Robust Visual Teach and Repeat for UGVs Using 3D Semantic Maps
Mohammad Mahdavian, KangKang Yin, Mo Chen

TL;DR
This paper introduces a robust visual teach and repeat algorithm for ground robots that utilizes 3D semantic maps from environmental objects, improving pose independence and environmental robustness during path repetition.
Contribution
The paper presents a novel VTR method combining ORB-SLAM and YOLOv3 to create semantic maps, enhancing robustness against pose variations and environmental changes.
Findings
Outperforms existing pose-dependent VTR algorithms.
Demonstrates high robustness to environmental alterations.
Effective relocalization using semantic object detection.
Abstract
We propose a Visual Teach and Repeat (VTR) algorithm using semantic landmarks extracted from environmental objects for ground robots with fixed mount monocular cameras. The proposed algorithm is robust to changes in the starting pose of the camera/robot, where a pose is defined as the planar position plus the orientation around the vertical axis. VTR consists of a teach phase in which a robot moves in a prescribed path, and a repeat phase in which the robot tries to repeat the same path starting from the same or a different pose. Most available VTR algorithms are pose dependent and cannot perform well in the repeat phase when starting from an initial pose far from that of the teach phase. To achieve more robust pose independency, the key is to generate a 3D semantic map of the environment containing the camera trajectory and the positions of surrounding objects during the teach phase.…
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Taxonomy
TopicsRobotics and Sensor-Based Localization · Robotic Path Planning Algorithms · Advanced Image and Video Retrieval Techniques
