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Development of an agricultural crops spectral library and classification of crops at cultivar level using hyperspectral data.

机译:使用高光谱数据开发农作物光谱库,并在栽培品种级别对农作物进行分类。

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In the context of a growing interest in remote sensing for precision agriculture applications, the utility of space-borne hyperspectral imaging for the development of a crop-specific spectral library and automatic identification and classification of three cultivars for each of rice (Oryza sativa L.), chilli (Capsicum annuum L.), sugarcane (Saccharum officinarum L.) and cotton (Gossipium hirsutum L.) crops have been investigated in this study. The classification of crops at cultivar level using two spectral libraries developed using hyperspectral reflectance data at canopy scale (in-situ hyperspectral measurements) and at pixel scale (Hyperion data) has shown promising results with 86.5 and 88.8% overall classification accuracy, respectively. This observation highlights the possible integration of in-situ hyperspectral measurements with space-borne hyperspectral remote sensing data for automatic identification and discrimination of various crop cultivars. However, considerable spectral similarity is observed between cultivars of rice and sugarcane crops which may pose problems in the accurate identification of various crop cultivars.
机译:在对精密农业应用遥感的兴趣日益浓厚的背景下,星载高光谱成像技术用于开发作物特有的光谱库,并为每种水稻(Oryza sativa L. ),辣椒(Capsicum annuum L.),甘蔗(Saccharum officinarum L.)和棉花(Gossipium hirsutum L.)作物已进行了这项研究。使用两个光谱库对作物品种进行作物分类,这两个光谱库是使用冠层尺度(原位高光谱测量)和像素尺度(Hyperion数据)开发的高光谱反射率数据开发的,具有良好的分类结果,总分类精度分别为86.5和88.8%。该观察结果强调了将原位高光谱测量结果与星载高光谱遥感数据整合在一起的可能性,以自动识别和区分各种作物品种。然而,在水稻和甘蔗作物的品种之间观察到相当大的光谱相似性,这可能在准确鉴定各种作物品种方面造成问题。

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