Abstract

According to the Industry 4.0 vision, humans in a smart factory, should be equipped with formidable and seamless communication capabilities and integrated into a cyber-physical system (CPS) that can be utilized to monitor and recognize human activity via artificial intelligence (e.g., deep learning). Recent advances in the accuracy of deep learning have contributed significantly to solving the human activity recognition issues but it remains necessary to develop high performance deep learning models that provide greater accuracy. In this paper, three models: long short-term memory (LSTM), convolutional neural network (CNN), and combined CNN-LSTM are proposed for classification of human activities. These models are applied to a dataset collected from 36 persons engaged in 6 classes of activities – downstairs, jogging, sitting, standing, upstairs, and walking. The proposed models are trained using TensorFlow framework with a hyper-parameter tuning method to achieve high accuracy. Experimentally, confusion matrices and receiver operating characteristic (ROC) curves are used to assess the performance of the proposed models. The results illustrate that the hybrid model CNN-LSTM provides a better performance than either LSTM or CNN in the classification of human activities. The CNN-LSTM model provides the best performance, with a testing accuracy of 97.76%, followed by the LSTM with a testing accuracy of 96.61%, while the CNN shows the least testing accuracy of 94.51%. The testing loss rates for the LSTM, CNN, and CNN-LSTM are 0.236, 0.232, and 0.167, respectively, while the precision, recall, F1-Measure, and the area under the ROC curves (AUCS) for the CNN-LSTM are 97.75%, 97.77%, 97.76%, and 100%, respectively.

Highlights

  • In the domain of Industry 4.0, the interaction between humans/workers in terms of their activities and the physical environment has changed and become crucial for the synergetic integration of the intelligent manufacturing assets [1, 2]

  • Human activity recognition has become a popular topic for research due to its importance in several fields, such as healthcare, sports, and fitness [5,6,7,8,9], interactive gaming, military, human-computer interaction, remote monitoring systems, and smart manufacturing [10]

  • One of objectives of human activity recognition is to detect their identification in certain places [11]

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Summary

Introduction

In the domain of Industry 4.0, the interaction between humans/workers in terms of their activities and the physical environment has changed and become crucial for the synergetic integration of the intelligent manufacturing assets [1, 2]. In a smart factory, classifying and recognizing human activities helps to evaluate human performance and their overall efficiency in production systems. From this perspective, the artificial intelligence (AI) has played a significant role in human activities recognition, in the era of Industry 4.0 [3, 4]. Human activity recognition has become a popular topic for research due to its importance in several fields, such as healthcare, sports, and fitness [5,6,7,8,9], interactive gaming, military, human-computer interaction, remote monitoring systems, and smart manufacturing [10]. Many traditional machine learning approaches have been proposed for accurately recognition of a human activity [15,16,17,18], but do not always achieve a satisfactory level of accuracy [19, 20]

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