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  5. Explicit Incorporation of Spatial Autocorrelation in 3D Deep Learning for Geospatial Object Detection

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Article
English
2024

Explicit Incorporation of Spatial Autocorrelation in 3D Deep Learning for Geospatial Object Detection

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English
2024
Annals of the American Association of Geographers
Vol 114 (10)
DOI: 10.1080/24694452.2024.2380898

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Shenen Chen
Shenen Chen

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Tianyang Chen
Wenwu Tang
Craig Allan
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Abstract

Three-dimensional (3D) geospatial object detection has become essential for 3D geospatial studies driven by explosive growth in 3D data. It is extremely labor- and cost-intensive, though, as it often requires manual detection. Deep learning has been recently used to automate object detection within 3D context. Yet, addressing spatial dependency in 3D data and how it might inform deep learning for 3D geospatial object detection remains a significant challenge. Traditional models focus on the use of spatial properties, often overlooking color and contextual information. Exploiting these nonspatial attributes for 3D geospatial object detection thus becomes crucial. Our study pioneers explicit incorporation of spatial autocorrelation of color information into 3D deep learning for object detection. We introduce an innovative framework to estimate spatial autocorrelation, addressing challenges in unstructured 3D data sets. Our experiments suggest the effectiveness of incorporating spatial autocorrelation features in enhancing the accuracy of 3D deep learning models for geospatial object detection. We further investigate the uncertainty of such contextual information brought by diverse configurations, exemplified by the number of nearest neighbors. This study advances 3D geospatial object detection via using spatial autocorrelation to inform deep learning algorithms, strengthening the connection between GIScience and artificial intelligence and, thus, holding implications for diverse GeoAI applications.

How to cite this publication

Tianyang Chen, Wenwu Tang, Craig Allan, Shenen Chen (2024). Explicit Incorporation of Spatial Autocorrelation in 3D Deep Learning for Geospatial Object Detection. Annals of the American Association of Geographers, 114(10), pp. 2297-2316, DOI: 10.1080/24694452.2024.2380898.

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Publication Details

Type

Article

Year

2024

Authors

4

Datasets

0

Total Files

0

Language

English

Journal

Annals of the American Association of Geographers

DOI

10.1080/24694452.2024.2380898

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