Generating Topographic Map Data from Classification Results

The use of classification results as topographic map data requires cartographic enhancement and checking of the geometric accuracy. Urban areas are of special interest. The conversion of the classification result into topographic map data of high thematic and geometric quality is subject of this con...

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Main Author: Joachim Höhle
Format: Article
Language:English
Published: MDPI AG 2017-03-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/9/3/224
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spelling doaj-6caec217da344e97bcecfeae52fdbe9d2020-11-25T00:10:49ZengMDPI AGRemote Sensing2072-42922017-03-019322410.3390/rs9030224rs9030224Generating Topographic Map Data from Classification ResultsJoachim Höhle0Department of Development and Planning, Aalborg University, 9000 Aalborg, DenmarkThe use of classification results as topographic map data requires cartographic enhancement and checking of the geometric accuracy. Urban areas are of special interest. The conversion of the classification result into topographic map data of high thematic and geometric quality is subject of this contribution. After reviewing the existing literature on this topic, a methodology is presented. The extraction of point clouds belonging to line segments is solved by the Hough transform. The mathematics for deriving polygons of orthogonal, parallel and general line segments by least squares adjustment is presented. A unique solution for polylines, where the Hough parameters are optimized, is also given. By means of two data sets land cover maps of six classes were produced and then enhanced by the proposed method. The classification used the decision tree method applying a variety of attributes including object heights derived from imagery. The cartographic enhancement is carried out with two different levels of quality. The user’s accuracies for the classes “impervious surface” and “building” were above 85% in the “Level 1” map of Example 1. The geometric accuracy of building corners at the “Level 2” maps is assessed by means of reference data derived from ortho-images. The obtained root mean square errors (RMSE) of the generated coordinates (x, y) were RMSEx = 1.2 m and RMSEy = 0.7 m (Example 1) and RMSEx = 0.8 m and RMSEy = 1.0 m (Example 2) using 31 and 62 check points, respectively. All processing for Level 1 (raster data) could be carried out with a high degree of automation. Level 2 maps (vector data) were compiled for the classes “building” and “road and parking lot”. For urban areas with numerous classes and of large size, universal algorithms are necessary to produce vector data fully automatically. The recent progress in sensors and machine learning methods will support the generation of topographic map data of high thematic and geometric accuracy.http://www.mdpi.com/2072-4292/9/3/224classificationmachine learningcartographic enhancementassessmentaccuracytopographic mapping
collection DOAJ
language English
format Article
sources DOAJ
author Joachim Höhle
spellingShingle Joachim Höhle
Generating Topographic Map Data from Classification Results
Remote Sensing
classification
machine learning
cartographic enhancement
assessment
accuracy
topographic mapping
author_facet Joachim Höhle
author_sort Joachim Höhle
title Generating Topographic Map Data from Classification Results
title_short Generating Topographic Map Data from Classification Results
title_full Generating Topographic Map Data from Classification Results
title_fullStr Generating Topographic Map Data from Classification Results
title_full_unstemmed Generating Topographic Map Data from Classification Results
title_sort generating topographic map data from classification results
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2017-03-01
description The use of classification results as topographic map data requires cartographic enhancement and checking of the geometric accuracy. Urban areas are of special interest. The conversion of the classification result into topographic map data of high thematic and geometric quality is subject of this contribution. After reviewing the existing literature on this topic, a methodology is presented. The extraction of point clouds belonging to line segments is solved by the Hough transform. The mathematics for deriving polygons of orthogonal, parallel and general line segments by least squares adjustment is presented. A unique solution for polylines, where the Hough parameters are optimized, is also given. By means of two data sets land cover maps of six classes were produced and then enhanced by the proposed method. The classification used the decision tree method applying a variety of attributes including object heights derived from imagery. The cartographic enhancement is carried out with two different levels of quality. The user’s accuracies for the classes “impervious surface” and “building” were above 85% in the “Level 1” map of Example 1. The geometric accuracy of building corners at the “Level 2” maps is assessed by means of reference data derived from ortho-images. The obtained root mean square errors (RMSE) of the generated coordinates (x, y) were RMSEx = 1.2 m and RMSEy = 0.7 m (Example 1) and RMSEx = 0.8 m and RMSEy = 1.0 m (Example 2) using 31 and 62 check points, respectively. All processing for Level 1 (raster data) could be carried out with a high degree of automation. Level 2 maps (vector data) were compiled for the classes “building” and “road and parking lot”. For urban areas with numerous classes and of large size, universal algorithms are necessary to produce vector data fully automatically. The recent progress in sensors and machine learning methods will support the generation of topographic map data of high thematic and geometric accuracy.
topic classification
machine learning
cartographic enhancement
assessment
accuracy
topographic mapping
url http://www.mdpi.com/2072-4292/9/3/224
work_keys_str_mv AT joachimhohle generatingtopographicmapdatafromclassificationresults
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