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OmniCity: Omnipotent City Understanding with Multi-level and Multi-view Images

2022-08-01 15:19:25
Weijia Li, Yawen Lai, Linning Xu, Yuanbo Xiangli, Jinhua Yu, Conghui He, Gui-Song Xia, Dahua Lin

Abstract

This paper presents OmniCity, a new dataset for omnipotent city understanding from multi-level and multi-view images. More precisely, the OmniCity contains multi-view satellite images as well as street-level panorama and mono-view images, constituting over 100K pixel-wise annotated images that are well-aligned and collected from 25K geo-locations in New York City. To alleviate the substantial pixel-wise annotation efforts, we propose an efficient street-view image annotation pipeline that leverages the existing label maps of satellite view and the transformation relations between different views (satellite, panorama, and mono-view). With the new OmniCity dataset, we provide benchmarks for a variety of tasks including building footprint extraction, height estimation, and building plane/instance/fine-grained segmentation. We also analyze the impact of view on each task, the performance of different models, limitations of existing methods, etc. Compared with the existing multi-level and multi-view benchmarks, our OmniCity contains a larger number of images with richer annotation types and more views, provides more baseline results obtained from state-of-the-art models, and introduces a novel task for fine-grained building instance segmentation on street-level panorama images. Moreover, OmniCity provides new problem settings for existing tasks, such as cross-view image matching, synthesis, segmentation, detection, etc., and facilitates the developing of new methods for large-scale city understanding, reconstruction, and simulation. The OmniCity dataset as well as the benchmarks will be available at this https URL.

Abstract (translated)

URL

https://arxiv.org/abs/2208.00928

PDF

https://arxiv.org/pdf/2208.00928.pdf


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