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Main Authors: Jiang, Xuefeng, Wang, Fangyuan, Zheng, Rongzhang, Liu, Han, Huo, Yixiong, Peng, Jinzhang, Tian, Lu, Barsoum, Emad
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2407.05017
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author Jiang, Xuefeng
Wang, Fangyuan
Zheng, Rongzhang
Liu, Han
Huo, Yixiong
Peng, Jinzhang
Tian, Lu
Barsoum, Emad
author_facet Jiang, Xuefeng
Wang, Fangyuan
Zheng, Rongzhang
Liu, Han
Huo, Yixiong
Peng, Jinzhang
Tian, Lu
Barsoum, Emad
contents Precise localization is of great importance for autonomous parking task since it provides service for the downstream planning and control modules, which significantly affects the system performance. For parking scenarios, dynamic lighting, sparse textures, and the instability of global positioning system (GPS) signals pose challenges for most traditional localization methods. To address these difficulties, we propose VIPS-Odom, a novel semantic visual-inertial odometry framework for underground autonomous parking, which adopts tightly-coupled optimization to fuse measurements from multi-modal sensors and solves odometry. Our VIPS-Odom integrates parking slots detected from the synthesized bird-eye-view (BEV) image with traditional feature points in the frontend, and conducts tightly-coupled optimization with joint constraints introduced by measurements from the inertial measurement unit, wheel speed sensor and parking slots in the backend. We develop a multi-object tracking framework to robustly track parking slots' states. To prove the superiority of our method, we equip an electronic vehicle with related sensors and build an experimental platform based on ROS2 system. Extensive experiments demonstrate the efficacy and advantages of our method compared with other baselines for parking scenarios.
format Preprint
id arxiv_https___arxiv_org_abs_2407_05017
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle VIPS-Odom: Visual-Inertial Odometry Tightly-coupled with Parking Slots for Autonomous Parking
Jiang, Xuefeng
Wang, Fangyuan
Zheng, Rongzhang
Liu, Han
Huo, Yixiong
Peng, Jinzhang
Tian, Lu
Barsoum, Emad
Robotics
Precise localization is of great importance for autonomous parking task since it provides service for the downstream planning and control modules, which significantly affects the system performance. For parking scenarios, dynamic lighting, sparse textures, and the instability of global positioning system (GPS) signals pose challenges for most traditional localization methods. To address these difficulties, we propose VIPS-Odom, a novel semantic visual-inertial odometry framework for underground autonomous parking, which adopts tightly-coupled optimization to fuse measurements from multi-modal sensors and solves odometry. Our VIPS-Odom integrates parking slots detected from the synthesized bird-eye-view (BEV) image with traditional feature points in the frontend, and conducts tightly-coupled optimization with joint constraints introduced by measurements from the inertial measurement unit, wheel speed sensor and parking slots in the backend. We develop a multi-object tracking framework to robustly track parking slots' states. To prove the superiority of our method, we equip an electronic vehicle with related sensors and build an experimental platform based on ROS2 system. Extensive experiments demonstrate the efficacy and advantages of our method compared with other baselines for parking scenarios.
title VIPS-Odom: Visual-Inertial Odometry Tightly-coupled with Parking Slots for Autonomous Parking
topic Robotics
url https://arxiv.org/abs/2407.05017