Sweet Pepper Leaf Area Estimation Using Semantic 3D Point Clouds Based on Semantic Segmentation Neural Network

Truong Thi Huong Giang, Young-Jae Ryoo
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Abstract

In the field of agriculture, measuring the leaf area is crucial for the management of crops. Various techniques exist for this measurement, ranging from direct to indirect approaches and destructive to non-destructive techniques. The non-destructive approach is favored because it preserves the plant’s integrity. Among these, several methods utilize leaf dimensions, such as width and length, to estimate leaf areas based on specific models that consider the unique shapes of leaves. Although this approach does not damage plants, it is labor-intensive, requiring manual measurements of leaf dimensions. In contrast, some indirect non-destructive techniques leveraging convolutional neural networks can predict leaf areas more swiftly and autonomously. In this paper, we propose a new direct method using 3D point clouds constructed by semantic RGB-D (Red Green Blue and Depth) images generated by a semantic segmentation neural network and RGB-D images. The key idea is that the leaf area is quantified by the count of points depicting the leaves. This method demonstrates high accuracy, with an R2 value of 0.98 and a RMSE (Root Mean Square Error) value of 3.05 cm2. Here, the neural network’s role is to segregate leaves from other plant parts to accurately measure the leaf area represented by the point clouds, rather than predicting the total leaf area of the plant. This method is direct, precise, and non-invasive to sweet pepper plants, offering easy leaf area calculation. It can be implemented on laptops for manual use or integrated into robots for automated periodic leaf area assessments. This innovative method holds promise for advancing our understanding of plant responses to environmental changes. We verified the method’s reliability and superior performance through experiments on individual leaves and whole plants.
利用基于语义分割神经网络的语义三维点云估算甜椒叶片面积
在农业领域,测量叶面积对作物管理至关重要。测量叶面积的技术多种多样,有直接测量法,也有间接测量法;有破坏性测量法,也有非破坏性测量法。非破坏性方法更受青睐,因为它能保持植物的完整性。其中,有几种方法利用叶片的宽度和长度等尺寸,根据考虑到叶片独特形状的特定模型来估算叶片面积。虽然这种方法不会损坏植物,但需要人工测量叶片尺寸,是一种劳动密集型方法。相比之下,一些利用卷积神经网络的间接非破坏性技术可以更迅速、更自主地预测叶片面积。在本文中,我们提出了一种新的直接方法,利用由语义分割神经网络和 RGB-D 图像生成的语义 RGB-D(红绿蓝和深度)图像构建的三维点云。其主要思想是通过描绘叶子的点的数量来量化叶子的面积。这种方法具有很高的准确性,R2 值为 0.98,RMSE(均方根误差)值为 3.05 平方厘米。在这里,神经网络的作用是将叶片从植物的其他部分中分离出来,从而准确测量点云所代表的叶片面积,而不是预测植物的总叶片面积。这种方法直接、精确,对甜椒植物无损伤,便于计算叶面积。它既可以在笔记本电脑上实现手动使用,也可以集成到机器人中实现自动定期叶面积评估。这种创新方法有望促进我们对植物对环境变化的反应的了解。我们通过对单个叶片和整株植物的实验验证了该方法的可靠性和卓越性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
4.70
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