光谱学与光谱分析
光譜學與光譜分析
광보학여광보분석
SPECTROSCOPY AND SPECTRAL ANALYSIS
2014年
4期
1003-1006
,共4页
周丽娜%于海业%张蕾%任顺%隋媛媛%于连军
週麗娜%于海業%張蕾%任順%隋媛媛%于連軍
주려나%우해업%장뢰%임순%수원원%우련군
叶绿素荧光光谱%稻瘟病%主成分分析%多层感知器
葉綠素熒光光譜%稻瘟病%主成分分析%多層感知器
협록소형광광보%도온병%주성분분석%다층감지기
Chlorophyll fluorescence spectrum%Rice blast%Principal components analysis%M ultilayer perceptron
为了实现稻瘟病的快速、准确和无损检测,力求构建稻瘟病害预测模型。根据水稻叶片相对病害面积将稻瘟病划分为3个等级,通过激光诱导法采集不同病害等级的活体水稻叶片叶绿素荧光光谱。选取502~830 nm波段激光诱导叶绿素荧光光谱(LICF)作为研究对象,利用Savitzky-Golay平滑法(SG)和一阶导数变换(FDT)对光谱信息进行预处理,通过主成分分析(PCA)方法获取经SG-FDT预处理后光谱的特征向量,根据累积贡献率和方差选取前3个主成分进行分析。将试验样本分为建模样本和检验样本,以稻瘟病害等级为预测指标,利用建模样本的133片叶片的光谱和病害信息分别结合判别分析(DA )、多类逻辑回归分析(MLRA)和多层感知器(MLP)建立稻瘟病的预测模型,利用检验样本的89片叶片的光谱和病害信息对所建模型进行预测检验,完成对 PCA-DA、PCA-MLRA和 PCA-MLP的对比寻优。结果表明,PCA-DA ,PCA-MLRA和 PCA-MLP模型均能完成对稻瘟病害的预测,但 PCA-MLP模型的平均预测准确率能够达到91.7%,相比PCA-DA和PCA-MLRA模型,在稻瘟病害3个等级上均具有较好的分类和预测能力。
為瞭實現稻瘟病的快速、準確和無損檢測,力求構建稻瘟病害預測模型。根據水稻葉片相對病害麵積將稻瘟病劃分為3箇等級,通過激光誘導法採集不同病害等級的活體水稻葉片葉綠素熒光光譜。選取502~830 nm波段激光誘導葉綠素熒光光譜(LICF)作為研究對象,利用Savitzky-Golay平滑法(SG)和一階導數變換(FDT)對光譜信息進行預處理,通過主成分分析(PCA)方法穫取經SG-FDT預處理後光譜的特徵嚮量,根據纍積貢獻率和方差選取前3箇主成分進行分析。將試驗樣本分為建模樣本和檢驗樣本,以稻瘟病害等級為預測指標,利用建模樣本的133片葉片的光譜和病害信息分彆結閤判彆分析(DA )、多類邏輯迴歸分析(MLRA)和多層感知器(MLP)建立稻瘟病的預測模型,利用檢驗樣本的89片葉片的光譜和病害信息對所建模型進行預測檢驗,完成對 PCA-DA、PCA-MLRA和 PCA-MLP的對比尋優。結果錶明,PCA-DA ,PCA-MLRA和 PCA-MLP模型均能完成對稻瘟病害的預測,但 PCA-MLP模型的平均預測準確率能夠達到91.7%,相比PCA-DA和PCA-MLRA模型,在稻瘟病害3箇等級上均具有較好的分類和預測能力。
위료실현도온병적쾌속、준학화무손검측,력구구건도온병해예측모형。근거수도협편상대병해면적장도온병화분위3개등급,통과격광유도법채집불동병해등급적활체수도협편협록소형광광보。선취502~830 nm파단격광유도협록소형광광보(LICF)작위연구대상,이용Savitzky-Golay평활법(SG)화일계도수변환(FDT)대광보신식진행예처리,통과주성분분석(PCA)방법획취경SG-FDT예처리후광보적특정향량,근거루적공헌솔화방차선취전3개주성분진행분석。장시험양본분위건모양본화검험양본,이도온병해등급위예측지표,이용건모양본적133편협편적광보화병해신식분별결합판별분석(DA )、다류라집회귀분석(MLRA)화다층감지기(MLP)건립도온병적예측모형,이용검험양본적89편협편적광보화병해신식대소건모형진행예측검험,완성대 PCA-DA、PCA-MLRA화 PCA-MLP적대비심우。결과표명,PCA-DA ,PCA-MLRA화 PCA-MLP모형균능완성대도온병해적예측,단 PCA-MLP모형적평균예측준학솔능구체도91.7%,상비PCA-DA화PCA-MLRA모형,재도온병해3개등급상균구유교호적분류화예측능력。
In order to detect rice blast more rapidly ,accurately and nondestructively ,the identification and early warning models of rice blast were established in the present research .First of all ,rice blast was divided into three grades according to the relative area of disease spots in rice leaf and laser-induced chlorophyll fluorescence spectra of rice leaves at different disease levels were measured in the paddy fields .Meanwhile ,502~830 nm bands of laser-induced chlorophyll fluorescence spectra were selected for the study of rice blast .Savitzky-Golay(SG) smoothing and First Derivative Transform(FDT) were applied for the pretreatment of laser-induced chlorophyll fluorescence spectra .Then the method of Principal Components Analysis(PCA) was used to achieve the dimension reduction on spectral information ,three principal components whose variance are greater than 1 and cumulative credibility is 99.924% were extracted by this method .Furthermore ,the tentative data were divided into calibration set and vali-dation set ,the levels of rice blast were taken as the predictors .Combined with the calibration set which contains the disease and spectral information of 133 leaves ,Discriminant Analysis(DA) ,Multiple Logistic Regression Analysis(MLRA) and Multilayer Perceptron(MLP) were used respectively to establish the identification and early warning models of rice blast .The Prediction examinations of the three models were made based on the validation set which contains the disease and spectral information of 89 leaves .The results show that all the models of PCA-DA ,PCA-MLRA and PCA-MLP can carry on the prediction of rice blast , and the average prediction accuracy of PCA-MLP prediction model is 91.7% which is improved compared with PCA-DA and PCA-MLRA .