Semantic Segmentation of Satellite Images: A Deep Learning Approach Integrated with Geospatial Hash Codes

Satellite images are always partitioned into regular patches with smaller sizes and then individually fed into deep neural networks (DNNs) for semantic segmentation. The underlying assumption is that these images are independent of one another in terms of geographic spatial information. However, it...

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Main Authors: Naisen Yang, Hong Tang
Format: Article
Language:English
Published: MDPI AG 2021-07-01
Series:Remote Sensing
Subjects:
Online Access:https://www.mdpi.com/2072-4292/13/14/2723
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spelling doaj-e3ea0034ee43417780130e1f6132db4b2021-07-23T14:04:21ZengMDPI AGRemote Sensing2072-42922021-07-01132723272310.3390/rs13142723Semantic Segmentation of Satellite Images: A Deep Learning Approach Integrated with Geospatial Hash CodesNaisen Yang0Hong Tang1State Key Laboratory of Remote Sensing Science, Faculty of Geographical Science, Beijing Normal University, Beijing 100875, ChinaState Key Laboratory of Remote Sensing Science, Faculty of Geographical Science, Beijing Normal University, Beijing 100875, ChinaSatellite images are always partitioned into regular patches with smaller sizes and then individually fed into deep neural networks (DNNs) for semantic segmentation. The underlying assumption is that these images are independent of one another in terms of geographic spatial information. However, it is well known that many land-cover or land-use categories share common regional characteristics within a certain spatial scale. For example, the style of buildings may change from one city or country to another. In this paper, we explore some deep learning approaches integrated with geospatial hash codes to improve the semantic segmentation results of satellite images. Specifically, the geographic coordinates of satellite images are encoded into a string of binary codes using the geohash method. Then, the binary codes of the geographic coordinates are fed into the deep neural network using three different methods in order to enhance the semantic segmentation ability of the deep neural network for satellite images. Experiments on three datasets demonstrate the effectiveness of embedding geographic coordinates into the neural networks. Our method yields a significant improvement over previous methods that do not use geospatial information.https://www.mdpi.com/2072-4292/13/14/2723geographic coordinatesgeohashdeep neural networksgeospatial informationsatellite imagesaerial images
collection DOAJ
language English
format Article
sources DOAJ
author Naisen Yang
Hong Tang
spellingShingle Naisen Yang
Hong Tang
Semantic Segmentation of Satellite Images: A Deep Learning Approach Integrated with Geospatial Hash Codes
Remote Sensing
geographic coordinates
geohash
deep neural networks
geospatial information
satellite images
aerial images
author_facet Naisen Yang
Hong Tang
author_sort Naisen Yang
title Semantic Segmentation of Satellite Images: A Deep Learning Approach Integrated with Geospatial Hash Codes
title_short Semantic Segmentation of Satellite Images: A Deep Learning Approach Integrated with Geospatial Hash Codes
title_full Semantic Segmentation of Satellite Images: A Deep Learning Approach Integrated with Geospatial Hash Codes
title_fullStr Semantic Segmentation of Satellite Images: A Deep Learning Approach Integrated with Geospatial Hash Codes
title_full_unstemmed Semantic Segmentation of Satellite Images: A Deep Learning Approach Integrated with Geospatial Hash Codes
title_sort semantic segmentation of satellite images: a deep learning approach integrated with geospatial hash codes
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2021-07-01
description Satellite images are always partitioned into regular patches with smaller sizes and then individually fed into deep neural networks (DNNs) for semantic segmentation. The underlying assumption is that these images are independent of one another in terms of geographic spatial information. However, it is well known that many land-cover or land-use categories share common regional characteristics within a certain spatial scale. For example, the style of buildings may change from one city or country to another. In this paper, we explore some deep learning approaches integrated with geospatial hash codes to improve the semantic segmentation results of satellite images. Specifically, the geographic coordinates of satellite images are encoded into a string of binary codes using the geohash method. Then, the binary codes of the geographic coordinates are fed into the deep neural network using three different methods in order to enhance the semantic segmentation ability of the deep neural network for satellite images. Experiments on three datasets demonstrate the effectiveness of embedding geographic coordinates into the neural networks. Our method yields a significant improvement over previous methods that do not use geospatial information.
topic geographic coordinates
geohash
deep neural networks
geospatial information
satellite images
aerial images
url https://www.mdpi.com/2072-4292/13/14/2723
work_keys_str_mv AT naisenyang semanticsegmentationofsatelliteimagesadeeplearningapproachintegratedwithgeospatialhashcodes
AT hongtang semanticsegmentationofsatelliteimagesadeeplearningapproachintegratedwithgeospatialhashcodes
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