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Main Authors: Wang, Zirui, Luo, Xinjia, Sun, Haotian, Ma, Jun, Guo, Jian, Zhou, Boyu
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2605.07275
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author Wang, Zirui
Luo, Xinjia
Sun, Haotian
Ma, Jun
Guo, Jian
Zhou, Boyu
author_facet Wang, Zirui
Luo, Xinjia
Sun, Haotian
Ma, Jun
Guo, Jian
Zhou, Boyu
contents Classic exploration methods often rely on dense occupancy maps or high-resolution point clouds for frontier detection and path planning, resulting in substantial memory consumption and computational overhead. Moreover, micro UAVs under size, weight, and power (SWaP) constraints are not practical to be equipped with sensors like LiDAR to obtain accurate environmental geometric measurements. This paper presents a lightweight autonomous exploration system that leverages omnidirectional vision and sparse topological map guidance. Specifically, we utilize a multi-fisheye camera setup to achieve omnidirectional Field of View (FoV) and perform depth estimation. To address the limited depth estimation accuracy, frontiers are represented as potential unexplored regions characterized by topological nodes instead of explicit boundaries, enabling efficient identification of frontier regions without maintaining occupancy grids or global point clouds. Unlike classic dense representations, our approach abstracts the environment using a sparse topological map composed of key nodes and their descriptors, reducing memory consumption and computational demands. Global path planning is performed directly on the sparse graph. The proposed method is validated in both simulation and on a palm-sized vision-based UAV with an 11 cm wheelbase and a 400 g weight in real-world experiments, demonstrating that our method can achieve efficient exploration with extremely low computational consumption.
format Preprint
id arxiv_https___arxiv_org_abs_2605_07275
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Palm-sized Omnidirectional Vision-Based UAV Exploration with Sparse Topological Map Guidance
Wang, Zirui
Luo, Xinjia
Sun, Haotian
Ma, Jun
Guo, Jian
Zhou, Boyu
Robotics
Classic exploration methods often rely on dense occupancy maps or high-resolution point clouds for frontier detection and path planning, resulting in substantial memory consumption and computational overhead. Moreover, micro UAVs under size, weight, and power (SWaP) constraints are not practical to be equipped with sensors like LiDAR to obtain accurate environmental geometric measurements. This paper presents a lightweight autonomous exploration system that leverages omnidirectional vision and sparse topological map guidance. Specifically, we utilize a multi-fisheye camera setup to achieve omnidirectional Field of View (FoV) and perform depth estimation. To address the limited depth estimation accuracy, frontiers are represented as potential unexplored regions characterized by topological nodes instead of explicit boundaries, enabling efficient identification of frontier regions without maintaining occupancy grids or global point clouds. Unlike classic dense representations, our approach abstracts the environment using a sparse topological map composed of key nodes and their descriptors, reducing memory consumption and computational demands. Global path planning is performed directly on the sparse graph. The proposed method is validated in both simulation and on a palm-sized vision-based UAV with an 11 cm wheelbase and a 400 g weight in real-world experiments, demonstrating that our method can achieve efficient exploration with extremely low computational consumption.
title Palm-sized Omnidirectional Vision-Based UAV Exploration with Sparse Topological Map Guidance
topic Robotics
url https://arxiv.org/abs/2605.07275