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Autores principales: Rauniyar, Aditya, Corah, Micah, Scherer, Sebastian
Formato: Preprint
Publicado: 2024
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Acceso en línea:https://arxiv.org/abs/2412.20695
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author Rauniyar, Aditya
Corah, Micah
Scherer, Sebastian
author_facet Rauniyar, Aditya
Corah, Micah
Scherer, Sebastian
contents Motion capture has become increasingly important, not only in computer animation but also in emerging fields like the virtual reality, bioinformatics, and humanoid training. Capturing outdoor environments offers extended horizon scenes but introduces challenges with occlusions and obstacles. Recent approaches using multi-drone systems to capture multiple actor scenes often fail to account for multi-view consistency and reasoning across cameras in cluttered environments. Coordinated motion Capture (CoCap), inspired by Conflict-Based Search (CBS), addresses this issue by coordinating view planning to ensure multi-view reasoning during conflicts. In scenarios with high occlusions and obstacles, where the likelihood of inter-robot collisions increases, CoCap demonstrates performance that approaches the ideal outcomes of unconstrained planning, outperforming existing sequential planning methods. Additionally, CoCap offers a single-robot view search approach for real-time applications in dense environments.
format Preprint
id arxiv_https___arxiv_org_abs_2412_20695
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle CoCap: Coordinated motion Capture for multi-actor scenes in outdoor environments
Rauniyar, Aditya
Corah, Micah
Scherer, Sebastian
Robotics
Motion capture has become increasingly important, not only in computer animation but also in emerging fields like the virtual reality, bioinformatics, and humanoid training. Capturing outdoor environments offers extended horizon scenes but introduces challenges with occlusions and obstacles. Recent approaches using multi-drone systems to capture multiple actor scenes often fail to account for multi-view consistency and reasoning across cameras in cluttered environments. Coordinated motion Capture (CoCap), inspired by Conflict-Based Search (CBS), addresses this issue by coordinating view planning to ensure multi-view reasoning during conflicts. In scenarios with high occlusions and obstacles, where the likelihood of inter-robot collisions increases, CoCap demonstrates performance that approaches the ideal outcomes of unconstrained planning, outperforming existing sequential planning methods. Additionally, CoCap offers a single-robot view search approach for real-time applications in dense environments.
title CoCap: Coordinated motion Capture for multi-actor scenes in outdoor environments
topic Robotics
url https://arxiv.org/abs/2412.20695