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題名 Unordered multiple image matching by using descriptor clustering
作者 Chen, Cheng-Yi;Chio, Shih-Hong
邱式鴻
貢獻者 地政系
關鍵詞 Algorithms; Remote sensing; Space optics; Block adjustment; Cluster; K-means; Multiple image; Robust image matching; SIFT; SIFT algorithms; SIFT descriptors; Image matching
日期 2013-10
上傳時間 26-May-2015 18:07:50 (UTC+8)
摘要 Multiple image matching is an important task in photogrammetry for tie point measurement in block adjustment or generation of point clouds. Numerous algorithms can be found in the literatures. SIFT algorithm, its extracted keypoint descriptor with 128-dimensional vector consisted of the gradient statistics, is developed by Lowe (2004) and becoming a popular method for robust image matching approach by using two images for the decades. When it comes to multiple image matching, the keypoint descriptor is possibly useful. SIFT descriptors of keypoints in all images has been employed to cluster the keypoints to establish the relationship of adjacent images (Chen & Chio, 2013). Therefore, it is possible to use the descriptor clustering for multiple image matching by assuming that keypoint descriptors of the same object point from the different images will be clustered in the descriptor space. In other words, when all keypoint descriptors describe the same object point, the keypoint descriptors will be aggregated in descriptor space within a small region. In this study, adaptive K-means will be used to find all the possible clusters of keypoint descriptors automatically without any initial data. After all clusters are obtained, multiple image matching is also finished. The tests will be performed to prove the proposed idea is able to cluster the descriptors and to perform image matching for keypoints among multiple images successfully.
關聯 34th Asian Conference on Remote Sensing 2013, ACRS 2013, 5, 2013, 4642-4649, 34th Asian Conference on Remote Sensing 2013, ACRS 2013; Bali; Indonesia; 20 October 2013 到 24 October 2013; 代碼 105869
資料類型 conference
dc.contributor 地政系
dc.creator (作者) Chen, Cheng-Yi;Chio, Shih-Hong
dc.creator (作者) 邱式鴻zh_TW
dc.date (日期) 2013-10
dc.date.accessioned 26-May-2015 18:07:50 (UTC+8)-
dc.date.available 26-May-2015 18:07:50 (UTC+8)-
dc.date.issued (上傳時間) 26-May-2015 18:07:50 (UTC+8)-
dc.identifier.uri (URI) http://nccur.lib.nccu.edu.tw/handle/140.119/75314-
dc.description.abstract (摘要) Multiple image matching is an important task in photogrammetry for tie point measurement in block adjustment or generation of point clouds. Numerous algorithms can be found in the literatures. SIFT algorithm, its extracted keypoint descriptor with 128-dimensional vector consisted of the gradient statistics, is developed by Lowe (2004) and becoming a popular method for robust image matching approach by using two images for the decades. When it comes to multiple image matching, the keypoint descriptor is possibly useful. SIFT descriptors of keypoints in all images has been employed to cluster the keypoints to establish the relationship of adjacent images (Chen & Chio, 2013). Therefore, it is possible to use the descriptor clustering for multiple image matching by assuming that keypoint descriptors of the same object point from the different images will be clustered in the descriptor space. In other words, when all keypoint descriptors describe the same object point, the keypoint descriptors will be aggregated in descriptor space within a small region. In this study, adaptive K-means will be used to find all the possible clusters of keypoint descriptors automatically without any initial data. After all clusters are obtained, multiple image matching is also finished. The tests will be performed to prove the proposed idea is able to cluster the descriptors and to perform image matching for keypoints among multiple images successfully.
dc.format.extent 176 bytes-
dc.format.mimetype text/html-
dc.relation (關聯) 34th Asian Conference on Remote Sensing 2013, ACRS 2013, 5, 2013, 4642-4649, 34th Asian Conference on Remote Sensing 2013, ACRS 2013; Bali; Indonesia; 20 October 2013 到 24 October 2013; 代碼 105869
dc.subject (關鍵詞) Algorithms; Remote sensing; Space optics; Block adjustment; Cluster; K-means; Multiple image; Robust image matching; SIFT; SIFT algorithms; SIFT descriptors; Image matching
dc.title (題名) Unordered multiple image matching by using descriptor clustering
dc.type (資料類型) conferenceen