Digital Surface Model Interpolation Based on 3D Mesh Models

A digital surface model (DSM) is an important geospatial infrastructure used in various fields. In this paper, we deal with how to improve the quality of DSMs generated from stereo image matching. During stereo image matching, there are outliers due to mismatches, and non-matching regions due to mat...

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Main Authors: Soohyeon Kim, Sooahm Rhee, Taejung Kim
Format: Article
Language:English
Published: MDPI AG 2018-12-01
Series:Remote Sensing
Subjects:
Online Access:http://www.mdpi.com/2072-4292/11/1/24
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spelling doaj-4fcc5e7337e54392a69673e39de867062020-11-25T01:22:04ZengMDPI AGRemote Sensing2072-42922018-12-011112410.3390/rs11010024rs11010024Digital Surface Model Interpolation Based on 3D Mesh ModelsSoohyeon Kim0Sooahm Rhee1Taejung Kim23DLabs Co., Ltd., 22212 Incheon, Korea3DLabs Co., Ltd., 22212 Incheon, KoreaDept. of Geoinformatic Engineering, Inha University, 100 Inharo, Michuhol-gu, 22212 Incheon, KoreaA digital surface model (DSM) is an important geospatial infrastructure used in various fields. In this paper, we deal with how to improve the quality of DSMs generated from stereo image matching. During stereo image matching, there are outliers due to mismatches, and non-matching regions due to match failure. Such outliers and non-matching regions have to be corrected accurately and efficiently for high-quality DSM generation. This process has been performed by applying a local distribution model, such as inverse distance weight (IDW), or by forming a triangulated irregular network (TIN). However, if the area of non-matching regions is large, it is not trivial to interpolate elevation values using neighboring cells. In this study, we proposed a new DSM interpolation method using a 3D mesh model, which is more robust to outliers and large holes. We compared mesh-based DSM with IDW-based DSM and analyzed the characteristics of each. The accuracy of the mesh-based DSM was a 2.80 m root mean square error (RMSE), while that for the IDW-based DSM was 3.22 m. While the mesh-based DSM successfully removed empty grid cells and outliers, the IDW-based DSM had sharper object boundaries. Because of the nature of surface reconstruction, object boundaries appeared smoother on the mesh-based DSM. We further propose a method of integrating the two DSMs. The integrated DSM maintains the sharpness of object boundaries without significant accuracy degradation. The contribution of this paper is the use of 3D mesh models (which have mainly been used for 3D visualization) for efficient removal of outliers and non-matching regions without a priori knowledge of surface types.http://www.mdpi.com/2072-4292/11/1/24digital surface model (DSM)meshsurface reconstructioninterpolation
collection DOAJ
language English
format Article
sources DOAJ
author Soohyeon Kim
Sooahm Rhee
Taejung Kim
spellingShingle Soohyeon Kim
Sooahm Rhee
Taejung Kim
Digital Surface Model Interpolation Based on 3D Mesh Models
Remote Sensing
digital surface model (DSM)
mesh
surface reconstruction
interpolation
author_facet Soohyeon Kim
Sooahm Rhee
Taejung Kim
author_sort Soohyeon Kim
title Digital Surface Model Interpolation Based on 3D Mesh Models
title_short Digital Surface Model Interpolation Based on 3D Mesh Models
title_full Digital Surface Model Interpolation Based on 3D Mesh Models
title_fullStr Digital Surface Model Interpolation Based on 3D Mesh Models
title_full_unstemmed Digital Surface Model Interpolation Based on 3D Mesh Models
title_sort digital surface model interpolation based on 3d mesh models
publisher MDPI AG
series Remote Sensing
issn 2072-4292
publishDate 2018-12-01
description A digital surface model (DSM) is an important geospatial infrastructure used in various fields. In this paper, we deal with how to improve the quality of DSMs generated from stereo image matching. During stereo image matching, there are outliers due to mismatches, and non-matching regions due to match failure. Such outliers and non-matching regions have to be corrected accurately and efficiently for high-quality DSM generation. This process has been performed by applying a local distribution model, such as inverse distance weight (IDW), or by forming a triangulated irregular network (TIN). However, if the area of non-matching regions is large, it is not trivial to interpolate elevation values using neighboring cells. In this study, we proposed a new DSM interpolation method using a 3D mesh model, which is more robust to outliers and large holes. We compared mesh-based DSM with IDW-based DSM and analyzed the characteristics of each. The accuracy of the mesh-based DSM was a 2.80 m root mean square error (RMSE), while that for the IDW-based DSM was 3.22 m. While the mesh-based DSM successfully removed empty grid cells and outliers, the IDW-based DSM had sharper object boundaries. Because of the nature of surface reconstruction, object boundaries appeared smoother on the mesh-based DSM. We further propose a method of integrating the two DSMs. The integrated DSM maintains the sharpness of object boundaries without significant accuracy degradation. The contribution of this paper is the use of 3D mesh models (which have mainly been used for 3D visualization) for efficient removal of outliers and non-matching regions without a priori knowledge of surface types.
topic digital surface model (DSM)
mesh
surface reconstruction
interpolation
url http://www.mdpi.com/2072-4292/11/1/24
work_keys_str_mv AT soohyeonkim digitalsurfacemodelinterpolationbasedon3dmeshmodels
AT sooahmrhee digitalsurfacemodelinterpolationbasedon3dmeshmodels
AT taejungkim digitalsurfacemodelinterpolationbasedon3dmeshmodels
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