基于面向对象与U-Net模型的广东省云浮市云城区耕地后备资源遥感提取

    Remote sensing extraction of cultivated land reserve resources in Yuncheng District, Yunfu City, Guangdong Province based on object-oriented method and U-Net model

    • 摘要:
      目的 提升耕地后备资源信息提取的效率与精度,满足现代农业发展对土地资源动态监测的需求。
      方法 本文以广东省云浮市云城区为研究区域,提出一种融合面向对象规则构建与深度学习的耕地后备资源信息提取方法。利用高分6号高分辨率卫星影像开展多尺度图像分割,结合逐步剔除法构建地类识别规则,提取典型地类样本。随后,基于规则样本构建U-Net深度学习模型的训练标签数据集,完成耕地后备资源提取与分类。
      结果 针对云城区的最佳分割尺度为300,在该尺度下,同类地物可以被有效分割,草地与裸地边界划分清晰。本研究方法在研究区的总体精确率达87.3%,平均交并比和F1分数分别达到75.4%和86.7%,能够实现复杂地物边界的精准提取。基于改进U-Net的深度学习方法能够有效减少误分类现象,特别是在边界模糊区域和混合像元区域,相较于传统面向对象方法,精确率提高了约5个百分点。
      结论 本研究构建的遥感智能提取方法兼具高精度与时效性,能够为地方土地利用规划、耕地资源管理及生态保护提供有力支撑,具有良好的推广应用前景。

       

      Abstract:
      Objective To improve the efficiency and accuracy of cultivated land reserve resource information extraction, meet the demands of modern agricultural development for land resource dynamic monitoring.
      Method This paper took Yuncheng District in Yunfu City of Guangdong Province as the study area, and proposed a method for extracting cultivated land reserve resources by integrating object-oriented rule construction and deep learning. Using GF-6 high-resolution satellite imagery, multi-scale image segmentation was performed, and a stepwise elimination method was applied to construct land classification identification rules, extracting samples of typical land types. Subsequently, based on the rule-based samples, a training label dataset for the U-Net deep learning model was constructed to accomplish the extraction and classification of cultivated land reserve resources.
      Result For Yuncheng District, the optimal segmentation scale was determined to be 300. At this scale, features of the same category were effectively segmented, with clear boundaries between grassland and bare land. The overall precision of the proposed method in the study area reached 87.3%, while the mean intersection over union and F1-score achieved 75.4% and 86.7%, respectively, enabling precise extraction of complex feature boundaries. The deep learning approach based on the improved U-Net effectively reduced misclassification, particularly in areas with blurred boundaries and mixed pixels, and improved precision by approximately 5 percentage points compared to traditional object-oriented method.
      Conclusion The remote sensing intelligent extraction method developed in this study demonstrates both high precision and time efficiency. It can provide robust support for local land use planning, cultivated land resource management, and ecological conservation, showing promising potential for broader application.

       

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