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Main Authors: Fan, Zexuan, Zhou, Sunchun, Yang, Hengye, Cai, Junyi, Cheng, Ran, Liu, Lige, Sun, Tao
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2412.10706
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author Fan, Zexuan
Zhou, Sunchun
Yang, Hengye
Cai, Junyi
Cheng, Ran
Liu, Lige
Sun, Tao
author_facet Fan, Zexuan
Zhou, Sunchun
Yang, Hengye
Cai, Junyi
Cheng, Ran
Liu, Lige
Sun, Tao
contents This paper introduces a comprehensive planning and navigation framework that address these limitations by integrating semantic mapping, adaptive coverage planning, dynamic obstacle avoidance and precise trajectory tracking. Our framework begins by generating panoptic occupancy local semantic maps and accurate localization information from data aligned between a monocular camera, IMU, and GPS. This information is combined with input terrain point clouds or preloaded terrain information to initialize the planning process. We propose the Radiant Field-Informed Coverage Planning algorithm, which utilizes a diffusion field model to dynamically adjust the robot's coverage trajectory and speed based on environmental attributes such as dirtiness and dryness. By modeling the spatial influence of the robot's actions using a Gaussian field, ensures a speed-optimized, uniform coverage trajectory while adapting to varying environmental conditions.
format Preprint
id arxiv_https___arxiv_org_abs_2412_10706
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle SHIFT Planner: Speedy Hybrid Iterative Field and Segmented Trajectory Optimization with IKD-tree for Uniform Lightweight Coverage
Fan, Zexuan
Zhou, Sunchun
Yang, Hengye
Cai, Junyi
Cheng, Ran
Liu, Lige
Sun, Tao
Robotics
This paper introduces a comprehensive planning and navigation framework that address these limitations by integrating semantic mapping, adaptive coverage planning, dynamic obstacle avoidance and precise trajectory tracking. Our framework begins by generating panoptic occupancy local semantic maps and accurate localization information from data aligned between a monocular camera, IMU, and GPS. This information is combined with input terrain point clouds or preloaded terrain information to initialize the planning process. We propose the Radiant Field-Informed Coverage Planning algorithm, which utilizes a diffusion field model to dynamically adjust the robot's coverage trajectory and speed based on environmental attributes such as dirtiness and dryness. By modeling the spatial influence of the robot's actions using a Gaussian field, ensures a speed-optimized, uniform coverage trajectory while adapting to varying environmental conditions.
title SHIFT Planner: Speedy Hybrid Iterative Field and Segmented Trajectory Optimization with IKD-tree for Uniform Lightweight Coverage
topic Robotics
url https://arxiv.org/abs/2412.10706