Abstract

Autonomous motion capture (mocap) systems for outdoor scenarios involving flying or mobile cameras rely on i) a robotic front-end to track and follow a human subject in real-time while he/she performs physical activities, and ii) an algorithmic back-end that estimates full body human pose and shape from the saved videos. In this paper we present a novel front-end for our aerial mocap system that consists of multiple micro aerial vehicles (MAVs) with only on-board cameras and computation. In previous work, we presented an approach for cooperative detection and tracking (CDT) of a subject using multiple MAVs. However, it did not ensure optimal view-point configurations of the MAVs to minimize the uncertainty in the person's cooperatively tracked 3D position estimate. In this article we introduce an active approach for CDT. In contrast to cooperatively tracking only the 3D positions of the person, the MAVs can now actively compute optimal local motion plans, resulting in optimal view-point configurations, which minimize the uncertainty in the tracked estimate. We achieve this by decoupling the goal of active tracking as a convex quadratic objective and non-convex constraints corresponding to angular configurations of the MAVs w.r.t. the person. We derive it using Gaussian observation model assumptions within the CDT algorithm. We also show how we embed all the non-convex constraints, including those for dynamic and static obstacle avoidance, as external control inputs in the MPC dynamics. Multiple real robot experiments and comparisons involving 3 MAVs in several challenging scenarios are presented (video link : https://youtu.be/1qWW2zWvRhA). Extensive simulation results demonstrate the scalability and robustness of our approach. ROS-based source code is also provided.

Highlights

  • A ERIAL motion capture of humans in unstructured outdoor scenarios is a challenging and importantManuscript received February 24, 2019; accepted July 3, 2019

  • In our previous work [15], we introduced the concept of converting non-convex constraints into external control inputs ftk(n) using repulsive potential fields

  • We proposed a decentralized convex model-predictive controller (MPC)-based algorithm for the micro-aerial vehicles (MAVs) to actively track and follow a moving person in outdoor environments and in the presence of static and dynamic obstacles

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Summary

Introduction

A ERIAL motion capture (mocap) of humans in unstructured outdoor scenarios is a challenging and important. Manuscript received February 24, 2019; accepted July 3, 2019. Date of publication August 1, 2019; date of current version October 24, 2019. This letter was recommended for publication by Associate Editor S. Marchand upon evaluation of the reviewers’ comments.

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