利用激光诱导光反射和 RGB 成像技术进行非接触式叶片湿度测量

IF 4.4 1区 农林科学 Q1 AGRICULTURAL ENGINEERING Biosystems Engineering Pub Date : 2024-06-04 DOI:10.1016/j.biosystemseng.2024.05.019
Zhangkai Wu , Zhichong Wang , Klaus Spohrer , Steffen Schock , Xiongkui He , Joachim Müller
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引用次数: 0

摘要

叶片湿润度持续时间是植物病害管理中的一个关键因素。目前的光学方法使用标准的 RGB 图像将叶片湿润度分为二元问题,即湿润或干燥。绿叶吸收红光,而水则反射红光。基于这种差异,我们建立了一个实验平台,在使用 RGB 摄像机捕捉红色激光图像的同时,半自动测量葡萄叶片上的水滴沉积情况。该装置测量叶片质量和扫描叶片面积的变化,以确定单位叶片面积的水量,作为叶片湿度的衡量标准。使用喷雾器向叶片喷洒水滴。随着沉积水量的增加,平均红色通道强度降低,图像中出现更多亮点。这些亮点在绿色通道中更容易被区分为水滴。分割的叶片面积、平均红色通道强度和识别出的水滴数量被用作图像特征。利用提取的特征,采用广义加法模型预测叶片湿度值。验证数据集的预测 R 平方值为 0.71。图像分辨率和叶片方向被认为是影响模型准确性的因素。本研究介绍的测量方法显示了准确量化叶片湿润度的潜力,并意味着在实践中可以将叶片湿润度检测整合到多分类问题中,从而拓宽光学方法的潜在应用领域。
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Non-contact leaf wetness measurement with laser-induced light reflection and RGB imaging

Leaf wetness duration is a crucial factor in plant disease management. Current optical methods use standard RGB images to classify leaf wetness as a binary problem, i.e., wet or dry. Green leaves absorb red light, whereas water reflects it. Based on this difference, an experimental platform was built to semi-automatically measure droplet deposition on grape leaves while capturing red laser images using an RGB camera. The setup measured changes in leaf mass and area of scanned leaves to determine the water mass per leaf area as a measure of leaf wetness. A sprayer was used to apply water droplets to the leaves. As the amount of deposited water increased, the mean red channel intensity decreased, with more bright spots in the images. These bright spots were more distinguishable as droplets in the green channel. Segmented leaf area, mean red channel intensity, and the number of identified droplets were used as image features. A generalised additive model was employed to predict the leaf wetness value with extracted features. The R-squared value for the prediction of the validation dataset was 0.71. Image resolution and leaf orientation were identified as factors that influenced the model accuracy. The measurement method introduced in this study shows potential for accurately quantifying leaf wetness, and implies that in practice detecting leaf wetness can be integrated into a multi-classification problem, thereby broadening the potential applications of optical methods.

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来源期刊
Biosystems Engineering
Biosystems Engineering 农林科学-农业工程
CiteScore
10.60
自引率
7.80%
发文量
239
审稿时长
53 days
期刊介绍: Biosystems Engineering publishes research in engineering and the physical sciences that represent advances in understanding or modelling of the performance of biological systems for sustainable developments in land use and the environment, agriculture and amenity, bioproduction processes and the food chain. The subject matter of the journal reflects the wide range and interdisciplinary nature of research in engineering for biological systems.
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