ReBound: An Open-Source 3D Bounding Box Annotation Tool for Active
Learning
- URL: http://arxiv.org/abs/2303.06250v1
- Date: Sat, 11 Mar 2023 00:11:30 GMT
- Title: ReBound: An Open-Source 3D Bounding Box Annotation Tool for Active
Learning
- Authors: Wesley Chen, Andrew Edgley, Raunak Hota, Joshua Liu, Ezra Schwartz,
Aminah Yizar, Neehar Peri, James Purtilo
- Abstract summary: ReBound is an open-source 3D visualization and dataset re-annotation tool.
We show that ReBound is effective for exploratory data analysis and can facilitate active-learning.
- Score: 3.1997195262707536
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: In recent years, supervised learning has become the dominant paradigm for
training deep-learning based methods for 3D object detection. Lately, the
academic community has studied 3D object detection in the context of autonomous
vehicles (AVs) using publicly available datasets such as nuScenes and Argoverse
2.0. However, these datasets may have incomplete annotations, often only
labeling a small subset of objects in a scene. Although commercial services
exists for 3D bounding box annotation, these are often prohibitively expensive.
To address these limitations, we propose ReBound, an open-source 3D
visualization and dataset re-annotation tool that works across different
datasets. In this paper, we detail the design of our tool and present survey
results that highlight the usability of our software. Further, we show that
ReBound is effective for exploratory data analysis and can facilitate
active-learning. Our code and documentation is available at
https://github.com/ajedgley/ReBound
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