Parcel-Level Crop Classification in Plain Fragmented Regions Based on Multi-Source Remote Sensing Images

Qiao Zhang, Ziyi Luo, Yang Shen, Zhoufeng Wang
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Abstract

Accurately obtaining crop cultivation extent and estimating the cultivated area are significant for adjusting regional planting structure. This article proposes a parcel-level crop classification method using time-series, medium-resolution, remote sensing images and single-phase, high-spatial-resolution, remote sensing images. The deep learning semantic segmentation network feature pyramid network with squeeze-and-excitation network (FPN???SENet) and multi-scale segmentation were used to extract cultivated land parcels from Gaofen-2 imagery, while the pixel-level crop types were classified by using support vector machine algorithms from time-series Sentinel-2 images. Then, the parcel-level crop classification was obtained from the pixel-level crop types and land parcels.
基于多源遥感图像的平原破碎地区地块级作物分类
准确获取作物种植范围和估算种植面积对于调整区域种植结构意义重大。本文提出了一种利用时间序列中分辨率遥感图像和单相高空间分辨率遥感图像进行地块级作物分类的方法。利用深度学习语义分割网络特征金字塔网络与挤压激发网络(FPN???SENet)和多尺度分割技术从高分二号影像中提取耕地地块,同时利用支持向量机算法从时间序列哨兵二号影像中对像素级作物类型进行分类。然后,从像素级作物类型和地块中获得地块级作物分类。
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