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APPLICATION OF THERMAL IMAGING OF WHEAT CROP TO ESTIMATE CANOPY COVERAGE UNDER DIFFERENT MOISTURE STRESS CONDITIONS

机译:小麦作物热成像在不同水分胁迫条件下估算冠层覆盖率的应用

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Thermal imaging cameras determine the temperature of the object by non-contact measurements and give temperature reading for each pixel of the image. This proximal remote sensing technique work with the same principle of spot pyrometers. Thus the thermal image directly gives the temperature of the crop canopy and provides a better distinctibility between the two classes i.e., leaf and soil using image classification techniques. In this study thermal imaging was used to determine the canopy coverage using image classification analysis. As a further application of this technology, an attempt was made to estimate the canopy coverage of the wheat crop grown under different moisture stress conditions. Thermal Images were analyzed with five different supervised image classification techniques namely Maximum likelihood, Mahalanobis, Minimum distance to mean, Parallelepiped and Support Vector Machine methods using ENVI - image analysis software. Results showed that the best estimation of canopy coverage was possible using Support Vector Machine method, due to its higher overall classification accuracy and Kappa coefficient. This is further supported by the statistical analysis based on the comparison with instrument (plant canopy analyser) observed LAI and digital image derived canopy coverage In general Support Vector Machine method estimated the wheat crop canopy coverage from the thermal image meaningfully with high R~2 value of 0.915 and with low values of RMSE and MBE. Thus the present study clearly showed that thermal image analysis could be applied as a non-destructive, rapid, proximal remote sensing technique to characterize the crop canopy temperature and estimate the canopy coverage of the wheat crop grown under moisture stress conditions.
机译:热成像摄像机通过非接触式测量确定物体的温度并为图像的每个像素提供温度读取。这种近端遥感技术采用相同的斑点高温计的原理。因此,热图像直接给出作物冠层的温度,并在使用图像分类技术之间提供两类I.,叶和土壤之间的更好的差异。在该研究中,热成像用于使用图像分类分析来确定顶篷覆盖。作为本技术的进一步应用,试图估计在不同水分胁迫条件下生长的小麦作物的冠层覆盖。用五种不同的监督图像分类技术分析了热图像即最大可能性,Mahalanobis,距离均值,平行六面体和支持向量机方法的最小距离,使用envi - 图像分析软件。结果表明,由于其较高的整体分类精度和kappa系数,因此可以使用支持向量机方法最佳估计顶篷覆盖。通过基于与仪器(植物冠层分析仪)的比较的统计分析进一步支持这一般支持的LAI和数字图像推导的冠层一般支持向量机方法覆盖估计小麦作物覆盖物,从热图像覆盖有意义地具有高R〜2值0.915和RMSE和MBE值低。因此,本研究清楚地表明,热图像分析可以作为非破坏性,快速,近端的遥感技术应用,以表征作物冠层温度并估计在水分胁迫条件下生长的小麦作物的冠层覆盖。

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