农业工程学报
農業工程學報
농업공정학보
2014年
11期
134-144
,共11页
许青云%杨贵军%龙慧灵%王崇%李鑫川%黄登成
許青雲%楊貴軍%龍慧靈%王崇%李鑫川%黃登成
허청운%양귀군%룡혜령%왕숭%리흠천%황등성
遥感%农作物%识别%MODIS NDVI%种植模式%种植类型%陕西省
遙感%農作物%識彆%MODIS NDVI%種植模式%種植類型%陝西省
요감%농작물%식별%MODIS NDVI%충식모식%충식류형%합서성
remote sensing%crops%identification%MODIS NDVI%planting pattern%planting type%Shaanxi province
为了获取陕西省农作物种植模式和类型分布信息,实现对于多年农作物长势分析及精确的估产和耕地生产力的估算,该文以2003-2012年的MOD09Q1时间序列遥感数据集为数据源,以陕西省主要农作物冬小麦、夏玉米、春玉米、水稻和油菜为研究对象,利用Savitzky-Golay滤波方法重建NDVI长时间序列数据集,充分利用农作物的物候信息,构建农作物年际间动态阈值方法,实现了农作物种植模式和类型的识别。通过对混合像元进行分解,更精确地提取农作物种植面积信息。利用空间和定量2种方式对农作物类型识别结果进行分析验证,空间对比分析得到分类的总体精度和 Kappa 系数为88.18%和59.64%,定量对比分析得到分类的总体一致性为87.56%。研究结果表明,结合物候信息与时间序列数据利用该文的分类方法可以有效的识别大尺度农作物信息。
為瞭穫取陝西省農作物種植模式和類型分佈信息,實現對于多年農作物長勢分析及精確的估產和耕地生產力的估算,該文以2003-2012年的MOD09Q1時間序列遙感數據集為數據源,以陝西省主要農作物鼕小麥、夏玉米、春玉米、水稻和油菜為研究對象,利用Savitzky-Golay濾波方法重建NDVI長時間序列數據集,充分利用農作物的物候信息,構建農作物年際間動態閾值方法,實現瞭農作物種植模式和類型的識彆。通過對混閤像元進行分解,更精確地提取農作物種植麵積信息。利用空間和定量2種方式對農作物類型識彆結果進行分析驗證,空間對比分析得到分類的總體精度和 Kappa 繫數為88.18%和59.64%,定量對比分析得到分類的總體一緻性為87.56%。研究結果錶明,結閤物候信息與時間序列數據利用該文的分類方法可以有效的識彆大呎度農作物信息。
위료획취합서성농작물충식모식화류형분포신식,실현대우다년농작물장세분석급정학적고산화경지생산력적고산,해문이2003-2012년적MOD09Q1시간서렬요감수거집위수거원,이합서성주요농작물동소맥、하옥미、춘옥미、수도화유채위연구대상,이용Savitzky-Golay려파방법중건NDVI장시간서렬수거집,충분이용농작물적물후신식,구건농작물년제간동태역치방법,실현료농작물충식모식화류형적식별。통과대혼합상원진행분해,경정학지제취농작물충식면적신식。이용공간화정량2충방식대농작물류형식별결과진행분석험증,공간대비분석득도분류적총체정도화 Kappa 계수위88.18%화59.64%,정량대비분석득도분류적총체일치성위87.56%。연구결과표명,결합물후신식여시간서렬수거이용해문적분류방법가이유효적식별대척도농작물신식。
Arable land is the foundation of the national economy. How to make the best of arable land resources has become a focus problem of modern science and technology information. The rapid development of agricultural condition remote sensing monitoring technology provides more scientific ways and information technology for monitoring the arable land in real-time. In order to obtain the information of Shaanxi Province agricultural condition monitoring for managing arable land more efficiently, this thesis aimed to study the crop planting patterns and types of arable land, and took the main crops (wheat, spring maize, summer maize, rice and rape) of arable land in Shaanxi Province as the research object. <br> Firstly, the remote sensing datasets of 250 m MOD09Q1 time series during 2003-2012 were used, and the Savitzky-Golay filtering method of TIMESAT software was used to reconstruct the NDVI time series datasets. Secondly, combined with the agricultural meteorological station datasets, TM 30 m land cover classification data, and the main crops’ information and crop phenological information in Shaanxi Province, we extracted the change trends of typical terrain feature and determined the interannual dynamic thresholds. According to the threshold of a peak and crop growth period and other information, the crop planting patterns and crop types were identified. Thirdly, owing to the mixed pixel that the major factor affected the classification accuracy of the low spatial resolution remote sensing, therefore, the IDL optimization function (CONSTRAINED_MIN) was used to obtain each crop types’ abundance figure by the method of non-negative least squares. <br> Two kinds of precision validation methods of spatial and quantitative were adopted in this paper. The total classification accuracy and Kappa coefficient were 88.18% and 59.64% respectively according to spatial comparative analysis. The classification results were revised by the crop types’ abundance figure, and the overall consistency of classification was 87.56% according to quantitative analysis, and the validation results for the rice and other grains had good consistency (93.74%, 92.36%), while the winter wheat and maize followed (83.68%, 84.61%). Through the analysis of mixed pixels, the overall consistency of estimating crop acreage increased by 6.23%, the consistency of winter wheat, maize, rice and other grains increased by 6.35%, 8.01%, 7.26% and 4.85%. <br> The results indicate that using the Savitzky-Golay filtering method to reconstruct NDVI time series datasets could meet the requirement of the classification. Combining phonological information with time series datasets and using the classification method presented in this thesis could identify the crop planting patterns and crop types effectively in large scale. Using the IDL optimization function (CONSTRAINED_MIN) to analyze the mixed pixels, the crop acreages were calculated accurately.