Sensors Technologies for Human Activity Analysis Based on SVM Optimized by PSO Algorithm

Mouazma Batool, A. Jalal, Kibum Kim
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引用次数: 55

Abstract

The rapid growth of wearable sensors have increased the importance of human activity analysis in different areas of information technologies. Motion artifacts often degrade the performance of wearable sensors. Several wearable sensors have been used since the last decades in order to recognize physical activity detection. The wearable sensors could have numerous applications in medical and daily life routine activities like human gait analysis, health care, fitness, etc. In this paper, accelerometer and gyroscope sensors dataset has been used to propose an efficient model for physical activity detection. We designed a new feature extraction algorithm, Mel-frequency cepstral coefficient and statistical features to extract valuable features. Then, classification of different daily life activities is performed via Particle Swarm Optimization (PSO) together with SVM algorithm over bench mark motion-sense dataset. The results of our model shows that pre-classifier as PSO and SVM along with feature extraction module excel in term of accuracy and efficiency. Our experimental results have shown accuracy of 87.50% over motion-sense dataset. This model is recommended for the system associating in physical activity detection, especially in medical fitness field.
基于PSO算法优化的SVM人体活动分析传感器技术
可穿戴传感器的快速发展增加了人类活动分析在不同信息技术领域的重要性。运动伪影通常会降低可穿戴传感器的性能。自过去几十年以来,为了识别身体活动检测,已经使用了几种可穿戴传感器。这种可穿戴传感器在医疗和日常生活中有许多应用,比如人体步态分析、医疗保健、健身等。本文利用加速度计和陀螺仪传感器数据集,提出了一种有效的身体活动检测模型。我们设计了一种新的特征提取算法,结合Mel-frequency倒谱系数和统计特征来提取有价值的特征。然后,在基准运动感知数据集上,通过粒子群优化(PSO)和支持向量机算法对不同的日常生活活动进行分类;模型结果表明,PSO和SVM结合特征提取模块的预分类器在准确率和效率上都有显著提高。我们的实验结果表明,在运动感觉数据集上,准确率达到87.50%。该模型推荐用于体育活动检测的系统关联,特别是医疗健身领域。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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