基于深度学习和GEE的作物遥感分类

Crop remote sensing classification study in Qitai County based on deep learning and Google earth engine (GEE)

  • 摘要: 【目的】 利用遥感数据和深度学习方法准确获取农作物的种植结构和分布。 【方法】 通过实地调查新疆奇台县获取样本集,借助Google Earth Engine云平台获取Sentinel-2号和Sentinel-1号影像,利用Google Colab进行深度学习算法的模型训练和验证,调整和优化深度学习的相关参数来提升分类精度,并且比较了深度学习、随机森林和支持向量机3种分类方法的精度。 【结果】 深度学习的分类精度最高,总体精度达到94.6%。 【结论】 利用深度学习算法可实现奇台县农作物种植结构的精准监测。

     

    Abstract: 【Objective】 This study aims to accurately acquire the crop planting structure and distribution using remote sensing data and deep learning methods in view of the complex crop planting structure. 【Methods】 A sample set was obtained through field investigations.Sentinel-2 and Sentinel-1 images were acquired using the Google Earth Engine cloud platform; Model training and validation for deep learning algorithms were conducted using Google Colab; Classification accuracy was improved by adjusting and optimizing relevant parameters of deep learning.Additionally, the accuracy of three classification methods—deep learning, random forest, and support vector machine—was compared. 【Results】 The deep learning approach achieved the highest classification accuracy, with an overall accuracy of 94.6%. 【Conclusion】 The utilization of deep learning algorithms enables precise monitoring of crop planting structure in Qitai County.

     

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