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    基于三维点云和改进PointNet++的大田烟株叶片计数方法

    Field Tobacco Leaf Counting Method Based On 3D Point Clouds and Improved PointNet++

    • 摘要: 烟草植株叶片数是估计烟叶产量的重要表型参数之一。针对传统人工烟株叶片计数困难问题,提出一种结合三维点云和改进PointNet++的大田烟株叶片计数方法。该方法利用无人机倾斜摄影获取大田烟株图片进而生成三维点云,然后利用改进的PointNet++算法实现叶片点云分割,该算法应用KAN网络代替MLP提高算法学习能力,减少训练损失;并提出一种融合DGST网络和DBB多元分支块的DGSTD注意力机制提升准确性;此外,引入Varifocal loss解决各类别点云比例不平衡问题;最后采用MeanShift聚类算法实现叶片点云聚类,对应得到叶片数。结果表明,该算法点云分割的准确率为92.55%,平均交并比为76.33%,较原始模型分别提高2.06、2.81百分点;叶片估测精确率为94.35%,在三维空间内实现了大田烟株叶片计数。

       

      Abstract: The leaf count of tobacco plants is one of the important phenotypic parameters for tobacco leaf yield estimation. To address the challenges of traditional manual tobacco leaf counting, a field tobacco leaf counting method integrating three-dimensional point clouds and improved PointNet + + was proposed. This method employs UAV oblique photography to acquire field tobacco plant images and generate three-dimensional point clouds. An improved PoinNnet ++ algorithm is then utilized to perform leaf point cloud segmentation. The proposed algorithm replaces the MLP with KAN to enhance learning capacity and minimize training loss. A DGSTD attention mechanism is proposed, which integrates DGST network and DBB multi-branch block to enhance accuracy. Additionally, Varifocal loss is incorporated to address the class imbalance in point cloud distribution across categories. Finally, the MeanShift clustering algorithm is employed to cluster the leaf point clouds, from which the leaf count is derived. The results show that the accuracy of point cloud segmentation is 92.55%, and the mean Intersection over Union (mIoU) is 76.33%, representing improvements of 2.06 and 2.81 percentage points over the original model, respectively. The proposed method achieves a leaf counting precision of 94.35%, successfully implementing leaf counting of field tobacco plants in three-dimensional space.

       

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