Sijing Tian , Qinghong Sheng , Hao Cui , Guo Zhang , Jun Li , Bo Wang , Zhigang Xie
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To overcome this, our study proposes a progressive feature screening and fusion method using multi-temporal SAR images. We introduce fuzzy coarse screening based on statistical distribution characteristics and refine it with Gaussian fitting. A model incorporating time-series sample separation and polarization decomposition feature fusion based on rice growth height enhances rice growth expression. For more precise results, we advocate a multi-temporal feature fusion approach using optimized sample features in the BiLSTM network to characterize rice growth and ground features. Experimental results demonstrate the method’s efficacy in two cities with a limited number of sampling points. The progressive feature fusion (DF) method outperforms classical classification methods using single feature (SF) or combined features (CF). Our proposed strategy proves effective for rice mapping applications, providing a promising approach for leveraging Sentinel-1 SLC SAR data. In conclusion, our study enhances accuracy in identifying rice fields and characterizing rice growth, contributing to improved food security assessments despite challenges associated with rainy seasons and planting times.</div></div>","PeriodicalId":73423,"journal":{"name":"International journal of applied earth observation and geoinformation : ITC journal","volume":"134 ","pages":"Article 104196"},"PeriodicalIF":7.6000,"publicationDate":"2024-10-07","publicationTypes":"Journal Article","fieldsOfStudy":null,"isOpenAccess":false,"openAccessPdf":"","citationCount":"0","resultStr":"{\"title\":\"Rice recognition from Sentinel-1 SLC SAR data based on progressive feature screening and fusion\",\"authors\":\"Sijing Tian , Qinghong Sheng , Hao Cui , Guo Zhang , Jun Li , Bo Wang , Zhigang Xie\",\"doi\":\"10.1016/j.jag.2024.104196\",\"DOIUrl\":null,\"url\":null,\"abstract\":\"<div><div>Rice, a crucial global food crop, necessitates accurate mapping for food security assessment. China, a major rice producer and consumer, includes Jiangsu Province as a significant rice production region. The Hongzehu (HZH) area in Jiangsu contributes substantially to rice supply, supporting food security locally and province-wide. Sentinel-1 SAR data, particularly Single Look Complex (SLC) products, holds promise for precise crop mapping with enhanced phase and polarization information, enhancing sensitivity to rice growth changes by analyzing rice surface features information. However, challenges persist, especially climate impacts and timing inconsistencies between fields for planting rice. To overcome this, our study proposes a progressive feature screening and fusion method using multi-temporal SAR images. We introduce fuzzy coarse screening based on statistical distribution characteristics and refine it with Gaussian fitting. A model incorporating time-series sample separation and polarization decomposition feature fusion based on rice growth height enhances rice growth expression. For more precise results, we advocate a multi-temporal feature fusion approach using optimized sample features in the BiLSTM network to characterize rice growth and ground features. Experimental results demonstrate the method’s efficacy in two cities with a limited number of sampling points. The progressive feature fusion (DF) method outperforms classical classification methods using single feature (SF) or combined features (CF). Our proposed strategy proves effective for rice mapping applications, providing a promising approach for leveraging Sentinel-1 SLC SAR data. 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引用次数: 0
摘要
水稻是全球重要的粮食作物,需要精确的测绘来进行粮食安全评估。中国是稻米生产和消费大国,江苏省是重要的稻米产区。江苏洪泽湖(HZH)地区对水稻供应做出了巨大贡献,为当地和全省的粮食安全提供了支持。哨兵-1合成孔径雷达数据,特别是单看复合(SLC)产品,通过分析水稻表面特征信息,增强了相位和偏振信息,有望精确绘制作物图,提高对水稻生长变化的敏感性。然而,挑战依然存在,特别是气候影响和不同田块的插秧时间不一致。为了克服这一问题,我们的研究提出了一种利用多时相合成孔径雷达图像的渐进式特征筛选和融合方法。我们引入了基于统计分布特征的模糊粗筛选,并通过高斯拟合对其进行细化。基于水稻生长高度的时间序列样本分离和偏振分解特征融合模型增强了水稻生长表达。为了获得更精确的结果,我们提倡在 BiLSTM 网络中使用优化样本特征的多时相特征融合方法,以表征水稻生长和地面特征。实验结果证明了该方法在两个采样点数量有限的城市中的有效性。渐进式特征融合(DF)方法优于使用单一特征(SF)或组合特征(CF)的经典分类方法。我们提出的策略在水稻测绘应用中证明是有效的,为利用 Sentinel-1 SLC SAR 数据提供了一种前景广阔的方法。总之,我们的研究提高了识别稻田和描述水稻生长特征的准确性,有助于改进粮食安全评估,尽管存在与雨季和种植时间相关的挑战。
Rice recognition from Sentinel-1 SLC SAR data based on progressive feature screening and fusion
Rice, a crucial global food crop, necessitates accurate mapping for food security assessment. China, a major rice producer and consumer, includes Jiangsu Province as a significant rice production region. The Hongzehu (HZH) area in Jiangsu contributes substantially to rice supply, supporting food security locally and province-wide. Sentinel-1 SAR data, particularly Single Look Complex (SLC) products, holds promise for precise crop mapping with enhanced phase and polarization information, enhancing sensitivity to rice growth changes by analyzing rice surface features information. However, challenges persist, especially climate impacts and timing inconsistencies between fields for planting rice. To overcome this, our study proposes a progressive feature screening and fusion method using multi-temporal SAR images. We introduce fuzzy coarse screening based on statistical distribution characteristics and refine it with Gaussian fitting. A model incorporating time-series sample separation and polarization decomposition feature fusion based on rice growth height enhances rice growth expression. For more precise results, we advocate a multi-temporal feature fusion approach using optimized sample features in the BiLSTM network to characterize rice growth and ground features. Experimental results demonstrate the method’s efficacy in two cities with a limited number of sampling points. The progressive feature fusion (DF) method outperforms classical classification methods using single feature (SF) or combined features (CF). Our proposed strategy proves effective for rice mapping applications, providing a promising approach for leveraging Sentinel-1 SLC SAR data. In conclusion, our study enhances accuracy in identifying rice fields and characterizing rice growth, contributing to improved food security assessments despite challenges associated with rainy seasons and planting times.
期刊介绍:
The International Journal of Applied Earth Observation and Geoinformation publishes original papers that utilize earth observation data for natural resource and environmental inventory and management. These data primarily originate from remote sensing platforms, including satellites and aircraft, supplemented by surface and subsurface measurements. Addressing natural resources such as forests, agricultural land, soils, and water, as well as environmental concerns like biodiversity, land degradation, and hazards, the journal explores conceptual and data-driven approaches. It covers geoinformation themes like capturing, databasing, visualization, interpretation, data quality, and spatial uncertainty.