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Agriculture Application with Airborne Hyperspectral Images from Two-Dimensional Concave Grating System

机译:来自二维凹光栅系统的空中高光谱图像的农业应用

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Hyperspectral imaging spectrometers have been extensively researched in the past a few decades. They can measure electromagnetic energy in their instantaneous field of view in hundreds of wavelengths. With such high spectral resolution less than 10 nanometers, it is possible to distinguish materials of subtle difference in spectrum. Recently, a two-dimensional concave grating hyperspectral spectrometer has been developed under the support of National Space Organization in Taiwan. This airborne system is integrated with two subsystems of visible-near infrared (VNIR) and short-wave infrared (SWIR) bands with 3.5 and 10 nanometers spectral resolution respectively. With the design fly altitude of 2000 meters, the spatial resolution is about 70 cm. In this study, linear and nonlinear classification methods of Fully Constrained Least Squares (FCLS) and Back Propagation Neural Network (BPNN) for agriculture crops are discussed. Based on the ground truth, four crops are selected in the study site, including chives, broccoli, rape and pea. The experimental results indicate the classification accuracy of BPNN can exceed 90% and outperforms classification results of FCLS.
机译:高光谱成像光谱仪在过去几十年中被广泛研究过。它们可以在数百个波长的瞬时视野中测量电磁能量。具有小于10纳米的这种高光谱分辨率,可以区分光谱中的微妙差异的材料。最近,已经在台湾国家空间组织的支持下开发了一种二维凹光栅高光谱仪。该机载系统与具有3.5和10纳米光谱分辨率的可见近红外(VNIR)和短波红外(SWIR)带的两个子系统集成在一起。随着设计飞的海拔2000米,空间分辨率约为70厘米。在本研究中,讨论了农业作物的完全约束最小二乘(FCLS)和后传播神经网络(BPNN)的线性和非线性分类方法。基于地面真理,在研究现场选择了四种作物,包括韭菜,西兰花,强奸和豌豆。实验结果表明,BPNN的分类精度可以超过90%,优异的FCLS分类结果。

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