Novel Human Activity Recognition by graph engineered ensemble deep learning model

IF 1.8 Q3 AUTOMATION & CONTROL SYSTEMS
Mamta Ghalan, Rajesh Kumar Aggarwal
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引用次数: 0

Abstract

This research delves into the domain of Human Activity Recognition (HAR) through sensor data analysis, offering a comprehensive exploration of three diverse datasets: UniMiB-SHAR, Motion Sense, and WISDM Actitracker. The UniMiB-SHAR dataset encompasses a diverse array of linear as well as non-linear and complex activities which involve the movement of more than one joint or muscle (for example Hitting Obstacles, jogging and falling with face down). This motion generates highly correlated sensor readings over a certain period of time. In this case, Convolution Neural Networks (CNNs) are effective in feature extraction as well as classification of HAR activities, but they may not fully grasp the combined features of spatial as well as temporal aspects in the HAR datasets and heavily rely on labelled data. Whereas, Graph convolution networks (GCN), with their capacity to model complex interactions through graph structure, complement CNN’s capabilities in classifying non-linear activities in the HAR dataset. By leveraging the Knowledge graph structure and acquiring the feature embeddings from the GCN model, in this study, a Noval ensemble CNN model is proposed for the classification of activities. The novel HAR pipeline is termed as Graph Engineered EnsemCNN HAR (GE-EnsemCNN-HAR) and its performance is evaluated on HAR datasets. Proposed model demonstrated a noteworthy accuracy of 93.5% on UniMiB-SHAR dataset, surpassing the Shallow CNN model with GNN with an improvement of 20.14%. The proposed model achieved a notable accuracy rate of 96.18% and 98% when evaluated on the Motion Sense and WISDM Actitracker dataset.

利用图工程集合深度学习模型进行新颖的人类活动识别
本研究通过传感器数据分析深入研究人类活动识别(HAR)领域,对三个不同的数据集进行了全面探索:UniMiB-SHAR、Motion Sense 和 WISDM Actitracker。UniMiB-SHAR 数据集包含各种线性、非线性和复杂的活动,涉及多个关节或肌肉的运动(例如撞击障碍物、慢跑和脸朝下摔倒)。这种运动会在一定时间内产生高度相关的传感器读数。在这种情况下,卷积神经网络(CNN)能有效地提取 HAR 活动的特征并对其进行分类,但它们可能无法完全掌握 HAR 数据集中空间和时间方面的综合特征,而且严重依赖于标记数据。而图卷积网络(GCN)能够通过图结构对复杂的交互作用进行建模,从而补充了 CNN 在 HAR 数据集中对非线性活动进行分类的能力。通过利用知识图谱结构和从 GCN 模型中获取特征嵌入,本研究提出了用于活动分类的 Noval 集合 CNN 模型。新型 HAR 管道被称为 Graph Engineered EnsemCNN HAR(GE-EnsemCNN-HAR),其性能在 HAR 数据集上进行了评估。所提出的模型在 UniMiB-SHAR 数据集上的准确率达到了 93.5%,超过了使用 GNN 的浅层 CNN 模型,提高了 20.14%。在 Motion Sense 和 WISDM Actitracker 数据集上进行评估时,所提模型的准确率分别达到了 96.18% 和 98%。
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来源期刊
IFAC Journal of Systems and Control
IFAC Journal of Systems and Control AUTOMATION & CONTROL SYSTEMS-
CiteScore
3.70
自引率
5.30%
发文量
17
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