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基于SegNet與三維點云聚類的大田楊樹苗葉片分割方法
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國家重點研發(fā)計劃項目(2017YFD0600905-1)和江蘇高校優(yōu)勢學(xué)科建設(shè)工程項目(PAPD)


Single Poplar Leaf Segmentation Method Based on SegNet and 3D Point Cloud Clustering in Field
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    摘要:

    準確分割單個楊樹葉是無接觸提取楊樹苗葉表型參數(shù)的前提,,針對大田楊樹苗的復(fù)雜種植環(huán)境,,本文提出一種基于SegNet與三維點云聚類的大田楊樹苗葉片分割方法,。首先對Kinect V2相機進行標定,對齊RGB與深度數(shù)據(jù),,濾除背景,獲得RGB與深度數(shù)據(jù)融合數(shù)據(jù),;然后針對RGB與深度融合數(shù)據(jù)采用語義分割算法SegNet對楊樹苗葉與楊樹干進行分割,;為了更好地分割出單個楊樹葉,對分割的楊樹葉區(qū)域重構(gòu)出三維點云,,采用基于幾何距離的kd-tree對單個樹葉進行分類,。對采集的單株樹苗與多株樹苗數(shù)據(jù)進行了實驗分析,采用SegNet與FCN分別對楊樹苗葉區(qū)域與莖區(qū)域進行分割,,結(jié)果表明,,SegNet對葉、莖檢測準確率分別為94.4%、97.5%,,交并比分別為75.9%,、67.9%,優(yōu)于FCN,;對葉區(qū)域采用不同距離閾值的kd-tree算法進行單葉分割分析,,確定了適合楊樹葉的分割閾值。實驗結(jié)果表明,,本文提出的分割算法不僅能分割出單株楊樹苗的葉片,,也能分割出多株楊樹苗的單個葉片。

    Abstract:

    Automatic and accurate segmenting a single poplar leaf is very necessary for non-contact extraction of plant leaf phenotype. However, a single leaf segmentation is a challenging task, especially for the complexity of field poplar seedling planting environment. An automatic leaf segmentation method combined SegNet with 3D point cloud clustering was proposed. In the proposed approach, to obtain accurate sample images, the Kinect V2 camera was firstly calibrated. Subsequently, the RGB and depth data were aligned, the background was filtered, and the RGB and deep fusion data of poplar seedling were collected. Then, for RGB and deep fusion data, a large number of samples were labelled and SegNet was utilized to segment poplar seedling leaf and trunk candidate regions. Finally, in order to better segment single poplar leaves, 3D point cloud of leaf regions were reconstructed by using the RGB-D fusion data of poplar leaf regions separated by SegNet, and kd-tree based on geometric distance was introduced to classify single leaves. The performance of the proposed method was verified by various comparative experiments for poplar seedlings in different growth environments. SegNet and FCN were used to segment the leaf region and stem region of poplar seedlings respectively. The results showed that the precision of SegNet for leaf and stem detection were 94.4% and 97.5% respectively, and the intersection over union (IoU) were 75.9% and 67.9% respectively, which was better than that of FCN. In order to find the suitable segmentation threshold for a single poplar leaf segmentation, the comparison experiments of different threshold segmentation using kd-tree for single and multiple poplar seedling leaf areas were performed. The experiment results validated that the proposed method can segment poplar leaves not only for a single poplar seedling, but also for multiple poplar seedlings.

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胡春華,劉炫,計銘杰,李羽江,李萍萍.基于SegNet與三維點云聚類的大田楊樹苗葉片分割方法[J].農(nóng)業(yè)機械學(xué)報,2022,53(6):259-264. HU Chunhua, LIU Xuan, JI Mingjie, LI Yujiang, LI Pingping. Single Poplar Leaf Segmentation Method Based on SegNet and 3D Point Cloud Clustering in Field[J]. Transactions of the Chinese Society for Agricultural Machinery,2022,53(6):259-264.

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  • 收稿日期:2021-06-29
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  • 在線發(fā)布日期: 2021-08-10
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