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In this study, a new method to detect model-based individual conifer tree crown and estimate tree height using small footprint Light Detecting And Ranging (LiDAR) raw data is developed. The model-based conifer tree crown has solid geometry form, and can be expressed by a geometric equation which is a function of crown radius, crown height, crown curvature and 3-dimensional tree top position. To estimate crown parameters, LiDAR point clouds which represent tree crown are extracted. Then, tree crown parameters are estimated by hill-climbing method using extracted LiDAR point clouds. Hill-climbing method searches the best fit parameters by changing tree crown parameters iteratively. From the estimated crown parameters, crown region and tree height are estimated. The developed method is applied to a Japanese cedar (Cryptomeria japonica D. Don) plantation. Detected tree crown parameters are reconstructed on 3-dimensional scene. 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However, the underestimation can be seen and RMSE is 7.12m\u003cSUP\u003e2\u003c/SUP\u003e. 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  1. 防災科研関係論文

LiDAR点群データを用いた樹冠形状モデルに基づく単木樹冠形状抽出および樹高推定

https://nied-repo.bosai.go.jp/records/3024
https://nied-repo.bosai.go.jp/records/3024
5916c317-8d9f-4e16-b77f-9f87f1900798
Item type researchmap(1)
公開日 2023-03-30
タイトル
言語 ja
タイトル LiDAR点群データを用いた樹冠形状モデルに基づく単木樹冠形状抽出および樹高推定
タイトル
言語 en
タイトル Detection of model-based Individual Conifer Tree Crown and Estimation of Tree Height Using LiDAR Point Clouds
言語
言語 jpn
著者 田口仁

× 田口仁

ja 田口仁

en TAGUCHI Hitoshi

Search repository
遠藤貴宏

× 遠藤貴宏

ja 遠藤貴宏

en ENDO Takahiro

Search repository
安岡善文

× 安岡善文

ja 安岡善文

en YASUOKA Yoshifumi

Search repository
抄録
内容記述タイプ Other
内容記述 Individual tree crown parameters and tree height are desirable in forest inventory and ecological studies to estimate forest carbon stocks and volume acculately. In this study, a new method to detect model-based individual conifer tree crown and estimate tree height using small footprint Light Detecting And Ranging (LiDAR) raw data is developed. The model-based conifer tree crown has solid geometry form, and can be expressed by a geometric equation which is a function of crown radius, crown height, crown curvature and 3-dimensional tree top position. To estimate crown parameters, LiDAR point clouds which represent tree crown are extracted. Then, tree crown parameters are estimated by hill-climbing method using extracted LiDAR point clouds. Hill-climbing method searches the best fit parameters by changing tree crown parameters iteratively. From the estimated crown parameters, crown region and tree height are estimated. The developed method is applied to a Japanese cedar (Cryptomeria japonica D. Don) plantation. Detected tree crown parameters are reconstructed on 3-dimensional scene. Detected trees are validated with field measurements which are number of detected trees, tree height, position and projected crown area. In total, 83 percent of the field measured trees are correctly detected. However, 17 percent are not detected due to the suppression or proximity. Tree height derived by LiDAR is estimated with root mean square error (RMSE) of 1.37m. Underestimation of tree height is approximately decreased by 1m, because the hill-climbing method estimates 3-dimensional tree top position higher than &ldquo;nearest&rdquo; tree top pulse. Projected crown area derived by LiDAR corresponds with field measurement. However, the underestimation can be seen and RMSE is 7.12m<SUP>2</SUP>. These results show that the developed method is appropriate for detecting tree crown and estimating tree height.
言語 ja
抄録
内容記述タイプ Other
内容記述 Individual tree crown parameters and tree height are desirable in forest inventory and ecological studies to estimate forest carbon stocks and volume acculately. In this study, a new method to detect model-based individual conifer tree crown and estimate tree height using small footprint Light Detecting And Ranging (LiDAR) raw data is developed. The model-based conifer tree crown has solid geometry form, and can be expressed by a geometric equation which is a function of crown radius, crown height, crown curvature and 3-dimensional tree top position. To estimate crown parameters, LiDAR point clouds which represent tree crown are extracted. Then, tree crown parameters are estimated by hill-climbing method using extracted LiDAR point clouds. Hill-climbing method searches the best fit parameters by changing tree crown parameters iteratively. From the estimated crown parameters, crown region and tree height are estimated. The developed method is applied to a Japanese cedar (Cryptomeria japonica D. Don) plantation. Detected tree crown parameters are reconstructed on 3-dimensional scene. Detected trees are validated with field measurements which are number of detected trees, tree height, position and projected crown area. In total, 83 percent of the field measured trees are correctly detected. However, 17 percent are not detected due to the suppression or proximity. Tree height derived by LiDAR is estimated with root mean square error (RMSE) of 1.37m. Underestimation of tree height is approximately decreased by 1m, because the hill-climbing method estimates 3-dimensional tree top position higher than &ldquo;nearest&rdquo; tree top pulse. Projected crown area derived by LiDAR corresponds with field measurement. However, the underestimation can be seen and RMSE is 7.12m<SUP>2</SUP>. These results show that the developed method is appropriate for detecting tree crown and estimating tree height.
言語 en
書誌情報 ja : 日本リモートセンシング学会誌
en : Journal of the Remote Sensing Society of Japan

巻 28, 号 4, p. 331-341, 発行日 2008
出版者
言語 ja
出版者 一般社団法人 日本リモートセンシング学会
出版者
言語 en
出版者 The Remote Sensing Society of Japan
ISSN
収録物識別子タイプ ISSN
収録物識別子 0289-7911
DOI
関連識別子 10.11440/rssj.28.331
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