Accuracy Improvement of Airborne Lidar Strip Adjustment by Using Height Data and Surface Feature Strength Information Derived from the Tensor Voting Algorithm
Light detection and ranging (Lidar) spatial coordinates, especially height data, and the intensity data of point clouds are often used for strip adjustment in airborne Lidar. However, inconsistency in the intensity data and then intensity gradient data because of the variations in the incidence and...
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doaj-2b0c1fa920c348b082eb3321c8dbeec12020-11-25T02:06:04ZengMDPI AGISPRS International Journal of Geo-Information2220-99642020-01-01915010.3390/ijgi9010050ijgi9010050Accuracy Improvement of Airborne Lidar Strip Adjustment by Using Height Data and Surface Feature Strength Information Derived from the Tensor Voting AlgorithmRey-Jer You0Chao-Liang Lee1Department of Geomatics, National Cheng-Kung University, Tainan 70101, TaiwanDepartment of Geomatics, National Cheng-Kung University, Tainan 70101, TaiwanLight detection and ranging (Lidar) spatial coordinates, especially height data, and the intensity data of point clouds are often used for strip adjustment in airborne Lidar. However, inconsistency in the intensity data and then intensity gradient data because of the variations in the incidence and reflection angles in the scanning direction and sunlight incident in the same areas of different strips may cause problems in the Lidar strip adjustment process. Instead of the Lidar intensity, a new type of data, termed surface feature strength data derived by using the tensor voting method, were introduced into the strip adjustment process using the partial least squares method in this study. These data are consistent in the same regions of different strips, especially on the roofs of buildings. Our experimental results indicated a significant improvement in the accuracy of strip adjustment results when both height data and surface feature strength data were used.https://www.mdpi.com/2220-9964/9/1/50lidarstrip adjustmenttensor voting algorithmsurface feature strength |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Rey-Jer You Chao-Liang Lee |
spellingShingle |
Rey-Jer You Chao-Liang Lee Accuracy Improvement of Airborne Lidar Strip Adjustment by Using Height Data and Surface Feature Strength Information Derived from the Tensor Voting Algorithm ISPRS International Journal of Geo-Information lidar strip adjustment tensor voting algorithm surface feature strength |
author_facet |
Rey-Jer You Chao-Liang Lee |
author_sort |
Rey-Jer You |
title |
Accuracy Improvement of Airborne Lidar Strip Adjustment by Using Height Data and Surface Feature Strength Information Derived from the Tensor Voting Algorithm |
title_short |
Accuracy Improvement of Airborne Lidar Strip Adjustment by Using Height Data and Surface Feature Strength Information Derived from the Tensor Voting Algorithm |
title_full |
Accuracy Improvement of Airborne Lidar Strip Adjustment by Using Height Data and Surface Feature Strength Information Derived from the Tensor Voting Algorithm |
title_fullStr |
Accuracy Improvement of Airborne Lidar Strip Adjustment by Using Height Data and Surface Feature Strength Information Derived from the Tensor Voting Algorithm |
title_full_unstemmed |
Accuracy Improvement of Airborne Lidar Strip Adjustment by Using Height Data and Surface Feature Strength Information Derived from the Tensor Voting Algorithm |
title_sort |
accuracy improvement of airborne lidar strip adjustment by using height data and surface feature strength information derived from the tensor voting algorithm |
publisher |
MDPI AG |
series |
ISPRS International Journal of Geo-Information |
issn |
2220-9964 |
publishDate |
2020-01-01 |
description |
Light detection and ranging (Lidar) spatial coordinates, especially height data, and the intensity data of point clouds are often used for strip adjustment in airborne Lidar. However, inconsistency in the intensity data and then intensity gradient data because of the variations in the incidence and reflection angles in the scanning direction and sunlight incident in the same areas of different strips may cause problems in the Lidar strip adjustment process. Instead of the Lidar intensity, a new type of data, termed surface feature strength data derived by using the tensor voting method, were introduced into the strip adjustment process using the partial least squares method in this study. These data are consistent in the same regions of different strips, especially on the roofs of buildings. Our experimental results indicated a significant improvement in the accuracy of strip adjustment results when both height data and surface feature strength data were used. |
topic |
lidar strip adjustment tensor voting algorithm surface feature strength |
url |
https://www.mdpi.com/2220-9964/9/1/50 |
work_keys_str_mv |
AT reyjeryou accuracyimprovementofairbornelidarstripadjustmentbyusingheightdataandsurfacefeaturestrengthinformationderivedfromthetensorvotingalgorithm AT chaolianglee accuracyimprovementofairbornelidarstripadjustmentbyusingheightdataandsurfacefeaturestrengthinformationderivedfromthetensorvotingalgorithm |
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