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. 2020 Apr 20;20(8):2350.
doi: 10.3390/s20082350.

Choosing the Best Sensor Fusion Method: A Machine-Learning Approach

Affiliations

Choosing the Best Sensor Fusion Method: A Machine-Learning Approach

Ramon F Brena et al. Sensors (Basel). .

Abstract

Multi-sensor fusion refers to methods used for combining information coming from several sensors (in some cases, different ones) with the aim to make one sensor compensate for the weaknesses of others or to improve the overall accuracy or the reliability of a decision-making process. Indeed, this area has made progress, and the combined use of several sensors has been so successful that many authors proposed variants of fusion methods, to the point that it is now hard to tell which of them is the best for a given set of sensors and a given application context. To address the issue of choosing an adequate fusion method, we recently proposed a machine-learning data-driven approach able to predict the best merging strategy. This approach uses a meta-data set with the Statistical signatures extracted from data sets of a particular domain, from which we train a prediction model. However, the mentioned work is restricted to the recognition of human activities. In this paper, we propose to extend our previous work to other very different contexts, such as gas detection and grammatical face expression identification, in order to test its generality. The extensions of the method are presented in this paper. Our experimental results show that our extended model predicts the best fusion method well for a given data set, making us able to claim a broad generality for our sensor fusion method.

Keywords: data fusion; meta-data; optimal; sensor fusion.

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Conflict of interest statement

The authors declare no conflict of interest.

Figures

Figure 1
Figure 1
Overview of the extended method that predicts the optimal fusion method.
Figure 2
Figure 2
Procedure to create the Statistical signature data set. PCA = Principal Component Analysis.

References

    1. Gravina R., Alinia P., Ghasemzadeh H., Fortino G. Multi-sensor fusion in body sensor networks: State-of-the-art and research challenges. Inf. Fusion. 2017;35:68–80. doi: 10.1016/j.inffus.2016.09.005. - DOI
    1. Hall D.L., Llinas J. An introduction to multisensor data fusion. Proc. IEEE. 1997;85:6–23. doi: 10.1109/5.554205. - DOI
    1. Bosse E., Roy J., Grenier D. Data fusion concepts applied to a suite of dissimilar sensors; Proceedings of the 1996 Canadian Conference on Electrical and Computer Engineering; Calgary, AB, Canada. 26–29 May 1996; pp. 692–695.
    1. Lantz B. Machine Learning with R. Packt Publishing Ltd.; Birmingham, UK: 2015.
    1. Müller A.C., Guido S. Introduction to Machine Learning with Python: A Guide for Data Scientists. O’Reilly Media, Inc.; Sebastopol, CA, USA: 2016.

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