Automated Extraction of Control Points for High Spatial Resolution Satellite Images
碩士 === 國立中央大學 === 土木工程研究所 === 89 === The high spatial resolution satellite images have widely attracted the attention in the remote sensing community recently. It is obvious that one of the great challenges to process the high spatial resolution satellite images will be the geometric correction pra...
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ndltd-TW-089NCU000150402016-01-29T04:28:16Z http://ndltd.ncl.edu.tw/handle/06654570292997150894 Automated Extraction of Control Points for High Spatial Resolution Satellite Images 高解析力衛星影像控制點座標之自動化萃取 Cheng-Yi LIN 林乘逸 碩士 國立中央大學 土木工程研究所 89 The high spatial resolution satellite images have widely attracted the attention in the remote sensing community recently. It is obvious that one of the great challenges to process the high spatial resolution satellite images will be the geometric correction practice. Conventionally, the positioning of the image control points is manually performed by a labor-intensive and time-consuming procedure. The practicable experience indicates that the qualified image control points would be the points with striking features such as the road intersection. Thus, due to the abundant image contents, high spatial resolution satellite image would have plenty of the qualified control points. As a result, the manual identification and positioning of control points will become even more inefficient and unbearable. Therefore, the main objective of this study aims to develop an automated image processing technique to extract the control points for the high spatial resolution satellite images. Among numerous spatial features, this study considers road intersection the main target to perform the control point extraction. The proposed image-processing algorithm consists of three steps. The first step is designed to segment the image and produce the feature image. The second step is proposed to extract roadblock features from the feature image. The third step is planned to locate the center position of the roadblock. A series of high spatial resolution satellite images are used to test the proposed method. The preliminary results shows that the proposed image processing approach has the potential to automatically position the control points in the high spatial resolution satellite image. Chi-Farn CHEN 陳繼藩 2001 學位論文 ; thesis 105 zh-TW |
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碩士 === 國立中央大學 === 土木工程研究所 === 89 === The high spatial resolution satellite images have widely attracted the attention in the remote sensing community recently. It is obvious that one of the great challenges to process the high spatial resolution satellite images will be the geometric correction practice. Conventionally, the positioning of the image control points is manually performed by a labor-intensive and time-consuming procedure. The practicable experience indicates that the qualified image control points would be the points with striking features such as the road intersection. Thus, due to the abundant image contents, high spatial resolution satellite image would have plenty of the qualified control points. As a result, the manual identification and positioning of control points will become even more inefficient and unbearable. Therefore, the main objective of this study aims to develop an automated image processing technique to extract the control points for the high spatial resolution satellite images. Among numerous spatial features, this study considers road intersection the main target to perform the control point extraction. The proposed image-processing algorithm consists of three steps. The first step is designed to segment the image and produce the feature image. The second step is proposed to extract roadblock features from the feature image. The third step is planned to locate the center position of the roadblock. A series of high spatial resolution satellite images are used to test the proposed method. The preliminary results shows that the proposed image processing approach has the potential to automatically position the control points in the high spatial resolution satellite image.
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author2 |
Chi-Farn CHEN |
author_facet |
Chi-Farn CHEN Cheng-Yi LIN 林乘逸 |
author |
Cheng-Yi LIN 林乘逸 |
spellingShingle |
Cheng-Yi LIN 林乘逸 Automated Extraction of Control Points for High Spatial Resolution Satellite Images |
author_sort |
Cheng-Yi LIN |
title |
Automated Extraction of Control Points for High Spatial Resolution Satellite Images |
title_short |
Automated Extraction of Control Points for High Spatial Resolution Satellite Images |
title_full |
Automated Extraction of Control Points for High Spatial Resolution Satellite Images |
title_fullStr |
Automated Extraction of Control Points for High Spatial Resolution Satellite Images |
title_full_unstemmed |
Automated Extraction of Control Points for High Spatial Resolution Satellite Images |
title_sort |
automated extraction of control points for high spatial resolution satellite images |
publishDate |
2001 |
url |
http://ndltd.ncl.edu.tw/handle/06654570292997150894 |
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