Skip to content

Latest commit

 

History

History
11 lines (7 loc) · 668 Bytes

README.md

File metadata and controls

11 lines (7 loc) · 668 Bytes

Mobile_Health_Exercise

[Lecture project provided by Prof. Christian Holz in the course "Mobile Health and Activity Monitoring, Spring 2023, ETH"]

  • Develop an algorithm to detect step count based on accelerometer data from a LilyGo smartwatch.
  • Data Collection and labelling with LilyGo for the Path Detection in Zurich.
  • Developed an algorithm using previously recorded datasets with wearable devices to predict four different aspects of the user's physical activity: activity type, path taken, step count, and smartwatch location on body.
  • Sensor Fusion

step_count_result