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Autori principali: Park, Jooyong, Lee, Jungwoo, Choi, Euncheol, Cho, Younggun
Natura: Preprint
Pubblicazione: 2024
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Accesso online:https://arxiv.org/abs/2405.11855
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author Park, Jooyong
Lee, Jungwoo
Choi, Euncheol
Cho, Younggun
author_facet Park, Jooyong
Lee, Jungwoo
Choi, Euncheol
Cho, Younggun
contents In urban environments for delivery robots, particularly in areas such as campuses and towns, many custom features defy standard road semantic categorizations. Addressing this challenge, our paper introduces a method leveraging Salient Object Detection (SOD) to extract these unique features, employing them as pivotal factors for enhanced robot loop closure and localization. Traditional geometric feature-based localization is hampered by fluctuating illumination and appearance changes. Our preference for SOD over semantic segmentation sidesteps the intricacies of classifying a myriad of non-standardized urban features. To achieve consistent ground features, the Motion Compensate IPM (MC-IPM) technique is implemented, capitalizing on motion for distortion compensation and subsequently selecting the most pertinent salient ground features through moment computations. For thorough evaluation, we validated the saliency detection and localization performances to the real urban scenarios. Project page: https://sites.google.com/view/salient-ground-feature/home.
format Preprint
id arxiv_https___arxiv_org_abs_2405_11855
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Salience-guided Ground Factor for Robust Localization of Delivery Robots in Complex Urban Environments
Park, Jooyong
Lee, Jungwoo
Choi, Euncheol
Cho, Younggun
Robotics
In urban environments for delivery robots, particularly in areas such as campuses and towns, many custom features defy standard road semantic categorizations. Addressing this challenge, our paper introduces a method leveraging Salient Object Detection (SOD) to extract these unique features, employing them as pivotal factors for enhanced robot loop closure and localization. Traditional geometric feature-based localization is hampered by fluctuating illumination and appearance changes. Our preference for SOD over semantic segmentation sidesteps the intricacies of classifying a myriad of non-standardized urban features. To achieve consistent ground features, the Motion Compensate IPM (MC-IPM) technique is implemented, capitalizing on motion for distortion compensation and subsequently selecting the most pertinent salient ground features through moment computations. For thorough evaluation, we validated the saliency detection and localization performances to the real urban scenarios. Project page: https://sites.google.com/view/salient-ground-feature/home.
title Salience-guided Ground Factor for Robust Localization of Delivery Robots in Complex Urban Environments
topic Robotics
url https://arxiv.org/abs/2405.11855