Shen Jiahui, Zhang Lihong, Yang Laibang, Xu Hao, Chen Sheng, Ji Jingyong, Huang Siqi, Liang Hao, Dong Chen, Lou Xiongwei
College of Mathematics and Computer Science, Zhejiang A & F University, Hangzhou 311300, China.
Key Laboratory of State Forestry and Grassland Administration on Forestry Sensing Technology and Intelligent Equipment, Zhejiang A & F University, Hangzhou 311300, China.
Plants (Basel). 2023 Jun 25;12(13):2444. doi: 10.3390/plants12132444.
Sudden changes in the morphological characteristics of trees are closely related to plant health, and automated phenotypic measurements can help improve the efficiency of plant health monitoring, and thus aid in the conservation of old and valuable tress. The irregular distribution of branches and the influence of the natural environment make it very difficult to monitor the status of branches in the field. In order to solve the problem of branch phenotype monitoring of tall and valuable plants in the field environment, this paper proposes an improved UNet model to achieve accurate extraction of trunk and branches. This paper also proposes an algorithm that can measure the branch length and inclination angle by using the main trunk and branches separated in the previous stage, finding the skeleton line of a single branch via digital image morphological processing and the Zhang-Suen thinning algorithm, obtaining the number of pixel points as the branch length, and then using Euclidean distance to fit a straight line to calculate the inclination angle of each branch. These were carried out in order to monitor the change in branch length and inclination angle and to determine whether plant branch breakage or external stress events had occurred. We evaluated the method on video images of , and the experimental results showed that the present algorithm has more excellent performance at 94.30% MIoU as compared with other target segmentation algorithms. The coefficient of determination (R) is higher than 0.89 for the calculation of the branch length and inclination angle. In summary, the algorithm proposed in this paper can effectively segment the branches of tall plants and measure their length and inclination angle in a field environment, thus providing an effective method to monitor the health of valuable plants.
树木形态特征的突然变化与植物健康密切相关,自动化表型测量有助于提高植物健康监测的效率,从而有助于保护古老而珍贵的树木。树枝的不规则分布以及自然环境的影响使得在野外监测树枝的状态非常困难。为了解决野外环境中高大珍贵植物的树枝表型监测问题,本文提出了一种改进的UNet模型,以实现对树干和树枝的准确提取。本文还提出了一种算法,该算法可以利用上一阶段分离出的主干和树枝来测量树枝长度和倾斜角度,通过数字图像形态处理和Zhang-Suen细化算法找到单个树枝的骨架线,获取像素点数作为树枝长度,然后使用欧几里得距离拟合直线来计算每个树枝的倾斜角度。这样做是为了监测树枝长度和倾斜角度的变化,并确定是否发生了植物树枝折断或外部应力事件。我们在……的视频图像上对该方法进行了评估,实验结果表明,与其他目标分割算法相比,本算法在平均交并比为94.30%时具有更优异的性能。计算树枝长度和倾斜角度的决定系数(R)高于0.89。综上所述,本文提出的算法能够在野外环境中有效地分割高大植物的树枝并测量其长度和倾斜角度,从而为监测珍贵植物的健康状况提供了一种有效的方法。