从分析苹果树盛果期冠层高光谱入手,结合同一时间的数码照片,在Erdas,ViewSpec Pro,DPS和LIBSVM等软件的支持下,采用相关分析、线性回归、逐步回归、基于BP人工神经网络分析、支持向量机回归方法,探析高光谱反射率及其转换数据与冠层组分指数间的关系。结果表明,冠层反射率受地表反光膜的影响显著;原始反射率与果叶比的相关性最好,611~680 nm为反映两者关系的特征波段;在特征波段内,依据原始反射率和果叶比所建立的4种模型都可满足预测需要,但基于BP人工神经网络模型和支持向量机回归模型整体上优于一元线性回归模型和多元线性回归模型,尤以支持向量机回归模型精度最高。研究结果可为后续的苹果遥感估产工作提供理论支持。
Hyperspectral technique has become the basis of quantitative remote sensing.Hyperspectrum of apple tree canopy at prosperous fruit stage consists of the complex information of fruits,leaves,stocks,soil and reflecting films,which was mostly affected by component features of canopy at this stage.First,the hyperspectrum of 18 sample apple trees with reflecting films was compared with that of 44 trees without reflecting films.It could be seen that the impact of reflecting films on reflectance was obvious,so the sample trees with ground reflecting films should be separated to analyze from those without ground films.Secondly,nine indexes of canopy components were built based on classified digital photos of 44 apple trees without ground films.Thirdly,the correlation between the nine indexes and canopy reflectance including some kinds of conversion data was analyzed.The results showed that the correlation between reflectance and the ratio of fruit to leaf was the best,among which the max coefficient reached 0.815,and the correlation between reflectance and the ratio of leaf was a little better than that between reflectance and the density of fruit.Then models of correlation analysis,linear regression,BP neural network and support vector regression were taken to explain the quantitative relationship between the hyperspectral reflectance and the ratio of fruit to leaf with the softwares of DPS and LIBSVM.It was feasible that all of the four models in 611-680 nm characteristic band are feasible to be used to predict,while the model accuracy of BP neural network and support vector regression was better than one-variable linear regression and multi-variable regression,and the accuracy of support vector regression model was the best.This study will be served as a reliable theoretical reference for the yield estimation of apples based on remote sensing data.