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Study on estimating the planting area of winter wheat based on mixed field decomposition of remote sensing

机译:基于遥感混合田分解的冬小麦种植面积研究

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With the significantly improved data availability in remote sensing technology, mid-resolution images have become the primary data source for crop sown area measurement in large scale. However, it is still difficult to solve the problems of spectrum heterogeneity in one field and spectra similarity between fields. This paper developed mixed field decomposition method and tested the method in an urban agriculture region with complex plant structure through several steps: first, distinguishing the mixed parcels by calculating the coefficient of variation of multi-temporal TM image within the parcels; then, operating multivariate regression model and mixed field decomposition model based on support vector machine (SVM) to estimate the sown area of winter wheat in the mixed parcels with different sample size. Results show that the mixed field decomposition of SVM has a higher accuracy than the multivariate regression model both in amount and position.
机译:随着遥感技术的显着改善的数据可用性,中间分辨率图像已成为大规模作物播种区域测量的主要数据源。然而,仍然难以解决一个领域的光谱异质性问题和场之间的光谱相似性。本文开发了混合田分解方法,并通过若干步骤开发了与复杂的植物结构的城市农业区中的方法:首先,通过计算包裹内的多时间TM图像的变化系数来区分混合的包裹;然后,基于支持向量机(SVM)的多变量回归模型和混合场分解模型,以不同的样品尺寸估计混合包裹中冬小麦的播种区域。结果表明,SVM的混合场分解具有比数量和位置的多变量回归模型更高的精度。

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