Leaf Segmentation Based on k-Means Algorithm to Obtain Leaf Angle Distribution Using Terrestrial LiDAR
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作者:
Kuo, Kuangting
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Univ Tokyo, Grad Sch Agr & Life Sci, Bunkyo Ku, Yayoi 1-1-1, Tokyo 1138657, JapanUniv Tokyo, Grad Sch Agr & Life Sci, Bunkyo Ku, Yayoi 1-1-1, Tokyo 1138657, Japan
Kuo, Kuangting
[1
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机构:
Itakura, Kenta
[1
,2
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Hosoi, Fumiki
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Univ Tokyo, Grad Sch Agr & Life Sci, Bunkyo Ku, Yayoi 1-1-1, Tokyo 1138657, JapanUniv Tokyo, Grad Sch Agr & Life Sci, Bunkyo Ku, Yayoi 1-1-1, Tokyo 1138657, Japan
Hosoi, Fumiki
[1
]
机构:
[1] Univ Tokyo, Grad Sch Agr & Life Sci, Bunkyo Ku, Yayoi 1-1-1, Tokyo 1138657, Japan
It is critical to take the variability of leaf angle distribution into account in a remote sensing analysis of a canopy system. Due to the physical limitations of field measurements, it is difficult to obtain leaf angles quickly and accurately, especially with a complicated canopy structure. An application of terrestrial LiDAR (Light Detection and Ranging) is a common solution for the purposes of leaf angle estimation, and it allows for the measurement and reconstruction of 3D canopy models with an arbitrary volume of leaves. However, in most cases, the leaf angle is estimated incorrectly due to inaccurate leaf segmentation. Therefore, the objective of this study was an emphasis on the development of efficient segmentation algorithms for accurate leaf angle estimation. Our study demonstrates a leaf segmentation approach based on a k-means algorithm coupled with an octree structure and the subsequent application of plane-fitting to estimate the leaf angle. Furthermore, the accuracy of the segmentation and leaf angle estimation was verified. The results showed average segmentation accuracies of 95% and 90% and absolute angular errors of 3 degrees and 6 degrees in the leaves sampled from mochi and Japanese camellia trees, respectively. It is our conclusion that our method of leaf angle estimation has high potential and is expected to make a significant contribution to future plant and forest research.