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首页> 外文期刊>Plant physiology >Recovering Wind-Induced Plant Motion in Dense Field Environments via Deep Learning and Multiple Object Tracking
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Recovering Wind-Induced Plant Motion in Dense Field Environments via Deep Learning and Multiple Object Tracking

机译:通过深度学习和多个对象跟踪在密集的现场环境中恢复风诱导的植物运动

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摘要

Understanding the relationships between local environmental conditions and plant structure and function is critical for both fundamental science and for improving the performance of crops in field settings. Wind-induced plant motion is important in most agricultural systems, yet the complexity of the field environment means that it remained understudied. Despite the ready availability of image sequences showing plant motion, the cultivation of crop plants in dense field stands makes it difficult to detect features and characterize their general movement traits. Here, we present a robust method for characterizing motion in field-grown wheat plants (Triticum aestivum) from time-ordered sequences of red, green, and blue images. A series of crops and augmentations was applied to a dataset of 290 collected and annotated images of ear tips to increase variation and resolution when training a convolutional neural network. This approach enables wheat ears to be detected in the field without the need for camera calibration or a fixed imaging position. Videos of wheat plants moving in the wind were also collected and split into their component frames. Ear tips were detected using the trained network, then tracked between frames using a probabilistic tracking algorithm to approximate movement. These data can be used to characterize key movement traits, such as periodicity, and obtain more detailed static plant properties to assess plant structure and function in the field. Automated data extraction may be possible for informing lodging models, breeding programs, and linking movement properties to canopy light distributions and dynamic light fluctuation.
机译:了解当地环境条件与植物结构与函数之间的关系对于基础科学至关重要,提高现场环境中作物的性能至关重要。风力诱导的植物运动在大多数农业系统中很重要,但场环境的复杂性意味着它仍然被解读。尽管图像序列的准备好可用性显示植物运动,但致密田间的作物植物的培养使得难以检测特征并表征其一般运动特征。在这里,我们提出了一种从红色,绿色和蓝色图像的时间有序序列中表征现场生长的小麦植物(Triticum aestivum)的运动的稳健方法。将一系列作物和增强应用于290个收集和注释的耳提示图像的数据集,以增加卷积神经网络时的变化和分辨率。这种方法使得能够在现场中检测到小麦耳朵,而无需相机校准或固定的成像位置。在风中移动的小麦植物的视频也被收集并分成它们的组成框架。使用培训的网络检测耳尖尖端,然后使用概率跟踪算法在帧之间跟踪到近似运动。这些数据可用于表征键移动特征,例如周期性,并获得更详细的静态工厂属性以评估植物结构和在现场的功能。自动化数据提取可以用于通知汇总模型,繁殖计划和将移动性能连接到冠层光分布和动态光波波动。

著录项

  • 来源
    《Plant physiology》 |2019年第1期|共15页
  • 作者单位

    Univ Nottingham Sch Comp Sci Jubilee Campus Nottingham NG8 1BB England;

    Univ Nottingham Div Plant &

    Crop Sci Sch Biosci Sutton Bonington Campus Loughborough LE12 5RD Leics England;

    Univ Nottingham Sch Comp Sci Jubilee Campus Nottingham NG8 1BB England;

    Univ Nottingham Sch Comp Sci Jubilee Campus Nottingham NG8 1BB England;

    Univ Nottingham Div Plant &

    Crop Sci Sch Biosci Sutton Bonington Campus Loughborough LE12 5RD Leics England;

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  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 植物生理学;
  • 关键词

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