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基于YOLOv4和雙重回歸的復雜環(huán)境檀香樹缺苗定位方法
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廣東省企業(yè)科技特派員項目(GDKTP20210557700)


Missing Seedling Localization Method for Sandalwood Trees in Complex Environment Based on YOLOv4 and Double Regression Strategy
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    摘要:

    在檀香樹大面積種植過程中,存在人工排查缺苗效率低,、成本高和難以監(jiān)管等問題,,而且檀香樹必備的伴生植物和樹間穿插的其它作物,更加大了查補難度,。針對這些問題,,本文提出一種基于YOLOv4和雙重回歸的復雜環(huán)境檀香樹缺苗檢測和精準定位方法。首先,,采用YOLOv4目標檢測算法,,處理無人機采集的遙感圖像,實現(xiàn)檀香樹植株的智能檢測,。然后,,以雙重線性回歸結(jié)合延長列線補漏策略為核心,構建缺苗定位算法(Missing seedling localization algorithm,,MSL):選任意檀香樹作基準,,根據(jù)像素坐標劃分列區(qū)域,對各列區(qū)域中檀香樹用線性回歸擬合列線,;對擬合后仍未歸入列的遺漏檀香樹,,用延長回歸線策略重新判斷歸屬,并再次線性回歸優(yōu)化列線,。最后,,根據(jù)種植間距規(guī)劃,實現(xiàn)缺苗檢測和定位,。試驗結(jié)果表明,,檀香樹缺苗檢測精確率86.82%、召回率82.25%,、F1值84.47%,、運行時間8.19s。該方法融合了大疆無人機遙感圖像采集系統(tǒng)的快速性,、YOLOv4算法和雙重回歸策略的精準性,,可實現(xiàn)對復雜生長狀況下檀香樹的實時智能缺苗檢測和精準定位,。

    Abstract:

    In the process of planting sandalwood trees on a large scale, there are problems such as low efficiency, high cost, and difficulty in the supervision of manual ranking of missing seedlings, and the necessary companion plants for each sandalwood tree and other crops interspersed between the trees, further deepening the difficulty of checking and replenishing. For these problems, a seedling deficiency detection and precise localization method in complex environment was proposed based on YOLOv4 algorithm and double regression strategy. Firstly, the YOLOv4 target detection model was used to achieve sandalwood plant detection from remote sensing images collected by UAV. Then the missing seedling localization algorithm (MSL) was constructed based on the double linear regression and extended column line fixing strategy: arbitrary sandalwood trees were selected as the benchmark, column regions were divided according to the pixel coordinates, and column lines were fitted to the sandalwood trees in each column region by using linear regression;for the omitted sandalwood trees that were not classified into columns after fitting, the attribution was judged again with the extended regression line strategy, and the column lines were optimized by linear regression again. Finally, the missing seedlings were calculated and localized according to the spacing at the time of planting. The results showed that the precision was 86.82%, the recall was 82.25%, the F1-score was 84.47%, and the running time was 8.19s, respectively. In summary, this method combined the rapidity of DJI UAV remote sensing image acquisition system, the accuracy of YOLOv4 algorithm and double regression strategy, which can be used to achieve realtime intelligent seedling deficiency detection and accurate localization of sandalwood trees under complex growth conditions.

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張宇,徐浩然,牛家俊,涂淑琴,趙文鋒.基于YOLOv4和雙重回歸的復雜環(huán)境檀香樹缺苗定位方法[J].農(nóng)業(yè)機械學報,2022,53(11):299-305,,340. ZHANG Yu, XU Haoran, NIU Jiajun, TU Shuqin, ZHAO Wenfeng. Missing Seedling Localization Method for Sandalwood Trees in Complex Environment Based on YOLOv4 and Double Regression Strategy[J]. Transactions of the Chinese Society for Agricultural Machinery,2022,53(11):299-305,,340.

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  • 收稿日期:2022-08-06
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  • 在線發(fā)布日期: 2022-11-10
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