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Using WiFi signals (RSSI values) to predict indoor locations

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Indoor WiFi Positioning

This study uses user-generated WiFi fingerprints to derive locations at different granularity levels.

For optimal results, each room location should have a distinct set of repeated access points with varying signal intensity.

File structure

  • data/: UJIIndoorLoc data (original and subsets)
  • notebooks/: Jupyter notebooks for classification
  • results/: K-Means clustering results
  • utils/: helper functions
  • visualisation/: visualisation plots

Results

  • Building classification: 99.88% of test accuracy
  • Floor classification: 88.56% to 93.44% of test accuracy
  • Room classification: varied accuracy scores