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A multispectral machine vision system for invertebrate detection on green leaves

机译:绿叶无脊椎动物检测多光谱机视觉系统

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Detection and identification of invertebrate pests in farming fields is a prerequisite necessity for integrated pest management (IPM), however, current sensing technologies do not meet the requirements for IPM. Currently, farmers have to first sample pests and then manually count and identify them, in a way that is time-consuming, labour-intensive and error-prone. Machine vision technology has taken over part of the work in a more efficient and accurate manner. However, current machine vision systems (MVSs) have limitations in detecting pests on crops and the counting and identification are constrained in laboratories or pest traps, resulting in the exact time and locations of pests being unknown, hindering more proper decisions and efficient actions. In this study, we developed a multispectral MVS to detect common invertebrate pests on green leaves in natural environment. First, it was found that, besides visible light and near-infrared, the ultraviolet is a good indicator to distinguish green leaves from other materials. Then for multispectral or hyperspectral data processing, we proposed two models, one named normalised hypercube and another named hyper-hue, which are less affected by uneven illumination and can reflect data distribution, resulting in more accurate classification than the normal method of spectral angle mapper (SAM). Further, the relationship between spectral angle and the relative angle of hyperhue was studied and it was found that usually, data of hyper-hue has larger inter-class distances which could contribute to better classification. At last, to solve the practical problems of image registration and real-time infield applications, instead of registering 2D images, the MVS created and registered 3D point clouds. In an experiment of detecting twelve types of common invertebrate pests on crops, the proposed MVS showed acceptable accuracy.
机译:农业领域中无脊椎动物的检测和鉴定是综合虫害管理(IPM)的先决条件必要性,但是,电流传感技术不符合IPM的要求。目前,农民必须先捕捉虫害,然后手动计算并识别它们,以耗时,劳动密集型和容易出错。机器视觉技术以更高效和准确的方式占据了部分工作。然而,当前机器视觉系统(MVSS)对作物的害虫有局限性,并且计数和识别受到实验室或害虫陷阱的限制,导致害虫的确切时间和位置是未知的,妨碍更适当的决策和有效的行动。在这项研究中,我们开发了一种多光谱MV,以检测天然环境中的绿叶上的常见无脊椎动物。首先,发现除了可见光和近红外,紫外线是一种良好的指示,可以区分绿叶与其他材料。然后,对于多光谱或高光谱数据处理,我们提出了两个模型,一个名为归一化HyperCube和另一个名为Hyper-Hue,这不均匀地受到不均匀的照明,并且可以反映数据分布,导致比谱角映射器的正常方法更准确的分类(山姆)。此外,研究了谱角和超微的相对角度之间的关系,并且发现通常,Hyper-Hue的数据具有更大的阶级距离,这可能有助于更好的分类。最后,解决图像登记和实时Infield应用程序的实际问题,而不是注册2D图像,而是创建的MVS和注册的3D点云。在检测在作物上的12种常见无脊椎动物的实验中,所提出的MVS显示出可接受的精度。

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