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Detection of head blight (Fusarium ssp.) in winter wheat by color and multispectral image analyses

机译:通过彩色和多光谱图像分析检测冬小麦的头部枯萎病(Fusarium ssp。)

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The use of camera vision to automatically detect head blight (scab) on wheat ears could provide information about the severity of this dangerous disease and help meet future food traceability requirements. Fusarium spp. is dangerous for both human and animal consumption and the ability to monitor symptom location and severity before the harvested product is further processed or stored could help determine whether the grain is fit for human/animal consumption, for bio-conservation, or is completely unusable.To generate various infection levels, field trials were conducted in 2008 and 2009 using wheat varieties with differing levels of susceptibility to the disease; plots were artificially infected with a spore suspension. A color (red, green, and blue) and a multispectral (red, infrared) camera system with real-time image analysis software were developed and compared to detect disease symptoms in the plots.The chlorophyll defect of the infected wheat ears was classified against the image background by setting binarization thresholds. The result was a black and white image. Single pixels or tiny clusters of pixels not belonging to the symptoms were eliminated by setting an area threshold. For both systems, a linear correlation was found between the camera and the visually detected disease levels of the wheat ears in the plots.In the non-infected control plots without disease symptoms, the multispectral system accurately measured "no disease" even though the digital color system detected too much infection (i.e., a false positive). The multispectral system showed a superior calibration capacity. While the color system had to calibrate for each variety, the multispectral system used only one calibration step before starting the measurements.
机译:使用摄像头视觉自动检测麦穗上的枯萎病可以提供有关这种危险疾病严重程度的信息,并有助于满足未来的食品可追溯性要求。镰刀菌属这对人类和动物食用都是危险的,并且在进一步加工或存储所收获产品之前监视症状位置和严重程度的能力可以帮助确定谷物是否适合人类/动物食用,生物保护或完全不可用。为了产生不同的感染水平,2008年和2009年使用对疾病易感性不同的小麦品种进行了田间试验。用孢子悬浮液人工感染地块。开发了具有实时图像分析软件的彩色(红色,绿色和蓝色)和多光谱(红色,红外)摄像系统,并比较了该图中的病害症状。将感染小麦穗的叶绿素缺陷分类为通过设置二值化阈值来设置图像背景。结果是黑白图像。通过设置区域阈值,可以消除不属于症状的单个像素或微小像素簇。对于这两个系统,都在摄像机与视觉上检测到的麦穗病害水平之间发现了线性相关。在没有疾病症状的未感染对照样田中,即使数字颜色系统检测到过多的感染(即假阳性)。多光谱系统显示出卓越的校准能力。虽然颜色系统必须针对每个品种进行校准,但多光谱系统在开始测量之前仅使用了一个校准步骤。

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