Integrating coarse-resolution images and agricultural statistics to generate sub-pixel crop type maps and reconciled area estimates
文献类型: 外文期刊
第一作者: Hu, Qiong
作者: Hu, Qiong;Hu, Qiong;Friedl, Mark A.;Yin, He;You, Liangzhi;You, Liangzhi;Li, Zhaoliang;Tang, Huajun;Wu, Wenbin
作者机构:
关键词: Crop type mapping; Random forest regression; Iterative area gap spatial allocation; MODIS; Area estimate; Feature selection
期刊名称:REMOTE SENSING OF ENVIRONMENT ( 影响因子:9.085; 五年影响因子:9.626 )
ISSN: 0034-4257
年卷期: 2021 年 258 卷
页码:
收录情况: SCI
摘要: Reliable crop type maps are vital for agricultural monitoring, ensuring food security, and environmental sustainability assessments. Coarse-resolution imagery such as MODIS are widely used for crop type mapping due to their short revisit cycles, which is advantageous for detecting the seasonal dynamics of different crop types. However, the inherently low spatial resolution may restrict their utility for mapping crop types in regions with heterogeneous agricultural landscapes. Agricultural statistics, which provide crop acreage information at different spatial and temporal scales, have the potential to improve crop type mapping from remote sensing. Yet, previous studies have often used agricultural statistics as reference data to evaluate the accuracy of satellitederived crop type maps but have rarely utilized them to improve crop type distribution mapping. The utility of integrating agricultural statistics with satellite images to produce high-accuracy crop type maps is rarely explored. This study presents a methodology for mapping sub-pixel crop type distributions via the integration of MODIS time series and agricultural statistics. We tested our approach in Heilongjiang Province, which has the highest agricultural production in China. First, we used an optimized random forest regression (RF-r) model with training samples derived from high spatial resolution images (i.e. SPOT and Landsat) to predict the sub-pixel crop type distributions from MODIS time series. To optimize the RF-r model, an 8-day MODIS time series of five vegetation indices in 2011 were used as the candidate independent variables, and a backward feature elimination strategy was implemented to select the best variables for model prediction. Second, we developed an Iterative Area Gap Spatial Allocation (IAGSA) method to spatially reconcile the discrepancies between the crop acreage estimated from MODIS-based maps and the agricultural statistics. We found that the MODIS-derived crop fractions agreed with those derived from the high-resolution images, with R2 > 0.75 for all crop types, yet there was a clear discrepancy between the crop acreage estimated from MODIS and agricultural statistics. The subpixel crop type maps adjusted by IAGSA were not only consistent with the agricultural statistics for crop acreage, but also retained the spatial distribution patterns of the original MODIS-derived crop fraction. Our results suggest the advantages of integrating coarse-resolution images and agricultural statistics to map sub-pixel crop type distributions, and to provide consistent estimation of crop acreage. The presented methodology has the potential to map large-scale crop type extent across regions in a cost-effective way.
分类号:
- 相关文献
作者其他论文 更多>>
-
Maize tassel number and tasseling stage monitoring based on near-ground and UAV RGB images by improved YoloV8
作者:Yu, Xun;Yin, Dameng;Jin, Xiuliang;Yu, Xun;Yin, Dameng;Xu, Honggen;Nie, Chenwei;Bai, Yi;Ming, Bo;Jin, Xiuliang;Espinosa, Francisco Pinto;Schmidhalter, Urs;Sankaran, Sindhuja;Cui, Ningbo;Cui, Ningbo;Wu, Wenbin
关键词:RGB images; Deep learning; Tasseling stage; Maize tassel; UAV; Dynamic monitoring
-
Improving crop yield estimation by unified model parameters and state variable with Bayesian inference
作者:Song, Jianjian;Huang, Jianxi;Huang, Hai;Xiao, Guilong;Li, Xuecao;Li, Li;Su, Wei;Huang, Jianxi;Li, Xuecao;Li, Li;Su, Wei;Wu, Wenbin;Yang, Peng;Liang, Shunlin
关键词:Crop yield estimation; Data assimilation; Bayesian inference; Ensemble Kalman filter; WOFOST model
-
A temporal-spatial deep learning network for winter wheat mapping using time-series Sentinel-2 imagery
作者:Fan, Lingling;Xia, Lang;Yang, Jing;Sun, Xiao;Wu, Shangrong;Wu, Wenbin;Yang, Peng;Fan, Lingling;Xia, Lang;Yang, Jing;Sun, Xiao;Wu, Shangrong;Wu, Wenbin;Fan, Lingling;Qiu, Bingwen;Chen, Jin
关键词:Wheat mapping; Deep learning; Temporal -spatial fusion; Time series; Sentinel-2
-
National-scale 10 m annual maize maps for China and the contiguous United States using a robust index from Sentinel-2 time series
作者:Huang, Yingze;Qiu, Bingwen;Peng, Yufeng;Lin, Duoduo;Cheng, Feifei;Liang, Juanzhu;Huang, Hongyu;Chen, Chongcheng;Yang, Peng;Wu, Wenbin;Chen, Xuehong;Zhu, Xiaolin;Xu, Shuai;Wang, Laigang;Dong, Zhanjie;Zhang, Jianyang;Berry, Joe;Tang, Zhenghong;Tan, Jieyang;Duan, Dingding;Qiu, Bingwen
关键词:Crop mapping; Maize index; National -scale; Cross -region; Spatiotemporal variations
-
Determinants of changes in harvested area and yields of major crops in China
作者:Yin, Fang;Yin, Fang;Sun, Zhanli;Mueller, Daniel;You, Liangzhi;You, Liangzhi;Mueller, Daniel;Mueller, Daniel
关键词:Agricultural production; Land-use intensity; Crop productivity; Land-use change; Food security; Spatial panel regression
-
Advancing the optimization of urban-rural ecosystem service supply-demand mismatches and trade-offs
作者:Fang, Guangji;Sun, Xiao;Liu, Qinghua;Yang, Peng;Tang, Huajun;Sun, Ranhao;Sun, Ranhao;Tao, Yu
关键词:Landscape sustainability; Restoration opportunities optimization tool (ROOT); Priority restoration regions; Production possibility frontier; Trade-off curves
-
Response of soil moisture to prewinter conditions and rainfall events at different distances to gully banks in the Mollisol region of China
作者:Wen, Yanru;Liu, Bao;Yu, Qiangyi;Xu, Yanyan;Wu, Wenbin;Song, Qian;Liu, Bao;Xu, Yanyan;Li, Ting-Yong;Lin, Litao;Zhang, Bin;Wu, Wenbin;Song, Qian
关键词:gully bank; gully erosion; Mollisol region; prewinter soil moisture; rainfall events; soil moisture response