人类活动识别的机器学习算法实现

Ankit Vijayvargiya, Nidhi Kumari, Palak Gupta, Rajesh Kumar
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引用次数: 5

摘要

从技术上讲,人类活动识别(HAR)是一个利用加速度计和陀螺仪等传感器,根据手势证据预测个人行为的问题。它在个人生物特征签名、日常生活监控、反恐以及反犯罪证券、医疗相关应用等对比领域发挥着重要作用。如今,智能手机配备了先进的处理器和内置传感器。这就有可能开启一个新的数据挖掘领域。本文主要对智能手机加速度传感器组成的数据进行HAR分析。此外,它还说明了在称为重叠的窗口方法的帮助下获得的时域特征的使用。它的窗口大小为250ms,重叠度为25%。许多机器学习分类器,如k近邻、线性判别分析、bagging分类器、梯度增强分类器、决策树、随机森林和使用三种不同核的支持向量机进行了练习。结果表明,具有5倍交叉验证的随机森林对人类活动的识别准确率最高(92.71%)。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Implementation of Machine Learning Algorithms For Human Activity Recognition
Human Activity Recognition (HAR) is technically the problem of forecasting an individual’s actions based on evidence of their gesture using sensors functioning as accelerometer and gyroscope. It plays a major role in contrasting sectors such as personal biometric signature, daily life monitoring, anti-terrorists along with anti-crime securities, medical-related applications, and so on. These days, smart phones are well-resourced with leading processors and built-in sensors. This comes up with the possibility to unfold a new arena of data mining. This paper signifies the analysis of HAR focused on data composed via accelerometer sensors of smart phones. Further, it illustrates the use of time-domain features which are acquired with the help of a windowing approach termed as overlapping. It is accompanied by a window size of 250ms along with overlapping of 25%. Numerous machine learning classifiers such as k-nearest neighbors, linear discriminant analysis, bagging classifier, gradient boosting classifier, decision tree, random forest, and support vector machine using three different kernels were practiced. The outcomes exhibit that random forest with 5-fold cross-validation imparts the highest accuracy (92.71%) in recognition of human activities.
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