Sensors (Oct 2024)

Cross-Domain Human Activity Recognition Using Low-Resolution Infrared Sensors

  • Guillermo Diaz,
  • Bo Tan,
  • Iker Sobron,
  • Iñaki Eizmendi,
  • Iratxe Landa,
  • Manuel Velez

DOI
https://doi.org/10.3390/s24196388
Journal volume & issue
Vol. 24, no. 19
p. 6388

Abstract

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This paper investigates the feasibility of cross-domain recognition for human activities captured using low-resolution 8 × 8 infrared sensors in indoor environments. To achieve this, a novel prototype recurrent convolutional network (PRCN) was evaluated using a few-shot learning strategy, classifying up to eleven activity classes in scenarios where one or two individuals engaged in daily tasks. The model was tested on two independent datasets, with real-world measurements. Initially, three different networks were compared as feature extractors within the prototype network. Following this, a cross-domain evaluation was conducted between the real datasets. The results demonstrated the model’s effectiveness, showing that it performed well regardless of the diversity of samples in the training dataset.

Keywords