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Main Authors: Xu, Jiuyi, Chen, Meida, Feng, Andrew, Yu, Zifan, Shi, Yangming
Format: Preprint
Published: 2024
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Online Access:https://arxiv.org/abs/2412.06268
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author Xu, Jiuyi
Chen, Meida
Feng, Andrew
Yu, Zifan
Shi, Yangming
author_facet Xu, Jiuyi
Chen, Meida
Feng, Andrew
Yu, Zifan
Shi, Yangming
contents In the domain of the U.S. Army modeling and simulation, the availability of high quality annotated 3D data is pivotal to creating virtual environments for training and simulations. Traditional methodologies for 3D semantic and instance segmentation, such as KpConv, RandLA, Mask3D, etc., are designed to train on extensive labeled datasets to obtain satisfactory performance in practical tasks. This requirement presents a significant challenge, given the inherent scarcity of manually annotated 3D datasets, particularly for the military use cases. Recognizing this gap, our previous research leverages the One World Terrain data repository manually annotated databases, as showcased at IITSEC 2019 and 2021, to enrich the training dataset for deep learning models. However, collecting and annotating large scale 3D data for specific tasks remains costly and inefficient. To this end, the objective of this research is to design and develop a comprehensive and efficient framework for 3D segmentation tasks to assist in 3D data annotation. This framework integrates Grounding DINO and Segment anything Model, augmented by an enhancement in 2D image rendering via 3D mesh. Furthermore, the authors have also developed a user friendly interface that facilitates the 3D annotation process, offering intuitive visualization of rendered images and the 3D point cloud.
format Preprint
id arxiv_https___arxiv_org_abs_2412_06268
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Open-Vocabulary High-Resolution 3D (OVHR3D) Data Segmentation and Annotation Framework
Xu, Jiuyi
Chen, Meida
Feng, Andrew
Yu, Zifan
Shi, Yangming
Computer Vision and Pattern Recognition
In the domain of the U.S. Army modeling and simulation, the availability of high quality annotated 3D data is pivotal to creating virtual environments for training and simulations. Traditional methodologies for 3D semantic and instance segmentation, such as KpConv, RandLA, Mask3D, etc., are designed to train on extensive labeled datasets to obtain satisfactory performance in practical tasks. This requirement presents a significant challenge, given the inherent scarcity of manually annotated 3D datasets, particularly for the military use cases. Recognizing this gap, our previous research leverages the One World Terrain data repository manually annotated databases, as showcased at IITSEC 2019 and 2021, to enrich the training dataset for deep learning models. However, collecting and annotating large scale 3D data for specific tasks remains costly and inefficient. To this end, the objective of this research is to design and develop a comprehensive and efficient framework for 3D segmentation tasks to assist in 3D data annotation. This framework integrates Grounding DINO and Segment anything Model, augmented by an enhancement in 2D image rendering via 3D mesh. Furthermore, the authors have also developed a user friendly interface that facilitates the 3D annotation process, offering intuitive visualization of rendered images and the 3D point cloud.
title Open-Vocabulary High-Resolution 3D (OVHR3D) Data Segmentation and Annotation Framework
topic Computer Vision and Pattern Recognition
url https://arxiv.org/abs/2412.06268