Finding Your Way Back: Comparing Path Odometry Algorithms for Assisted Return

Proc IEEE Int Conf Pervasive Comput Commun. 2021 Mar:2021:117-122. doi: 10.1109/PerComWorkshops51409.2021.9431082. Epub 2021 May 25.

Abstract

We present a comparative analysis of inertial-based odometry algorithms for the purpose of assisted return. An assisted return system facilitates backtracking of a path previously taken, and can be particularly useful for blind pedestrians. We present a new algorithm for path matching, and test it in simulated assisted return tasks with data from WeAllWalk, the only existing data set with inertial data recorded from blind walkers. We consider two odometry systems, one based on deep learning (RoNIN), and the second based on robust turn detection and step counting. Our results show that the best path matching results are obtained using the turns/steps odometry system.

Keywords: Dynamic programming; RoNIN; Spatial accessibility; Step counting; Turn detection; Wayfinding.