Exploring semantic relationships for hierarchical land use classification based on convolutional neural networks

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Yang, C.; Rottensteiner, F.; Heipke, C.: Exploring semantic relationships for hierarchical land use classification based on convolutional neural networks. In: Paparoditis, N. et.al. (Eds.): XXIV ISPRS Congress, Commission II : edition 2020. Katlenburg-Lindau : Copernicus Publications, 2020 (ISPRS Annals of the Photogrammetry, Remote Sensing and Spatial Information Sciences ; 5,2), S. 599-607. DOI: https://doi.org/10.5194/isprs-annals-V-2-2020-599-2020

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To cite the version in the repository, please use this identifier: https://doi.org/10.15488/10882

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Sum total of downloads: 92




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Abstract: 
Land use (LU) is an important information source commonly stored in geospatial databases. Most current work on automatic LU classification for updating topographic databases considers only one category level (e.g. <i>residential</i> or <i>agricultural</i>) consisting of a small number of classes. However, LU databases frequently contain very detailed information, using a hierarchical object catalogue where the number of categories differs depending on the hierarchy level. This paper presents a method for the classification of LU on the basis of aerial images that differentiates a fine-grained class structure, exploiting the hierarchical relationship between categories at different levels of the class catalogue. Starting from a convolutional neural network (CNN) for classifying the categories of all levels, we propose a strategy to simultaneously learn the semantic dependencies between different category levels explicitly. The input to the CNN consists of aerial images and derived data as well as land cover information derived from semantic segmentation. Its output is the class scores at three different semantic levels, based on which predictions that are consistent with the class hierarchy are made. We evaluate our method using two test sites and show how the classification accuracy depends on the semantic category level. While at the coarsest level, an overall accuracy in the order of 90% can be achieved, at the finest level, this accuracy is reduced to around 65%. Our experiments also show which classes are particularly hard to differentiate. © 2020 Copernicus GmbH. All rights reserved.
License of this version: CC BY 4.0 Unported
Document Type: BookPart
Publishing status: publishedVersion
Issue Date: 2020
Appears in Collections:Fakultät für Bauingenieurwesen und Geodäsie

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pos. country downloads
total perc.
1 image of flag of United States United States 26 28.26%
2 image of flag of Germany Germany 23 25.00%
3 image of flag of China China 18 19.57%
4 image of flag of Austria Austria 4 4.35%
5 image of flag of Korea, Republic of Korea, Republic of 3 3.26%
6 image of flag of India India 3 3.26%
7 image of flag of Brazil Brazil 3 3.26%
8 image of flag of Indonesia Indonesia 2 2.17%
9 image of flag of Hong Kong Hong Kong 2 2.17%
10 image of flag of Taiwan Taiwan 1 1.09%
    other countries 7 7.61%

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