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Ensemble One-vs-One SVM Classifier for Smartphone Accelerometer Activity Recognition

机译:集成用于智能手机加速度计活动识别的一对一SVM分类器

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摘要

A recognition framework to identify six full body motion from smartphone sensory data is proposed. The proposed system relies on accelerometer, gyroscope and magnetometer data to classify user activities into six groups (sitting, standing, lying down, walking, walking up stairs and walking downstairs). The proposed solution is an improvement of a one-verse-one SVM classifier with an ensemble of different learning methods each trained to discriminate a single activity against another. The improvement presented here doesn't only focus on accuracy but also potential embedded implementation capable of performing real-time classification with mobile data from the cloud. The presented one-versus-one approach, based on a linear kernel achieved 97.50 percent accuracy on a public dataset; second best to 98.57 percent reported in literature which uses a polynomial kernel.
机译:提出了一种识别框架,用于从智能手机的传感数据中识别出六个全身运动。拟议的系统依靠加速度计,陀螺仪和磁力计数据将用户活动分为六类(坐着,站着,躺着,走着,爬楼梯和走到楼下)。所提出的解决方案是对单向SVM分类器的改进,具有多种不同的学习方法,每种学习方法都经过训练以区分单个活动与另一个活动。这里提出的改进不仅专注于准确性,还包括潜在的嵌入式实现,能够对来自云的移动数据执行实时分类。提出的基于线性核的一对多方法在公共数据集上的准确率达到了97.50%。使用多项式核的文献报道,其次优至98.57%。

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