Abstract

Human activity recognition plays a prominent role in numerous applications like smart homes, elderly healthcare and ambient intelligence. The complexity of human behavior leads to the difficulty of developing an accurate activity recognizer, especially in situations where different activities have similar sensor readings. Accordingly, how to measure the relationships among activities and construct an activity recognizer for better distinguishing the confusing activities remains critical. To this end, we in this study propose a clustering guided hierarchical framework to discriminate on-going human activities. Specifically, we first introduce a clustering-based activity confusion index and exploit it to automatically and quantitatively measure the confusion between activities in a data-driven way instead of relying on the prior domain knowledge. Afterwards, we design a hierarchical activity recognition framework under the guidance of the confusion relationships to reduce the recognition errors between similar activities. Finally, the simulations on the benchmark datasets are evaluated and results show the superiority of the proposed model over its competitors. In addition, we experimentally evaluate the key components of the framework comprehensively, which indicates its flexibility and stability.

Highlights

  • Accepted: 18 October 2021Benefiting from the rapid development and fusion of sensing technology, pervasive computing, and artificial intelligence, researchers have designed and implemented a wealth of Internet of Things (IoTs) systems and applications, such as behavior analysis, sports and games, the elderly healthcare, chronic disease management, smart buildings, smart homes and ambient intelligence, etc. [1,2]

  • An individual can conduct concurrent and interleaved activities, and there are activities involved in a specific application having similar sensor signals, which confuses an activity recognizer to a certain extent [7,8]

  • According to Algorithm 1, we first measure the confusion among activities and build a clustering-guided hierarchical activity recognition model

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Summary

Introduction

Accepted: 18 October 2021Benefiting from the rapid development and fusion of sensing technology, pervasive computing, and artificial intelligence, researchers have designed and implemented a wealth of Internet of Things (IoTs) systems and applications, such as behavior analysis, sports and games, the elderly healthcare, chronic disease management, smart buildings, smart homes and ambient intelligence, etc. [1,2]. Benefiting from the rapid development and fusion of sensing technology, pervasive computing, and artificial intelligence, researchers have designed and implemented a wealth of Internet of Things (IoTs) systems and applications, such as behavior analysis, sports and games, the elderly healthcare, chronic disease management, smart buildings, smart homes and ambient intelligence, etc. With the complex characteristics of human behavior, it is not very easy to build an accurate activity recognizer for practical applications [5]. There exist intra-subject and inter-subject variations of how people perform an activity, which is difficult to the generalization ability of activity recognizers [6]. Automatically and accurately recognizing human activities is still a challenging issue [9,10]

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