Abstract

The inherent complexity of human physical activities makes it difficult to accurately recognize activities with wearable sensors. To this end, this paper proposes a hierarchical activity recognition framework and two different feature selection methods to improve the recognition performance. Specifically, according to the characteristics of human activities, predefined activities of interest are organized into a hierarchical tree structure, where each internal node represents different groups of activities and each leaf node represents a specific activity label. Then, the proposed feature selection methods are appropriately integrated to optimize the feature space of each node. Finally, we train corresponding classifiers to distinguish different activity groups and to classify a new unseen sample into one of the leaf-nodes in a top-down fashion to predict its activity label. To evaluate the performance of the proposed framework and feature selection methods, we conduct extensive comparative experiments on publicly available datasets and analyze the model complexity. Experimental results show that the proposed method reduces the dimensionality of original feature space and contributes to enhancement of the overall recognition accuracy. In addition, for feature selection, returning multiple activity-specific feature subsets generally outperforms the case of returning a common subset of features for all activities.

Highlights

  • With the rapid development of network communication technology and the miniature and high portability of various sensing units, a variety of applications [1,2,3], ranging from activity reminders and anomaly detection to fall detection, rehabilitation instruction, and wellness evaluation, are constantly emerging in the fields of ambient assisted living systems, smart home, smart building, healthcare, industry, security, etc

  • To better discriminate similar activities and utilize informative features, this study proposes the construction of a hierarchical activity recognition framework

  • We propose the construction of a hierarchical activity recognition framework

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Summary

Introduction

With the rapid development of network communication technology and the miniature and high portability of various sensing units, a variety of applications [1,2,3], ranging from activity reminders and anomaly detection to fall detection, rehabilitation instruction, and wellness evaluation, are constantly emerging in the fields of ambient assisted living systems, smart home, smart building, healthcare, industry, security, etc Among these meaningful applications, activity recognition plays a central role in better understanding the relationship between humans and their surroundings, where it essentially bridges the gap between the low-level streaming sensor data and high-level demand-oriented applications [4,5]. An individual may walk with different human body movement patterns and different walking speeds, Sensors 2018, 18, 3629; doi:10.3390/s18113629 www.mdpi.com/journal/sensors

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