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Autori principali: Jiménez-Bermejo, Víctor, Godoy, Jorge, Artuñedo, Antonio, Villagra, Jorge
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2407.02192
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author Jiménez-Bermejo, Víctor
Godoy, Jorge
Artuñedo, Antonio
Villagra, Jorge
author_facet Jiménez-Bermejo, Víctor
Godoy, Jorge
Artuñedo, Antonio
Villagra, Jorge
contents Occupancy Grids have been widely used for perception of the environment as they allow to model the obstacles in the scene, as well as free and unknown space. Recently, there has been a growing interest in the unknown space due to the necessity of better understanding the situation. Although Occupancy Grids have received numerous extensions over the years to address emerging needs, currently, few works go beyond the delimitation of the unknown space area and seek to incorporate additional information. This work builds upon the already well-established LiDAR-based Dynamic Occupancy Grid to introduce a complementary Categorized Grid that conveys its estimation using semantic labels while adding new insights into the possible causes of unknown space. The proposed categorization first divides the space by occupancy and then further categorizes the occupied and unknown space. Occupied space is labeled based on its dynamic state and reliability, while the unknown space is labeled according to its possible causes, whether they stem from the perception system's inherent constraints, limitations induced by the environment, or other causes. The proposed Categorized Grid is showcased in real-world scenarios demonstrating its usefulness for better situation understanding.
format Preprint
id arxiv_https___arxiv_org_abs_2407_02192
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Categorized Grid and Unknown Space Causes for LiDAR-based Dynamic Occupancy Grids
Jiménez-Bermejo, Víctor
Godoy, Jorge
Artuñedo, Antonio
Villagra, Jorge
Robotics
Occupancy Grids have been widely used for perception of the environment as they allow to model the obstacles in the scene, as well as free and unknown space. Recently, there has been a growing interest in the unknown space due to the necessity of better understanding the situation. Although Occupancy Grids have received numerous extensions over the years to address emerging needs, currently, few works go beyond the delimitation of the unknown space area and seek to incorporate additional information. This work builds upon the already well-established LiDAR-based Dynamic Occupancy Grid to introduce a complementary Categorized Grid that conveys its estimation using semantic labels while adding new insights into the possible causes of unknown space. The proposed categorization first divides the space by occupancy and then further categorizes the occupied and unknown space. Occupied space is labeled based on its dynamic state and reliability, while the unknown space is labeled according to its possible causes, whether they stem from the perception system's inherent constraints, limitations induced by the environment, or other causes. The proposed Categorized Grid is showcased in real-world scenarios demonstrating its usefulness for better situation understanding.
title Categorized Grid and Unknown Space Causes for LiDAR-based Dynamic Occupancy Grids
topic Robotics
url https://arxiv.org/abs/2407.02192