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Hauptverfasser: Aung, Sithu, Sagong, Min-Cheol, Cho, Junghyun
Format: Preprint
Veröffentlicht: 2024
Schlagworte:
Online-Zugang:https://arxiv.org/abs/2412.13569
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author Aung, Sithu
Sagong, Min-Cheol
Cho, Junghyun
author_facet Aung, Sithu
Sagong, Min-Cheol
Cho, Junghyun
contents We address an advanced challenge of predicting pedestrian occupancy as an extension of multi-view pedestrian detection in urban traffic. To support this, we have created a new synthetic dataset called MVP-Occ, designed for dense pedestrian scenarios in large-scale scenes. Our dataset provides detailed representations of pedestrians using voxel structures, accompanied by rich semantic scene understanding labels, facilitating visual navigation and insights into pedestrian spatial information. Furthermore, we present a robust baseline model, termed OmniOcc, capable of predicting both the voxel occupancy state and panoptic labels for the entire scene from multi-view images. Through in-depth analysis, we identify and evaluate the key elements of our proposed model, highlighting their specific contributions and importance.
format Preprint
id arxiv_https___arxiv_org_abs_2412_13569
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Multi-View Pedestrian Occupancy Prediction with a Novel Synthetic Dataset
Aung, Sithu
Sagong, Min-Cheol
Cho, Junghyun
Computer Vision and Pattern Recognition
We address an advanced challenge of predicting pedestrian occupancy as an extension of multi-view pedestrian detection in urban traffic. To support this, we have created a new synthetic dataset called MVP-Occ, designed for dense pedestrian scenarios in large-scale scenes. Our dataset provides detailed representations of pedestrians using voxel structures, accompanied by rich semantic scene understanding labels, facilitating visual navigation and insights into pedestrian spatial information. Furthermore, we present a robust baseline model, termed OmniOcc, capable of predicting both the voxel occupancy state and panoptic labels for the entire scene from multi-view images. Through in-depth analysis, we identify and evaluate the key elements of our proposed model, highlighting their specific contributions and importance.
title Multi-View Pedestrian Occupancy Prediction with a Novel Synthetic Dataset
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.13569