Improving state estimation through projection post-processing for activity recognition with application to football

Michał Ciszewski*, Jakob Söhl, Geurt Jongbloed

*Corresponding author for this work

Research output: Contribution to journalArticleScientificpeer-review

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Abstract

The past decade has seen an increased interest in human activity recognition based on sensor data. Most often, the sensor data come unannotated, creating the need for fast labelling methods. For assessing the quality of the labelling, an appropriate performance measure has to be chosen. Our main contribution is a novel post-processing method for activity recognition. It improves the accuracy of the classification methods by correcting for unrealistic short activities in the estimate. We also propose a new performance measure, the Locally Time-Shifted Measure (LTS measure), which addresses uncertainty in the times of state changes. The effectiveness of the post-processing method is evaluated, using the novel LTS measure, on the basis of a simulated dataset and a real application on sensor data from football. The simulation study is also used to discuss the choice of the parameters of the post-processing method and the LTS measure.

Original languageEnglish
Pages (from-to)1509-1538
Number of pages30
JournalStatistical Methods and Applications
Volume32
Issue number5
DOIs
Publication statusPublished - 2023

Keywords

  • Activity recognition
  • Performance measures
  • Post-processing
  • Wearable sensors

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