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首页> 外文期刊>Computers and Electronics in Agriculture >Learned features of leaf phenotype to monitor maize water status in the fields
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Learned features of leaf phenotype to monitor maize water status in the fields

机译:学习叶片表型以监测玉米水状况的特点

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摘要

Water stress significantly influences normal maize growth. Fast and effective maize water stress detection is of great help to monitor the plant status and provide scientific guidance for crop irrigation. Most of the methods are based on manual measurements of soil water content, or laboratory imaging techniques, such as hyperspectral and thermal images at plant level. With the collection of 656 original maize plant images under natural environment, a novel maize leaf image dataset with different water stress levels (well-watered, reduced-watered and drought-stressed) was constructed. This paper considers maize water status detection as a fine-grained classification problem using local leaf images. Inspired by deep learning, a convolutional neural network (CNN) is applied for the first time to maize water stress recognition. In the designed CNN architecture, feature maps from different convolutional layers are merged. Through visualization and importance analysis of the mull-scale feature maps, several specific feature maps are selected as learned features, which provide a strong discrimination ability. An SVM classifier is finally trained using the feature representation as inputs. Compared with existing techniques, the proposed method achieves the satisfying classification performance with an accuracy of 88.41%. This study also provides a quantitative measure of water stress degree using a regression model. Experimental results demonstrate that the learned features perform better than hand-crafted features to detect water stress and quantify stress severity. The proposed framework can be deployed in practical applications for a non-destructive, near real-time, and automatic monitoring of plant water status in fields.
机译:水胁迫显着影响正常玉米生长。快速有效的玉米水分应激检测有很大帮助监测工厂状态,并为作物灌溉提供科学指导。大多数方法基于对土壤含水量的手动测量,或实验室成像技术,例如植物水平的高光谱和热图像。在自然环境下的656个原始玉米植物图像的收集,构建了一种具有不同水分胁迫水平(浇水,减少和干旱和干旱)的新型玉米叶图像数据集。本文考虑了玉米水状态检测作为使用本地叶片图像的细粒度分类问题。灵感来自深度学习,第一次应用卷积神经网络(CNN)以玉米水分应力识别。在设计的CNN架构中,合并来自不同卷积层的特征映射。通过对Mull级特征映射的可视化和重要性分析,选择了几种特定的特征映射作为学习功能,提供了强烈的辨别能力。最终使用特征表示作为输入训练SVM分类器。与现有技术相比,所提出的方法可实现满足的分类性能,精度为88.41%。该研究还使用回归模型提供了水分胁迫度的定量测量。实验结果表明,学员的特征比手工制作的特征更好地检测水分应激并量化应力严重程度。拟议的框架可以在实际应用中部署在实际应用中,以近乎实时,自动监测田间的植物水状况。

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