Machines (Aug 2020)

A Cost-Effective Person-Following System for Assistive Unmanned Vehicles with Deep Learning at the Edge

  • Anna Boschi,
  • Francesco Salvetti,
  • Vittorio Mazzia,
  • Marcello Chiaberge

DOI
https://doi.org/10.3390/machines8030049
Journal volume & issue
Vol. 8, no. 3
p. 49

Abstract

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The vital statistics of the last century highlight a sharp increment of the average age of the world population with a consequent growth of the number of older people. Service robotics applications have the potentiality to provide systems and tools to support the autonomous and self-sufficient older adults in their houses in everyday life, thereby avoiding the task of monitoring them with third parties. In this context, we propose a cost-effective modular solution to detect and follow a person in an indoor, domestic environment. We exploited the latest advancements in deep learning optimization techniques, and we compared different neural network accelerators to provide a robust and flexible person-following system at the edge. Our proposed cost-effective and power-efficient solution is fully-integrable with pre-existing navigation stacks and creates the foundations for the development of fully-autonomous and self-contained service robotics applications.

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