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基于SfM的針葉林無人機影像樹冠分割算法
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北京市教委科研計劃項目(KM201710020016)


Coniferous Forest Crown Segmentation Algorithm of UAV Images Based on SfM
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    摘要:

    利用無人機影像進行森林資源調查具有作業(yè)快速便捷、數據分辨率較高,、影像細節(jié)豐富的特點,,可較好地識別單木,獲取樹木位置,、冠幅等信息,。但是,厘米級的影像分辨率使基于光譜信息的傳統分割算法在提取樹冠時出現破碎化現象,,產生過分割結果,。同時,在非落葉季由于無人機影像難以觀測到茂密林冠下層地形,,故在地形起伏較大的林區(qū)難以實現基于樹木冠層高度模型(CHM)的單木分割方法,。針對上述問題,結合傳統二維圖像處理和SfM三維建模,,提出了一種無需高度歸一化的無人機影像樹冠三維分割提取算法,,首先利用SfM技術從高重疊航片建立三維表面模型,利用高程和圖像信息檢測初始樹木位置,,再采取kNN自適應鄰域分水嶺分割的方式對中心單木進行精確的樹冠參數提取,。在北京市百花山國家級自然保護區(qū)的落葉松林地進行了高分辨率無人機影像實驗,采用正射影像目視解譯結果和多種基于圖像,、點云的自動分割算法結果進行驗證和評價,。結果表明,本文方法對樹木總體檢出率在91%以上,冠幅提取精度在81%以上,,優(yōu)于傳統的全局分水嶺方法和其他樹冠分割算法,。

    Abstract:

    Using unmanned aerial vehicle (UAV) images to inventory forest resource is a quick solution to collect high resolution data with rich imagery details. It is capable to recognize individual trees with locations and crown sizes. An intrinsic problem of high spatial resolution UAV images at centimeter levels is that the images are tended to oversegmented. In addition, UAV images captured in plant growing season can hardly observe the ground and objects beneath the canopy top, leading to infeasibility of height normalized canopy height model (CHM) based crown segmentation algorithms in forested areas with large terrain variations. To tackle these problems, a novel UAV image crown extraction approach was proposed, which was free of height normalization. Firstly, a 3D surface model was built from dense images by structure from motion technology. Initial tree locations were identified by combining height information and image contexts. An adaptive kNN neighborhood watershed algorithm was implemented to derive crown coverage of each initial tree locations. UAV images of Larch forests in Baihuashan National Nature Reserve of Beijing were used to conduct the experiment, and it was validated by visual interpretation on orthophotos and compared with a couple of images or point cloud based automatic segmentation algorithms. The results showed that the overall detection rate of individual trees was over 91%. The crown size extraction accuracy was over 81%, which outperformed the original watershed and other crown segmentation methods. It was demonstrated that the proposed method can serve to extract high accuracy tree parameters rapidly at large scales in complex terrain environment.

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楊全月,董澤宇,馬振宇,吳悠,崔琪,盧昊.基于SfM的針葉林無人機影像樹冠分割算法[J].農業(yè)機械學報,2020,51(6):181-190. YANG Quanyue, DONG Zeyu, MA Zhenyu, WU You, CUI Qi, LU Hao. Coniferous Forest Crown Segmentation Algorithm of UAV Images Based on SfM[J]. Transactions of the Chinese Society for Agricultural Machinery,2020,51(6):181-190.

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  • 收稿日期:2019-11-27
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  • 在線發(fā)布日期: 2020-06-10
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