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Autores principales: Trentin, Vinicius, Medina-Lee, Juan, Artuñedo, Antonio, Villagra, Jorge
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2406.19798
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author Trentin, Vinicius
Medina-Lee, Juan
Artuñedo, Antonio
Villagra, Jorge
author_facet Trentin, Vinicius
Medina-Lee, Juan
Artuñedo, Antonio
Villagra, Jorge
contents Motion prediction is a key factor towards the full deployment of autonomous vehicles. It is fundamental in order to ensure safety while navigating through highly interactive and complex scenarios. Lack of visibility due to an obstructed view or sensor range poses a great safety issue for autonomous vehicles. The inclusion of occlusion in interaction-aware approaches is not very well explored in the literature. In this work, the MultIAMP framework, which produces multimodal probabilistic outputs from the integration of a Dynamic Bayesian Network and Markov chains, is extended to tackle occlusions. The framework is evaluated with a state-of-the-art motion planner in two realistic use cases.
format Preprint
id arxiv_https___arxiv_org_abs_2406_19798
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Integrating occlusion awareness in urban motion prediction for enhanced autonomous vehicle navigation
Trentin, Vinicius
Medina-Lee, Juan
Artuñedo, Antonio
Villagra, Jorge
Robotics
Motion prediction is a key factor towards the full deployment of autonomous vehicles. It is fundamental in order to ensure safety while navigating through highly interactive and complex scenarios. Lack of visibility due to an obstructed view or sensor range poses a great safety issue for autonomous vehicles. The inclusion of occlusion in interaction-aware approaches is not very well explored in the literature. In this work, the MultIAMP framework, which produces multimodal probabilistic outputs from the integration of a Dynamic Bayesian Network and Markov chains, is extended to tackle occlusions. The framework is evaluated with a state-of-the-art motion planner in two realistic use cases.
title Integrating occlusion awareness in urban motion prediction for enhanced autonomous vehicle navigation
topic Robotics
url https://arxiv.org/abs/2406.19798