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Fine crop mapping by combining high spectral and high spatial resolution remote sensing data in complex heterogeneous areas

机译:通过组合复杂异构区域中的高光谱和高空间分辨率遥感数据来进行精细作物映射

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摘要

In complex heterogeneous areas, it is difficult to map crops with high accuracy using only high spatial resolution or only high spectral resolution remote sensing data. Because the spectral resolution of high spatial resolution data is too low, the spectral differentiations of different vegetation types are very small in high spatial resolution data. It is hard to distinguish between different vegetation types using high spatial resolution data. For high spectral resolution remote sensing data, it is hard to exclude linear objects like roads, bridges and drains from crops due to the low spatial resolution of these data. To address this problem, a novel object-based fine crop mapping method by combining high spatial and high spectral resolution remote sensing data for heterogeneous areas was proposed and validated in Suzhou city, Jiangsu province, China. First, pure crop polygons were derived from a 0.5 m aerial data. Due to the high spatial resolution, non-cultivated land could be easily isolated from arable land. Then, a Hyperion data was used to classify crops for each of the pure crop polygons. The results show that this method can map crops in complex heterogeneous areas with an overall accuracy higher than 95%, which is much higher than the accuracy of maps classified using only high spatial resolution data or only high spectral resolution data, which have an overall accuracy of 58.78% and 77.54%, respectively. (C) 2017 Elsevier B.V. All rights reserved.
机译:在复杂的异构区域中,难以仅使用高空间分辨率或仅高光谱分辨率遥感数据来映射高精度的作物。因为高空间分辨率数据的光谱分辨率太低,所以在高空间分辨率数据中的不同植被类型的光谱分子非常小。使用高空间分辨率数据难以区分不同的植被类型。对于高光谱分辨率遥感数据,由于这些数据的低空间分辨率,难以排除道路,桥梁和来自作物的道路,桥梁和排水的线性物体。为了解决这个问题,提出了一种通过组合用于异构区域的高空间和高光谱分辨率遥感数据的新型对象的微量作物映射方法,并在江苏省苏州市验证了中国。首先,纯作物多边形来自0.5米的航拍数据。由于空间分辨率高,可以容易地从耕地中分离出非耕地。然后,使用Hyperion数据来为每个纯裁剪多边形对作物进行分类。结果表明,该方法可以将复杂的异构区域映射作物,其整体精度高于95%,远高于仅使用高空间分辨率数据或仅具有总体精度的高光谱分辨率数据分类的地图的准确性分别为58.78%和77.54%。 (c)2017 Elsevier B.v.保留所有权利。

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