An Unsupervised Learning-Based Spatial Co-Location Detection System from Low-Power Consumption Sensor.

Journal: Sensors (Basel, Switzerland)
Published Date:

Abstract

Spatial co-location detection is the task of inferring the co-location of two or more objects in the geographic space. Mobile devices, especially a smartphone, are commonly employed to accomplish this task with the human object. Previous work focused on analyzing mobile GPS data to accomplish this task. While this approach may guarantee high accuracy from the perspective of the data, it is considered inefficient since knowing the object's absolute geographic location is not required to accomplish this task. This work proposed the implementation of the unsupervised learning-based algorithm, namely convolutional autoencoder, to infer the co-location of people from a low-power consumption sensor data-magnetometer readings. The idea is that if the trained model can also reconstruct the other data with the structural similarity (SSIM) index being above 0.5, we can then conclude that the observed individuals were co-located. The evaluation of our system has indicated that the proposed approach could recognize the spatial co-location of people from magnetometer readings.

Authors

  • David Ishak Kosasih
    Department of Computer Engineering, Dongseo University, Busan 47011, Korea.
  • Byung-Gook Lee
    Department of Computer Engineering, Dongseo University, 47 Jurye-Ro, Sasang-Gu, Busan 47011, South Korea. Electronic address: lbg@dongseo.ac.kr.
  • Hyotaek Lim
    Department of Computer Engineering, Dongseo University, Busan 47011, Korea.
  • Mohammed Atiquzzaman
    School of Computer Science, University of Oklahoma, Norman, OK 73019, USA.