Human activity recognition in WBAN using ensemble model

J. Boga, D. V
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引用次数: 2

Abstract

Purpose For achieving the profitable human activity recognition (HAR) method, this paper solves the HAR problem under wireless body area network (WBAN) using a developed ensemble learning approach. The purpose of this study is,to solve the HAR problem under WBAN using a developed ensemble learning approach for achieving the profitable HAR method. There are three data sets used for this HAR in WBAN, namely, human activity recognition using smartphones, wireless sensor data mining and Kaggle. The proposed model undergoes four phases, namely, “pre-processing, feature extraction, feature selection and classification.” Here, the data can be preprocessed by artifacts removal and median filtering techniques. Then, the features are extracted by techniques such as “t-Distributed Stochastic Neighbor Embedding”, “Short-time Fourier transform” and statistical approaches. The weighted optimal feature selection is considered as the next step for selecting the important features based on computing the data variance of each class. This new feature selection is achieved by the hybrid coyote Jaya optimization (HCJO). Finally, the meta-heuristic-based ensemble learning approach is used as a new recognition approach with three classifiers, namely, “support vector machine (SVM), deep neural network (DNN) and fuzzy classifiers.” Experimental analysis is performed. Design/methodology/approach The proposed HCJO algorithm was developed for optimizing the membership function of fuzzy, iteration limit of SVM and hidden neuron count of DNN for getting superior classified outcomes and to enhance the performance of ensemble classification. Findings The accuracy for enhanced HAR model was pretty high in comparison to conventional models, i.e. higher than 6.66% to fuzzy, 4.34% to DNN, 4.34% to SVM, 7.86% to ensemble and 6.66% to Improved Sealion optimization algorithm-Attention Pyramid-Convolutional Neural Network-AP-CNN, respectively. Originality/value The suggested HAR model with WBAN using HCJO algorithm is accurate and improves the effectiveness of the recognition.
基于集成模型的WBAN人类活动识别
目的为了实现有效的人体活动识别(HAR)方法,采用一种改进的集成学习方法解决了无线体域网络(WBAN)下的人体活动识别问题。本研究的目的是利用一种成熟的集成学习方法来解决WBAN下的HAR问题,以实现有利可图的HAR方法。该HAR在WBAN中使用了三个数据集,即使用智能手机的人类活动识别,无线传感器数据挖掘和Kaggle。该模型经历了“预处理、特征提取、特征选择和分类”四个阶段。在这里,数据可以通过去除伪影和中值滤波技术进行预处理。然后,利用“t分布随机邻居嵌入”、“短时傅立叶变换”和统计方法提取特征;在计算每一类数据方差的基础上,将加权最优特征选择作为下一步选择重要特征的步骤。这种新的特征选择是由混合土狼Jaya优化(HCJO)实现的。最后,将基于元启发式的集成学习方法作为一种新的识别方法,采用支持向量机(SVM)、深度神经网络(DNN)和模糊分类器三种分类器。进行了实验分析。HCJO算法通过优化模糊隶属函数、支持向量机的迭代极限和DNN的隐藏神经元数来获得更优的分类结果,提高集成分类的性能。结果增强HAR模型的准确率高于常规模型,分别高于fuzzy模型的6.66%、DNN模型的4.34%、SVM模型的4.34%、ensemble模型的7.86%和Improved Sealion优化算法- attention Pyramid-Convolutional Neural Network-AP-CNN模型的6.66%。提出的基于HCJO算法的WBAN HAR模型具有较高的准确性,提高了识别的有效性。
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