首页> 外文期刊>Journal of the American Society for Horticultural Science >Classifying Irrigated Crops as Affected by Phenological Stage Using Discriminant Analysis and Neural Networks
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Classifying Irrigated Crops as Affected by Phenological Stage Using Discriminant Analysis and Neural Networks

机译:利用判别分析和神经网络对受物候期影响的灌溉作物进行分类

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In Spain, water for agricultural use represents about 85% of the total water demand, and irrigated crop production constitutes a major contribution to the country's economy. Field studies were conducted to evaluate the potential of multispectral reflectance and seven vegetation indices in the visible and near-infrared spectral range for discriminating and classifying bare soil and several horticultural irrigated crops at different dates. This is the first step of a broader project with the overall goal of using satellite imagery with high spatial and multispectral resolutions for mapping irrigated crops to improve agricultural water use. On-ground reflectance data of bare soil and annual herbaceous crops [garlic (Allium, saffron:), onion (Allium cepa), sunflower (Helianthus annuus), bean (Vicia faba), maize (Zoo mays), potato (Solanum tuberosum), winter wheat (Triticum aestivum), melon (Cucumis melo), watermelon (Citrillus lanatus), and cotton (Gossypium hirsutum)I, perennial herbaceous crops [alfalfa (Medicago swim) and asparagus (Asparagus officinalis)1, deciduous trees [plum (Prunus spp.)1, and non-deciduous trees [citrus (Citrus spp.) and olive (Olea europaea)I were collected using a handheld field spectroradiometer in spring, early summer, and late summer. Three classification methods were applied to discriminate differences in reflectance between the different crops and bare soil: stepwise discriminant analysis, and two artificial neural networks: multilayer perception (M LP) and radial basis function. On any of the sampling dates, the highest degree of accuracy was achieved with the M LP neural network, showing 89.8%, 91.1%, and 96.4% correct classification in spring, early summer, and late summer, respectively. The classification matrix from the MLP model using cross-validation showed that most crops discriminated in spring and late summer were 100% classifiable. For future works, we would recommend acquiring two multispectral satellite images taken in spring and late summer for monitoring and mapping these irrigated crops, thus avoiding costly field surveys.
机译:在西班牙,农业用水约占总需水量的85%,而灌溉作物的生产对西班牙的经济构成了重要贡献。进行了野外研究,以评估可见光和近红外光谱范围内多光谱反射率和七个植被指数在不同日期对裸土和几种园艺灌溉作物进行区分和分类的潜力。这是更广泛项目的第一步,其总体目标是使用具有高空间和多光谱分辨率的卫星图像来绘制灌溉作物的地图,以改善农业用水。裸露的土壤和一年生草本作物[大蒜(大蒜,藏红花:),洋葱(大蒜),向日葵(向日葵),豆类(蚕豆),玉米(Zoo mays),马铃薯(Solanum tuberosum) ,冬小麦(Triticum aestivum),瓜(Cucumis melo),西瓜(Citrillus lanatus)和棉花(Gossypium hirsutum)I,多年生草本作物[苜蓿(Medicago游泳)和芦笋(Asparagus officinalis)1,落叶树[李子(在春季,初夏和夏末使用手持式场光谱仪收集了李子1和非落叶树[柑橘(Citrus spp。)和橄榄(Olea europaea)I。应用了三种分类方法来区分不同作物和裸土之间反射率的差异:逐步判别分析和两个人工神经网络:多层感知(M LP)和径向基函数。在任何一个采样日期,使用M LP神经网络都可以达到最高的准确度,在春季,初夏和夏末分别显示89.8%,91.1%和96.4%的正确分类。来自MLP模型的使用交叉验证的分类矩阵显示,在春季和夏末鉴别出的大多数农作物都是100%可分类的。对于将来的工作,我们建议获取两个在春季和夏季末拍摄的多光谱卫星图像,以监视和绘制这些灌溉作物的图,从而避免进行昂贵的田间调查。

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