论文标题

使用RGB图像检测叶焦油斑点

Leaf Tar Spot Detection Using RGB Images

论文作者

Baireddy, Sriram, Lee, Da-Young, Gongora-Canul, Carlos, Cruz, Christian D., Delp, Edward J.

论文摘要

焦油点病是一种真菌疾病,是一系列黑色圆形斑点,这些斑点含有玉米叶上的孢子。就降低农作物产量而言,焦油点已被证明是一种影响力的疾病。为了量化疾病进展,专家通常必须在植物上视觉表型叶片。这个过程非常耗时,很难在任何高通量表型系统中纳入。深度神经网络可以通过足够的地面真相提供快速,自动化的焦油点检测。但是,手动将图像中的焦油点标记为地面真理也很乏味且耗时。在本文中,我们首先描述了一种使用自动图像分析工具来生成地面真相图像的方法,然后将其用于训练蒙版R-CNN。我们表明,可以有效地使用蒙版R-CNN检测叶片表面特写图像中的焦油斑点。我们还表明,面膜R-CNN也可用于整个叶子的场地图像,以捕获疾病感染的叶片斑点和叶片区域。

Tar spot disease is a fungal disease that appears as a series of black circular spots containing spores on corn leaves. Tar spot has proven to be an impactful disease in terms of reducing crop yield. To quantify disease progression, experts usually have to visually phenotype leaves from the plant. This process is very time-consuming and is difficult to incorporate in any high-throughput phenotyping system. Deep neural networks could provide quick, automated tar spot detection with sufficient ground truth. However, manually labeling tar spots in images to serve as ground truth is also tedious and time-consuming. In this paper we first describe an approach that uses automated image analysis tools to generate ground truth images that are then used for training a Mask R-CNN. We show that a Mask R-CNN can be used effectively to detect tar spots in close-up images of leaf surfaces. We additionally show that the Mask R-CNN can also be used for in-field images of whole leaves to capture the number of tar spots and area of the leaf infected by the disease.

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