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題名 Point cloud data enhancement by matching multispectral images
作者 Liao, Chen-Ting;Huang, Hao Hsiung
廖振廷;黃灝雄
貢獻者 地政學系
關鍵詞 Affine coordinate transformation; Close range photogrammetry; Color information; LIDAR data; Multi-spectral; Multi-spectral data; Multispectral images; Near Infrared; On-line service; Point cloud; Point cloud data; Positioning precision; Remote sensing images; Single band; Three dimensional coordinate; Visible image; Visible light; Visible light and near infrared images; Visible light images; Image matching; Image reconstruction; Infrared devices; Infrared imaging; Optical radar; Photogrammetry; Remote sensing; Color matching
日期 2011
上傳時間 8-十月-2015 17:36:35 (UTC+8)
摘要 Generally, remote sensing images were two-dimensional multispectral data. The images can be classified more efficiently and precisely via ground features with different characteristics differ in spectrum. As processing in LIDAR technology, point cloud data with three-dimensional coordinates contain rich information. LIDAR usually acquires data using only single band, and lacks of multispectral information such as multispectral images. Therefore, this research acquires visible light and near infrared images, via close-range photogrammetry method, then, matching images automatically by free online services to generate visible light and near infrared point clouds with three-dimensional coordinates and color information. At last, one can use three-dimensional affine coordinate transformation to combine different sources of point clouds, and compare the results with LIDAR data, as an assessment for positioning precision. The experiment shows, image matching by near infrared images, point cloud data can increase 27%, much more than only using visible images; image matching by color infrared composition (NIR+R+G), point cloud data can increase 21%, much more than only using visible light images. As the results shows, multispectral point cloud data are helpful to enhance point clouds data.
關聯 32nd Asian Conference on Remote Sensing 2011, ACRS 2011
資料類型 conference
dc.contributor 地政學系
dc.creator (作者) Liao, Chen-Ting;Huang, Hao Hsiung
dc.creator (作者) 廖振廷;黃灝雄zh_TW
dc.date (日期) 2011
dc.date.accessioned 8-十月-2015 17:36:35 (UTC+8)-
dc.date.available 8-十月-2015 17:36:35 (UTC+8)-
dc.date.issued (上傳時間) 8-十月-2015 17:36:35 (UTC+8)-
dc.identifier.uri (URI) http://nccur.lib.nccu.edu.tw/handle/140.119/78887-
dc.description.abstract (摘要) Generally, remote sensing images were two-dimensional multispectral data. The images can be classified more efficiently and precisely via ground features with different characteristics differ in spectrum. As processing in LIDAR technology, point cloud data with three-dimensional coordinates contain rich information. LIDAR usually acquires data using only single band, and lacks of multispectral information such as multispectral images. Therefore, this research acquires visible light and near infrared images, via close-range photogrammetry method, then, matching images automatically by free online services to generate visible light and near infrared point clouds with three-dimensional coordinates and color information. At last, one can use three-dimensional affine coordinate transformation to combine different sources of point clouds, and compare the results with LIDAR data, as an assessment for positioning precision. The experiment shows, image matching by near infrared images, point cloud data can increase 27%, much more than only using visible images; image matching by color infrared composition (NIR+R+G), point cloud data can increase 21%, much more than only using visible light images. As the results shows, multispectral point cloud data are helpful to enhance point clouds data.
dc.format.extent 176 bytes-
dc.format.mimetype text/html-
dc.relation (關聯) 32nd Asian Conference on Remote Sensing 2011, ACRS 2011
dc.subject (關鍵詞) Affine coordinate transformation; Close range photogrammetry; Color information; LIDAR data; Multi-spectral; Multi-spectral data; Multispectral images; Near Infrared; On-line service; Point cloud; Point cloud data; Positioning precision; Remote sensing images; Single band; Three dimensional coordinate; Visible image; Visible light; Visible light and near infrared images; Visible light images; Image matching; Image reconstruction; Infrared devices; Infrared imaging; Optical radar; Photogrammetry; Remote sensing; Color matching
dc.title (題名) Point cloud data enhancement by matching multispectral images
dc.type (資料類型) conferenceen