Large-scale mapping of plastic-mulched land from Sentinel-2 using an index-feature-spatial-attention fused deep learning model

IF 5.7 Q1 ENVIRONMENTAL SCIENCES
Lizhen Lu , Yunci Xu , Xinyu Huang , Hankui K. Zhang , Yuqi Du
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引用次数: 0

Abstract

Accurate and timely mapping of Plastic-Mulched Land (PML) on a large-scale using satellite data supports precision agriculture and enhances understanding the PML's impacts on regional climate and environment. However, accurately mapping large-scale PML remains challenging due to the relatively small size and short lifespan of visible PML. In this paper, we demonstrated a large-scale PML mapping using Sentinel-2 data by combining the PML domain knowledge and the deep Convolutional Neural Network (CNN). We developed a dual-branch Index-Feature-Spatial-Attention fused Deep Learning Model (IFSA_DLM) for effectively acquiring and fusing multi-scale discriminative features and thus for accurately detecting PML. The proposed model was trained on one agricultural zone with 2019 Sentinel-2 data and evaluated across six agricultural zones in Xinjiang, China (span >1500 km in dimension) for Sentinel-2 and Landsat 8 data acquired over 2019 and 2023 to examine the spatial, temporal and across-sensor transferability. Results show that the IFSA_DLM model outperforms three compared U-Net series models with 94.48% Overall Accuracy (OA), 87.69% mean Intersection over Union (mIoU) and 93.38% F1 score. The model's spatial, temporal and sensor transferability is demonstrated by its successful cross-region, cross-time and Landsat-8 applications. Large-scale maps of PML in Xinjiang in both 2019 and 2023 further confirmed the effectiveness of the proposed approach.
利用索引-特征-空间-注意力融合的深度学习模型,Sentinel-2对覆膜土地进行大规模制图
利用卫星数据准确、及时地进行大规模地膜覆盖测绘,为精准农业提供了支持,并增强了对地膜覆盖对区域气候和环境影响的认识。然而,由于可见PML的尺寸相对较小且寿命较短,因此准确地绘制大规模PML仍然具有挑战性。在本文中,我们通过结合PML领域知识和深度卷积神经网络(CNN),展示了使用Sentinel-2数据的大规模PML映射。我们开发了一个双分支索引-特征-空间-注意力融合深度学习模型(IFSA_DLM),用于有效获取和融合多尺度判别特征,从而准确检测PML。该模型使用2019年Sentinel-2数据在一个农业区进行训练,并使用2019年和2023年获得的Sentinel-2和Landsat 8数据在中国新疆的6个农业区(跨度1500公里)进行评估,以检查空间、时间和跨传感器可转移性。结果表明,IFSA_DLM模型以94.48%的总体准确率(OA)、87.69%的平均交集比(mIoU)和93.38%的F1得分优于3个U-Net系列模型。该模型的空间、时间和传感器可转移性通过其成功的跨区域、跨时间和Landsat-8应用得到了证明。2019年和2023年新疆大比例尺PML地图进一步证实了该方法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
12.20
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0.00%
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