Machines (Mar 2022)

RPEOD: A Real-Time Pose Estimation and Object Detection System for Aerial Robot Target Tracking

  • Chi Zhang,
  • Zhong Yang,
  • Luwei Liao,
  • Yulong You,
  • Yaoyu Sui,
  • Tang Zhu

DOI
https://doi.org/10.3390/machines10030181
Journal volume & issue
Vol. 10, no. 3
p. 181

Abstract

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Pose estimation and environmental perception are the fundamental capabilities of autonomous robots. In this paper, a novel real-time pose estimation and object detection (RPEOD) strategy for aerial robot target tracking is presented. The aerial robot is equipped with a binocular fisheye camera for pose estimation and a depth camera to capture the spatial position of the tracked target. The RPEOD system uses a sparse optical flow algorithm to track image corner features, and the local bundle adjustment is restricted in a sliding window. Ulteriorly, we proposed YZNet, a lightweight neural inference structure, and took it as the backbone in YOLOV5 (the state-of-the-art real-time object detector). The RPEOD system can dramatically reduce the computational complexity in reprojection error minimization and the neural network inference process; Thus, it can calculate real-time on the onboard computer carried by the aerial robot. The RPEOD system is evaluated using both simulated and real-world experiments, demonstrating clear advantages over state-of-the-art approaches, and is significantly more fast.

Keywords