Parcel-Level Crop Classification in Plain Fragmented Regions Based on Multi-Source Remote Sensing Images
Qiao Zhang,
Ziyi Luo,
Yang Shen
et al.
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 la… Show more
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