models with acceptable training and testing time, with an f1 score of 97% and less than 0.06 seconds.
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