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kNN Sampling for Personalised Human Activity Recognition

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Case-Based Reasoning Research and Development (ICCBR 2017)

Part of the book series: Lecture Notes in Computer Science ((LNAI,volume 10339))

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Abstract

The need to adhere to recommended physical activity guidelines for a variety of chronic disorders calls for high precision Human Activity Recognition (HAR) systems. In the SelfBACK system, HAR is used to monitor activity types and intensities to enable self-management of low back pain (LBP). HAR is typically modelled as a classification task where sensor data associated with activity labels are used to train a classifier to predict future occurrences of those activities. An important consideration in HAR is whether to use training data from a general population (subject-independent), or personalised training data from the target user (subject-dependent). Previous evaluations have shown that using personalised data results in more accurate predictions. However, from a practical perspective, collecting sufficient training data from the end user may not be feasible. This has made using subject-independent data by far the more common approach in commercial HAR systems. In this paper, we introduce a novel approach which uses nearest neighbour similarity to identify examples from a subject-independent training set that are most similar to sample data obtained from the target user and uses these examples to generate a personalised model for the user. This nearest neighbour sampling approach enables us to avoid much of the practical limitations associated with training a classifier exclusively with user data, while still achieving the benefit of personalisation. Evaluations show our approach to significantly out perform a general subject-independent model by up to 5%.

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Notes

  1. 1.

    http://axivity.com/product/ax3.

  2. 2.

    https://github.com/selfback/activity-recognition/tree/master/activity_data.

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Acknowledgment

This work was fully sponsored by the collaborative project SelfBACK under contract with the European Commission (# 689043) in the Horizon 2020 framework. The authors would also like to thank all students and colleagues who volunteered as subjects for data collection.

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Correspondence to Sadiq Sani .

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Sani, S., Wiratunga, N., Massie, S., Cooper, K. (2017). kNN Sampling for Personalised Human Activity Recognition. In: Aha, D., Lieber, J. (eds) Case-Based Reasoning Research and Development. ICCBR 2017. Lecture Notes in Computer Science(), vol 10339. Springer, Cham. https://doi.org/10.1007/978-3-319-61030-6_23

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  • DOI: https://doi.org/10.1007/978-3-319-61030-6_23

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