Data Augmentation for Mask-Based Leaf Segmentation of UAV-Images as a Basis to Extract Leaf-Based Phenotyping Parameters

Abel Barreto, Lasse Reifenrath, Richard Vogg, Fabian Sinz, Anne-Katrin Mahlein
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Abstract

Abstract In crop protection, disease quantification parameters such as disease incidence (DI) and disease severity (DS) are the principal indicators for decision making, aimed at ensuring the safety and productivity of crop yield. The quantification is standardized with leaf organs, defined as individual scoring units. This study focuses on identifying and segmenting individual leaves in agricultural fields using unmanned aerial vehicle (UAV), multispectral imagery of sugar beet fields, and deep instance segmentation networks (Mask R-CNN). Five strategies for achieving network robustness with limited labeled images are tested and compared, employing simple and copy-paste image augmentation techniques. The study also evaluates the impact of environmental conditions on network performance. Metrics of performance show that multispectral UAV images recorded under sunny conditions lead to a performance drop. Focusing on the practical application, we employ Mask R-CNN models in an image-processing pipeline to calculate leaf-based parameters including DS and DI. The pipeline was applied in time-series in an experimental trial with five varieties and two fungicide strategies to illustrate epidemiological development. Disease severity calculated with the model with highest Average Precision (AP) shows the strongest correlation with the same parameter assessed by experts. The time-series development of disease severity and disease incidence demonstrates the advantages of multispectral UAV-imagery in contrasting varieties for resistance, as well as the limits for disease control measurements. This study identifies key components for automatic leaf segmentation of diseased plants using UAV imagery, such as illumination and disease condition. It also provides a tool for delivering leaf-based parameters relevant to optimize crop production through automated disease quantification by imaging tools.
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基于掩模的无人机图像叶片分割数据增强提取叶片表型参数
在作物保护中,病害发生率(DI)和病害严重程度(DS)等病害量化参数是决策的主要指标,目的是保证作物产量的安全性和生产力。用叶器官进行量化标准化,定义为单个评分单位。本研究主要利用无人机(UAV)、甜菜田多光谱图像和深度实例分割网络(Mask R-CNN)对农田单叶进行识别和分割。测试和比较了使用简单和复制粘贴图像增强技术实现有限标记图像网络鲁棒性的五种策略。研究还评估了环境条件对网络性能的影响。性能指标显示,在阳光条件下记录的多光谱无人机图像导致性能下降。着眼于实际应用,我们在一个图像处理流水线中使用Mask R-CNN模型来计算基于叶子的参数,包括DS和DI。该管道在时间序列上应用于5个品种和2种杀真菌策略的试验试验,以说明流行病学发展。用平均精度(AP)最高的模型计算的疾病严重程度与专家评估的相同参数的相关性最强。疾病严重程度和发病率的时间序列发展表明了多光谱无人机图像在对比品种抗性方面的优势,以及疾病控制测量的局限性。本研究确定了利用无人机图像实现病害植物叶片自动分割的关键要素,如光照和病害状况。它还提供了一种工具,通过成像工具的自动化疾病量化,提供与优化作物生产相关的基于叶片的参数。
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