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基于多特征融合的丘陵—坝区过渡带高标准农田遥感提取

Remote sensing extraction of high-standard farmland in hill–plain transition zones based on multi-feature fusion

  • 摘要: 为实现丘陵—坝区过渡带高标准农田的精准识别,提出一种融合区域特征的多维特征遥感提取方法。以云南德宏州章凤镇为研究区,基于哨兵二号与高分二号影像,构建包含光谱特征(10个波段)、光谱指数(归一化植被指数(normalized difference vegetation index,NDVI)、比值植被指数(ratio vegetation index,RVI)、 归一化水体指数(normalized difference water index,NDWI)、优化型土壤调节植被指数(optimized soil adjusted vegetation index,OSAVI))、物候特征(返青期start of season,SOS_DOY;收割期end of season,EOS_DOY;生长季长度length of growing season,LOS_days)与区域特征(斑块密度、沟渠密度、坡度)在内的20维特征集。采用随机森林(random forests,RF)与XGBoost两种机器学习算法,设计S1(光谱)、S2(光谱+光谱指数)、S3(光谱+物候特征)、S4(光谱+区域特征)及S5(全特征)5组组合方案,系统评估各特征组合对高标准农田识别的贡献,并揭示其空间分布格局。结果表明:1)区域特征的引入显著提升了分类精度,斑块密度和沟渠密度是高标准农田识别的关键指标;2)全特征方案S5分类精度最高,且XGBoost的分类性能整体优于RF;3)高标准农田在沟渠300 m缓冲带(占83.13%)、坡度<15°区(占84.43%)高度集聚。该研究通过引入区域特征有效提升了高标准农田的识别精度,为复杂地区高精度识别提供技术支撑。

     

    Abstract: High-standard farmland (HSF) is one of the most important natural sources in modern agriculture. Accurate identification and spatial mapping are essential for the land consolidation and the national food security. However, the recognizing HSF with remote sensing can still remain challenging in the hill–plain transition zones. The fragmented landscapes and heterogeneous land cover can obscure the spectral signals of the agricultural land. Particularly, the conventional classification can rely mainly on the natural attributes, such as the spectral and phenological features. Therefore, the HSF cannot be effectively distinguished from the general cultivated land, which is defined by the crop type of the engineering and management standards, such as the parcel regularity, irrigation, and drainage infrastructure. In this study, a multidimensional feature fusion was developed and then validated to integrate the policy-derived spatial attributes with the conventional remote sensing features, particularly for the high-precision HSF extraction. The study area was taken from a representative hill–plain transition zone in the Zhangfeng Town, Dehong Prefecture, Yunnan Province, China. Multi-source datasets were then constructed, including the preprocessed Sentinel-2 and Gaofen-2 imagery with a 10 m Digital Elevation Model (DEM). A 20-dimensional feature set was classified into four feature types: (1) spectral features from ten Sentinel-2 bands; (2) spectral indices including NDVI, RVI, NDWI, and OSAVI to enhance the vegetation and moisture information; (3) phenological features—Start of Season (SOS), End of Season (EOS), and Length of Season (LOS)—derived from time-series NDVI using a threshold and linear interpolation; and (4) regional features—Patch Density (PD) and Ditch Density (DD) to quantify parcel fragmentation and irrigation infrastructure, together with the slope from the DEM. Five schemes (S1–S5) were combined to evaluate the contribution rate of each feature type. Random Forest (RF) and eXtreme Gradient Boosting (XGBoost) machine learning were employed for the classification, according to the identical training and validation samples from the field surveys and high-resolution image interpretation. The results show that the regional features were significantly enhanced the performance of the classification. Compared with the spectral-only scheme (S1), the scheme incorporating regional features (S4) were improved the overall accuracy by 9.41% for RF and 5.60% for XGBoost, indicating the importance of the policy-related spatial characteristics, such as the parcel regularity and ditch networks. The full-fusion scheme (S5) was achieved in the best performance, with the overall accuracies of 96.15% (Kappa = 0.91) for RF and 96.79% (Kappa = 0.93) for XGBoost. Feature importance analysis indicated that the DD and PD were the most influential predictors, thus contributing more than any single spectral or phenological variable. Spatial pattern analysis revealed that the HSF covered 58.44 km2 in the study area, indicating the pattern of the “basin aggregation and hilly fragmentation.” Specifically, the 84.43% of HSF occurred on the slopes less than 15°, and 83.13% was located within 300 m of the major ditch networks. The topographic suitability and irrigation accessibility were consistent with the national HSF construction. The policy-derived regional features were quantified to integrate with the multi-source remote sensing data and advanced machine learning, such as the XGBoost. The accuracy of the HSF identification was greatly improved in the complex terrains. The framework can provide a reliable technical solution to monitor the HSF construction. The finding can also offer the scientific support for the precision land management in mountainous areas of the sustainable agriculture.

     

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