Robust Person Identification and Following in a Mobile Robot Based on Deep Learning and Optical Tracking

Author:

Condés Ignacio1,Fernández-Conde Jesús2ORCID,Perdices Eduardo1,Cañas José M.2ORCID

Affiliation:

1. JdeRobot Organization, Alcorcón, 28922 Madrid, Spain

2. Signal Theory, Communications, Telematics Systems and Computation Department, Fuenlabrada Engineering School, Rey Juan Carlos University, Fuenlabrada, 28942 Madrid, Spain

Abstract

There is an exciting synergy between deep learning and robotics, combining the perception skills a deep learning system can achieve with the wide variety of physical responses a robot can perform. This article describes an embedded system integrated into a mobile robot capable of identifying and following a specific person reliably based on a convolutional neural network pipeline. In addition, the design incorporates an optical tracking system for supporting the inferences of the neural networks, allowing the determination of the position of a person using an RGB depth camera. The system runs on an NVIDIA Jetson TX2 board, an embedded System-on-Module capable of performing computationally demanding tasks onboard and handling the complexity needed to run a solid tracking and following algorithm. A robotic mobile base with the Jetson TX2 board attached receives velocity orders to move the system toward the target. The proposed approach has been validated on a mobile robotic platform that successfully follows a determined person, relying on the robustness of the combination of deep learning with optical tracking for working efficiently in a real environment.

Funder

Spanish Ministry of Science and Innovation

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

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