农业工程学报
農業工程學報
농업공정학보
2014年
21期
165-173
,共9页
陈颖姝%张晓春%王修贵%罗强%熊勤学%罗文兵
陳穎姝%張曉春%王脩貴%囉彊%熊勤學%囉文兵
진영주%장효춘%왕수귀%라강%웅근학%라문병
洪涝灾害%遥感%作物%洪涝季节%陆地成像仪%中分辨率成像光谱仪%种植结构
洪澇災害%遙感%作物%洪澇季節%陸地成像儀%中分辨率成像光譜儀%種植結構
홍로재해%요감%작물%홍로계절%륙지성상의%중분변솔성상광보의%충식결구
flood damage%remote sensing%crops%seasons prone to waterlogging%operational land imager%moderate-resolution imaging spectroradiometer%crop plant structure
洪涝灾害会造成农作物严重受损,因此洪涝季节作物的种植结构是估算洪涝灾害损失、进行防灾减灾措施的必要信息。为了能够快速便捷地提取洪涝季节作物种植结构,该文以湖北省监利县为研究区域,探讨了采用空间分辨率较高的Landsat8陆地成像仪(operational land imager, OLI)影像和时间分辨率较高的中分辨率成像光谱仪(moderate-resolution imaging spectroradiometer, MODIS)数据,综合利用多源多时相遥感影像提取中小尺度范围的洪涝季节作物种植结构的方法。首先利用 MODIS 数据建立作物的归一化植被指数(normalized difference vegetation index, NDVI)时间序列曲线,并采用改进后的Savitzky-Golay滤波器对曲线进行平滑处理,然后根据作物的物候特征设定阈值,界定作物种类,进而以此为依据在作物关键生育时期的Landsat8 OLI高清影像中选择合适的感兴趣区域(region of interest,ROI)作为先验知识,使用BP(back propagation)神经网络模型对OLI数据进行监督分类,提取作物种植面积分布。最后利用统计数据与资源三号卫星数据对提取结果进行验证,平均精度达到88%,能够较准确地反映监利县洪涝季节作物的分布情况。该研究可为洪涝灾害损失估算提供可靠基础。
洪澇災害會造成農作物嚴重受損,因此洪澇季節作物的種植結構是估算洪澇災害損失、進行防災減災措施的必要信息。為瞭能夠快速便捷地提取洪澇季節作物種植結構,該文以湖北省鑑利縣為研究區域,探討瞭採用空間分辨率較高的Landsat8陸地成像儀(operational land imager, OLI)影像和時間分辨率較高的中分辨率成像光譜儀(moderate-resolution imaging spectroradiometer, MODIS)數據,綜閤利用多源多時相遙感影像提取中小呎度範圍的洪澇季節作物種植結構的方法。首先利用 MODIS 數據建立作物的歸一化植被指數(normalized difference vegetation index, NDVI)時間序列麯線,併採用改進後的Savitzky-Golay濾波器對麯線進行平滑處理,然後根據作物的物候特徵設定閾值,界定作物種類,進而以此為依據在作物關鍵生育時期的Landsat8 OLI高清影像中選擇閤適的感興趣區域(region of interest,ROI)作為先驗知識,使用BP(back propagation)神經網絡模型對OLI數據進行鑑督分類,提取作物種植麵積分佈。最後利用統計數據與資源三號衛星數據對提取結果進行驗證,平均精度達到88%,能夠較準確地反映鑑利縣洪澇季節作物的分佈情況。該研究可為洪澇災害損失估算提供可靠基礎。
홍로재해회조성농작물엄중수손,인차홍로계절작물적충식결구시고산홍로재해손실、진행방재감재조시적필요신식。위료능구쾌속편첩지제취홍로계절작물충식결구,해문이호북성감리현위연구구역,탐토료채용공간분변솔교고적Landsat8륙지성상의(operational land imager, OLI)영상화시간분변솔교고적중분변솔성상광보의(moderate-resolution imaging spectroradiometer, MODIS)수거,종합이용다원다시상요감영상제취중소척도범위적홍로계절작물충식결구적방법。수선이용 MODIS 수거건립작물적귀일화식피지수(normalized difference vegetation index, NDVI)시간서렬곡선,병채용개진후적Savitzky-Golay려파기대곡선진행평활처리,연후근거작물적물후특정설정역치,계정작물충류,진이이차위의거재작물관건생육시기적Landsat8 OLI고청영상중선택합괄적감흥취구역(region of interest,ROI)작위선험지식,사용BP(back propagation)신경망락모형대OLI수거진행감독분류,제취작물충식면적분포。최후이용통계수거여자원삼호위성수거대제취결과진행험증,평균정도체도88%,능구교준학지반영감리현홍로계절작물적분포정황。해연구가위홍로재해손실고산제공가고기출。
Flood disaster occurs frequently in China and brings severe disaster to crops. Therefore, the crop plant structure in seasons prone to waterlogging becomes significant information for studies on flood loss, flood control, and disaster mitigation. Under these conditions, this paper presents a fast and convenient method to extract the crop plant structure in small scale areas during seasons prone to waterlogging, based on multi-sensor and multi-temporal remote sensing data. Landsat8 OLI and MODIS data were chosen because of the advantages such as it being free of charge and easy to search for and download. These two types of data showed the characteristics of crops’ growth respectively in space and time, leading to a proper combination for crop planting structure extraction. If one only uses MODIS data to build the extraction model, the spatial resolution is too low to get the planting structure in small scale areas. On the other hand, just classifying the OLI images by visual interpretation sometimes could not determine the types of crops. The Jianli County in Jingzhou City, Hubei Province was chosen as the study area. The seasons prone to waterlogging in Jianli mainly include June, July, and August, and are related to crops such as early-season rice, middle-season rice, late rice, and cotton. Here are the extracting models for the four major kinds of crops: NDVI value of cotton grows to the peak in early July and stays high until September;early-season rice NDVI maximum value appears in middle June, and it becomes completely mature in late July;middle-rice NDVI value starts to increase at the end of May and reaches its peak in early or middle July before falling to a decline;NDVI value of late rice goes up in mid-July and the peak value appears in middle or late August, and then the value begins to decline. First, a time series curve of NDVI was built from the MODIS data, which was later smoothed by an improved Savitzky-Golay filter. The improved Savitzky-Golay filter reserved the authenticity of data at both ends of the NDVI time series while further improving the smoothness of the curve. To distinguish the types of crops, threshold values of NDVI for different crops were set according to corresponding phenophases. Based on the characteristics and threshold values of NDVI time series, appropriate ROIs (Region of Interest) in the Landsat8 OLI images in key growth stages of different crops were selected as prior knowledge for training. Finally, the area and distribution of the four studied crops were extracted by a BP Neural Net Supervised Classification. The experimental results agreed well with the statistical data and a ZY-3 image which had a spatial definition of 6 meters, and obtained an average precision above 90%. It was concluded that the proposed method in this paper is simple and easy operating. Moreover, it accurately reflected the real situation of crop distribution in the Jianli area, and is suited for extraction of the plant structure in small scale areas like Jianli. Therefore, this method provides a reliable basis for related research studies on flood disaster.