Ensem-DeepHAR:利用深度学习方法集合和运动传感器数据识别智能环境中的人类活动

Q4 Engineering Measurement Sensors Pub Date : 2024-10-24 DOI:10.1016/j.measen.2024.101398
S.M. Mohidul Islam, Kamrul Hasan Talukder
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引用次数: 0

摘要

在智能医疗环境中的医疗服务等许多应用中,识别人类活动起着至关重要的作用。惯性或运动传感器可以测量人体活动时的加速度和角速度等生理特征,我们可以利用它们来学习能够进行活动识别的模型。在过去的几十年里,已经开发出了许多最先进的活动识别系统,但仍有改进的余地。在本文中,我们提出了一种新方法,通过对传感器数据进行大量分析,从运动传感器数据中识别人类活动。在数据分析的基础上,我们使用人类活动识别预处理链(PC-HAR)对数据进行预处理,从而获得高质量的数据。作为识别模型,我们提出了三种不同深度学习算法的集合,即改进的 DeepConvLSTM、改进的 InceptionTime 和改进的 ResNet,并将其命名为 "Ensem-DeepHAR"。拟议模型的结果是通过堆叠来自上述每个模型的预测,然后由随机森林作为元模型使用这些预测来识别最终的活动。我们使用三个常见的基准数据集,在与人相关和与人无关的情况下对我们的方法进行了评估,前者的准确率分别为 99.31 %、99.08 % 和 97.52 %,后者的准确率分别为 97.95 %、98.11 % 和 99.51 %:分别为 WISDM_ar_v1.1、PAMAP2 和 UCI-HAR。实验结果的各种性能指标和衡量标准证明了所提出的模型优于同行。
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Ensem-DeepHAR: Identification of human activity in smart environments using ensemble of deep learning methods and motion sensor data
Recognizing human activity plays a crucial role in many applications such as medical care services in smart healthcare environments. Inertial or motion sensors can measure physiognomies such as acceleration and angular velocity of body movement while performing the activities and we can use them to learn the models capable of activity recognition. Over the past decades, many state-of-the-art activity recognition systems have been developed but there is still room to improve. In this paper, we have proposed a novel approach to identify human activity from motion sensor data by employing an enormous analysis of sensor data. Based on data analysis, we yielded quality data by preprocessing using a preprocessing chain for human activity recognition (PC-HAR) which also includes the Synthetic Minority Over-sampling Technique to balance the data of the dataset. As a recognition model, we proposed an ensemble of three different deep learning algorithms, namely, modified DeepConvLSTM, modified InceptionTime, and modified ResNet which is named ‘Ensem-DeepHAR’. The outcome of the proposed model is carried out by stacking predictions from each of the mentioned models and then a Random Forest as a meta-model uses those predictions to recognize the final activity. We evaluated our method on both person-dependent and person-independent cases and achieved 99.31 %, 99.08 %, and 97.52 % accuracies for the former case and 97.95 %, 98.11 %, and 99.51 % accuracies for the latter case using three common benchmark datasets: WISDM_ar_v1.1, PAMAP2, and UCI-HAR respectively. The various performance metrics and measures of experimental results establish the supremacy of the proposed model over the state-of-the-arts.
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来源期刊
Measurement Sensors
Measurement Sensors Engineering-Industrial and Manufacturing Engineering
CiteScore
3.10
自引率
0.00%
发文量
184
审稿时长
56 days
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