4.6 Article

Group Decision Making-Based Fusion for Human Activity Recognition in Body Sensor Networks

期刊

SENSORS
卷 22, 期 21, 页码 -

出版社

MDPI
DOI: 10.3390/s22218225

关键词

human activity recognition; wearable sensors; selective ensemble learning; sensor data fusion

资金

  1. Scientific Research Project of Tianjin University of Commerce [22KYQD68]
  2. Tianjin Science and Technology Ombudsman Project [22YDTPJC00290]

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This paper proposes a selective ensemble approach with group decision-making for decision-level fusion in human activity recognition. Experimental results demonstrate that the proposed approach outperforms traditional ensemble methods in terms of accuracy and diversity.
Ensemble learning systems (ELS) have been widely utilized for human activity recognition (HAR) with multiple homogeneous or heterogeneous sensors. However, traditional ensemble approaches for HAR cannot always work well due to insufficient accuracy and diversity of base classifiers, the absence of ensemble pruning, as well as the inefficiency of the fusion strategy. To overcome these problems, this paper proposes a novel selective ensemble approach with group decision-making (GDM) for decision-level fusion in HAR. As a result, the fusion process in the ELS is transformed into an abstract process that includes individual experts (base classifiers) making decisions with the GDM fusion strategy. Firstly, a set of diverse local base classifiers are constructed through the corresponding mechanism of the base classifier and the sensor. Secondly, the pruning methods and the number of selected base classifiers for the fusion phase are determined by considering the diversity among base classifiers and the accuracy of candidate classifiers. Two ensemble pruning methods are utilized: mixed diversity measure and complementarity measure. Thirdly, component decision information from the selected base classifiers is combined by using the GDM fusion strategy and the recognition results of the HAR approach can be obtained. Experimental results on two public activity recognition datasets (The OPPORTUNITY dataset; Daily and Sports Activity Dataset (DSAD)) suggest that the proposed GDM-based approach outperforms the well-known fusion techniques and other state-of-the-art approaches in the literature.

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