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Evaluating the Effect of Different Wheat Rust Disease Symptoms on Vegetation Indices Using Hyperspectral Measurements

机译:使用高光谱测量评估不同小麦锈病症状对植被指数的影响

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Spectral Vegetation Indices (SVIs) have been widely used to indirectly detect plant diseases. The aim of this research is to evaluate the effect of different disease symptoms on SVIs and introduce suitable SVIs to detect rust disease. Wheat leaf rust is one of the prevalent diseases and has different symptoms including yellow, orange, dark brown, and dry areas. The reflectance spectrum data for healthy and infected leaves were collected using a spectroradiometer in the 450 to 1000 nm range. The ratio of the disease-affected area to the total leaf area and the proportion of each disease symptoms were obtained using RGB digital images. As the disease severity increases, so does the scattering of all SVI values. The indices were categorized into three groups based on their accuracies in disease detection. A few SVIs showed an accuracy of more than 60% in classification. In the first group, NBNDVI, NDVI, PRI, GI, and RVSI showed the highest amount of classification accuracy. The second and third groups showed classification accuracies of about 20% and 40% respectively. Results show that few indices have the ability to indirectly detect plant disease.
机译:光谱植被指数(SVI)已广泛用于间接检测植物疾病。这项研究的目的是评估不同疾病症状对SVI的影响,并引入合适的SVI来检测锈病。小麦叶锈病是最普遍的疾病之一,并有不同的症状,包括黄色,橙色,深棕色和干燥区域。使用分光辐射计在450至1000 nm范围内收集健康叶片和感染叶片的反射光谱数据。使用RGB数字图像获得受病害面积与总叶面积的比率以及每种疾病症状的比例。随着疾病严重程度的增加,所有SVI值的散布也随之增加。根据这些指标在疾病检测中的准确性,将其分为三类。一些SVI显示分类的准确性超过60%。在第一组中,NBNDVI,NDVI,PRI,GI和RVSI显示出最高的分类精度。第二和第三组分别显示约20%和40%的分类精度。结果表明,很少有指标能够间接检测植物病害。

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