• <tr id="yyy80"></tr>
  • <sup id="yyy80"></sup>
  • <tfoot id="yyy80"><noscript id="yyy80"></noscript></tfoot>
  • 99热精品在线国产_美女午夜性视频免费_国产精品国产高清国产av_av欧美777_自拍偷自拍亚洲精品老妇_亚洲熟女精品中文字幕_www日本黄色视频网_国产精品野战在线观看 ?

    The continuous wavelet projections algorithm: A practical spectral-feature-mining approach for crop detection

    2022-10-12 09:30:32XiohuZhoJinghengZhngRuilingPuZifShuWeizhongHeKihuWu
    The Crop Journal 2022年5期

    Xiohu Zho ,Jingheng Zhng,* ,Ruiling Pu ,Zif Shu ,Weizhong He ,Kihu Wu,*

    a College of Artificial Intelligence,Hangzhou Dianzi University,Hangzhou 310018,Zhejiang,China

    b School of Geosciences,University of South Florida,Tampa,FL 33620,USA

    c Lishui Institute of Agriculture and Forestry Sciences,Lishui 323000,Zhejiang,China

    Keywords:Hyperspectral Crop parameters Crop phenotyping Continuous wavelet analysis Successive projections algorithm

    ABSTRACT Spectroscopy can be used for detecting crop characteristics.A goal of crop spectrum analysis is to extract effective features from spectral data for establishing a detection model.An ideal spectral feature set should have high sensitivity to target parameters but low information redundancy among features.However,feature-selection methods that satisfy both requirements are lacking.To address this issue,in this study,a novel method,the continuous wavelet projections algorithm (CWPA),was developed,which has advantages of both continuous wavelet analysis (CWA) and the successive projections algorithm (SPA) for generating optimal spectral feature set for crop detection.Three datasets collected for crop stress detection and retrieval of biochemical properties were used to validate the CWPA under both classification and regression scenarios.The CWPA generated a feature set with fewer features yet achieving accuracy comparable to or even higher than those of CWA and SPA.With only two to three features identified by CWPA,an overall accuracy of 98% in classifying tea plant stresses was achieved,and high coefficients of determination were obtained in retrieving corn leaf chlorophyll content (R2=0.8521)and equivalent water thickness (R2=0.9508).The mechanism of the CWPA ensures that the novel algorithm discovers the most sensitive features while retaining complementarity among features.Its ability to reduce the data dimension suggests its potential for crop monitoring and phenotyping with hyperspectral data.

    1.Introduction

    Spectroscopy can provide information about properties of objects by detecting their radiance over a spectral range,and is used to study interactions between matter and electromagnetic radiation.Given that spectroscopy can be used to analyze material characteristics,it has been exploited by physicists and chemists as an analytical tool since the early 20th century [1].Because the spectral characteristics of crops are influenced by their biophysical and biochemical characteristics,spectroscopy has become an effective tool for monitoring crop characteristics and for estimating and evaluating ecosystem parameters.Its applications include crop classification [2,3],retrieval of crop biochemical components [4-6],and detection of crop diseases and insects [7-9].Analysis of crop spectra aims to extract spectral features associated with critical characters such as species,and physiological and biochemical parameters [10,11].Currently,methods for processing spectral data comprise mainly spectral feature selection and extraction.

    Spectral feature selection and dimensionality reduction in spectral analysis are made necessary by the strong correlation and high redundancy between adjacent spectral bands [12,13].In recent years,several studies have used statistical methods to select spectral features,including t-test [14],KL divergence [15],Chernoff bound [16],receiver operating characteristic (ROC) curve [17],and Wilcoxon test [18].Yuan et al.[19] characterized the spectral response of tea plant anthracnose by combining spectral-ratio analysis and independent t-test to identify spectral bands that were sensitive to the disease.The method could eliminate differences in leaves and illumination circumstances and thereby increase the difference between healthy and diseased samples.

    Given the high correlation generally present among spectral bands and the inability of sensitivity analysis to eliminate crosscorrelation among features,many methods focusing on reducing information redundancy among spectral features have been proposed to achieve the optimization of the selected feature set.They include the branch and bound method[20],regression coefficients[21],maximum relevance minimum redundancy [22],uninformative-variable elimination [23],mutual information feature selection[24],genetic algorithms[25],and the successive projections algorithm(SPA)[26].Among them,the SPA is particularly ideal for optimizing spectral band features.Starting from one band,the SPA applies projection operations in vector space to gradually add new bands,mining spectral feature combinations with low collinearity to avoid information redundancy among bands[27,28].

    In contrast to spectral band selection,spectral feature extraction aims to excavate information hidden in a spectrum by applying a linear or nonlinear transformation of the original spectral bands.Common spectral feature extraction methods may include spectral derivatives[29],continuum removal analysis[3],and vegetation index [12],which are associated with various absorption and reflectance characteristics of crop biochemical properties and/or physiological status [30,31].Such approaches as principal component analysis [32],independent component analysis [33],and linear discriminant analysis [34] also attempt to project spectral data into a feature space to extend the scope and depth of the exploration of spectral features.For detecting crop disease and insects,Shahin et al.[35]and Sinha et al.[36]found that a combination of spectral bands selected based on principal component analysis produced the similar accuracy as using the full spectrum.

    The continuous wavelet analysis(CWA)is an advanced spectral analysis method that has been introduced for interpreting plant spectral signals.The CWA is able to decompose the spectral signal on a continuous scale and wavelength to capture not only spectralintensity but spectral shape information.The wavelet features at multiple scales allow simultaneous extraction not only of global but local spectral features,thereby achieving the deep mining of the spectral signals [37-39].In feature selection with CWA,a threshold criterion is usually applied to identify sensitive features.Cheng et al.[37] used the coefficient of determination (R2) as a standard to select the top 1% of the features as the preferred feature set.Using the statistic P-value=0.01 as a threshold,Zhang et al.[38] divided the wavelet coefficient matrix into several regions to select the feature at the center of the region as the preferred feature set.Tian et al.[39] used a machine learning algorithm to test wavelet features,and selected the top 5% of features as the preferred feature set based on the overall accuracy(OA).However,it should be noted that such a feature selection method based on sensitivity ranking is often plagued by information redundancy between features.

    In some tasks in crop phenotyping and monitoring,an ideal spectral feature set should have high sensitivity to target parameters but low information redundancy among features.Feature selection methods in spectral signal processing that can satisfy both requirements are lacking.Achieving deep mining of key information in spectrum and reducing redundant information at the same time would increase the practical capacity of spectral analysis.Motivated by these challenges,we pursued two research goals in this study:(1)based on both the CWA and the SPA,to develop a novel method,the continuous wavelet projections algorithm (CWPA),for generating optimal spectral feature set with sensitivity and complementarity for crop detection;and (2)to evaluate its performance in multiple crop detection and monitoring scenarios by comparing the CWPA with CWA and SPA feature-based models (hereafter abbreviated as respectively the CWPA,CWA,and SPA models,).

    2.Materials and methods

    2.1.Principle of CWA

    CWA uses a continuous wavelet transform to decompose a reflectance spectrum by continuous scaling and shifting to obtain a wavelet coefficient spectrum,and then either extracts key components (wavelet features) or constructs an energy feature vector[40].In comparison with commonly used spectral indices,the wavelet features reflect information mainly about the spectral shape,as opposed to just the intensity of spectral bands [37].A continuous wavelet transform decomposes the reflectance spectrum into wavelet coefficients at multiple scales.Matching the spectral curves with the scaled and shifted wavelet basis function generates sensitive wavelet features.Features at low scale correspond to high-frequency spectral variation(microscopic characteristics),whereas features at high scale correspond to low-frequency spectral variation (macroscopic characteristics).CWA uses a mother wavelet function to decompose the continuous wavelets of an original spectrum.A mother wavelet function is.

    where a is a scaling factor describing the width of the wavelet and b is a shifting factor describing the wavelet position.An original spectrum can be transformed into a set of power coefficients as follows:

    where f(λ )(λ=1,2,...,n,where n is t he number of wavelengths)is the spectrum,and the coefficients...,n) constitute a two-dimensional scalogram with one dimension representing the decomposition scale and the other the wavelength.Because the shape of the absorption bands of a plant spectrum approaches the shape of the quasi-Gaussian function (the Mexican Hat wavelet) [41],it was used as the mother wavelet in this study.To simplify the wavelet transformation analysis,the decomposition scale was restricted to 2i(i=0,1,2,...,10),which has been shown[37,42] sufficient for the selection of wavelet features.Studies[22,43]have shown that the number of features affects model accuracy.Accordingly,for the CWA model,it was decided to retain the top 1%,5%,and 10% of features based on sensitivity,and then uses eight neighborhood searches for independent feature regions and finally selects the extreme values of each region as the optimal wavelet feature set.

    2.2.Principle of SPA

    The SPA is a forward-selection method that uses projections in a vector space to minimize variable collinearity.SPA starts with a first wavelength k(0)and then incorporates a new one at each iteration until a specified number N of wavelengths is reached.If N and k(0)are not known a priori,all candidates are considered and combined with a regression or classification model to find optimum values of N and k(0).See Araujo et al.[27]for a detailed introduction to the algorithm.

    2.3.Development of CWPA

    The CWPA is a single-layer feedback feature-selection algorithm for generating optimal feature set from given spectra.The main steps are as follows:

    Step 1: Use CWA to decompose the original sample spectra(sample s,band b) and generate wavelet coefficient matrices (W1,W2,...Wn),which is a 3D wavelet feature matrix (sample s,band b,scale n).

    Step 2: Fuse the wavelet features of multiple decomposition scales by reshaping the wavelet feature matrix to a 2D matrix(sample s,band b × scale n) named WF.

    Step 3: Use SPA to generate b × n feature sets for WF under a given number of features.

    Step 4: Perform ANOVA (corresponding to the classification model) or correlation analysis (corresponding to the regression model) for all features in each feature set and calculate the mean P-value or R2,respectively.The feature set corresponding to the smallest P-value or the largest R2is then assigned as the optimal feature set.

    Step 5: Select a number of features in a given range (1-m) in turn and repeat steps 2-4 to obtain the optimal feature sets (F1,F2,...,Fm) with the given number of features.

    Step 6: Based on the optimal m feature sets,calibrate the classification or regression model under different numbers of features,and calculate the OA or R2for classification and regression models,respectively.By comparison of accuracies under several numbers of features,the feature set with the highest OA or R2is then eventually assigned as the optimal feature set.

    In contrast to a conventional feedback strategy based on model accuracy,the CWPA adopts the results of sensitivity analysis to filter the feature sets,thereby greatly reducing the computational complexity of the algorithm.The workflow of the CWPA is illustrated in Fig.1.

    The feature sets selected by the three algorithms (CWA,SPA,and CWPA) were fed into machine learning algorithms to build classification or regression models.The random forest (RF) and naive Bayes (NB) algorithms were used to establish classification models.As an integrated learning method,RF is advantageous for processing high-dimensional and unbalanced datasets,and thus generates more accurate results and handles overfitting more efficiently than the constituent models [44,45].The NB has a simple structure,provides accurate predictions,and has been used in various fields during the past few decades [46,47].For the regression model,multiple linear regression was adopted for model establishment [27,48].For the SPA and CWPA models,the number of features (NF) ranged from 1 to 100 for subsequent analysis.

    2.4.Evaluation of models

    For model evaluation,the OA were used for evaluating classification models,whereas R2and root mean square error (RMSE)were used for evaluating the regression models.Considering that the NF is also associated with the operating efficiency of the algorithms,the NF was also used in this study as an indicator of model quality (Fig.2).All statistical analysis and modeling were performed with MATLAB software (MathWorks Inc.,Natick,MA,USA).

    2.5.Experimental spectral datasets

    The CWPA was tested and its performance was compared with CWA and SPA using three datasets under both classification and regression scenarios(Fig.2).A spectral dataset of tea plant stresses(TEASPEC) and a corn leaf spectral dataset of corn leaf pigments(CORNSPEC) was collected to test the model performance in classification and regression scenarios,respectively.To further verify the robustness of the algorithm,a plant leaf spectral dataset of optical biochemical properties (LOPEX) containing 45 plants was used to test the model performance in a regression scenario.Each dataset was randomly divided into a calibration subset(60%)and a validation subset (40%) to allow independent model validation(Table 1).

    Table 1 Details of datasets used in this study.

    2.5.1.Spectral dataset of tea plant stresses (TEASPEC)

    TEASPEC is a leaf spectral dataset that includes three types of tea plant stress: tea green leafhopper (GL),anthracnose (AH),and sunburn (BR).Because these common stresses are easily confused in the tea garden,this dataset was collected by our research team for selecting spectral features and developing detection models.The experiment was conducted at the experimental base of the Tea Research Institute,Chinese Academy of Agricultural Sciences,Hangzhou,China.The hyperspectral data were measured using a Cubert UHD185 frame hyperspectral imager (CCD) (http://cubertgmbh.com/) placed in a dark box under two 50 W halogen lamps(ASD Pro Lamp,ASD Inc.,Boulder,CO,USA).The hyperspectral image has 126 equally distributed bands covering a spectral range of 450-950 nm at a spectral resolution of 4 nm.Hyperspectral reflectance was obtained by calibrating the image with a reference PTFE whiteboard and blackboard (https://sphereoptics.de/).The dataset included 50 GL hyperspectral images,30 AH hyperspectral images,and 50 BR hyperspectral images.The region of interest(ROI)was selected from the lesion center,and the mean of all pixels in the ROI was used as the spectral datum for the sample.

    2.5.2.Corn leaf spectral dataset of leaf pigments (CORNSPEC)

    CORNSPEC includes 213 corn leaf spectra and the corresponding pigment contents,which can be used to identify spectral features and models for retrieving leaf chlorophyll content.The CORNSPEC dataset was collected by our research team at Beijing Xiaotangshan Precision Agriculture Experimental Base,Beijing,China.The leaf spectra were measured with a FieldSpec UV/VNIR spectrometer(ASD),which covers a full spectral range of 400-2500 nm.The spectrometer was coupled with an ASD Leaf Clip to permit leaf spectral measurement.Ten readings were recorded and averaged to obtain a spectral measurement for each leaf.The leaf spectral reflectance was derived by calibrating the spectral radiance with the spectrum of a white Spectralon reference panel (99% reflectance).Immediately after spectral measurement,the measured portion of the leaf was excised and placed in a tube containing 10 mL dimethyl sulfoxide.The pigments were extracted by placing the tube in a 65°C water tub in a dark room for>5 h.Chlorophyll a(Chl a)and chlorophyll b(Chl b)were extracted,and their concentrations were computed following Lichtenthaler et al [49]:

    where CAand CBare the respective concentrations of Chl a and Chl b in mg L-1and OD647and OD663are the optical densities at the given wavelengths.Hereafter,the concentration of Chl a+Chl b is abbreviated as Chl.

    2.5.3.Plant leaf spectral dataset of optical biochemical properties(LOPEX)

    The LOPEX dataset was collected by the Joint Research Centre in Italy and used to characterize relationships between foliar chemical constituents and spectral signals [50].The dataset has been used in the remote-sensing community for feature selection,model calibration,and validation [51,52].The spectral data (i.e.,330 spectral reflectance measurements in the spectral range of 400-2500 nm) and corresponding equivalent water thickness(EWT)from the dataset were used to establish a retrieving model.

    Fig.1.Workflow of the continuous wavelet projection algorithm (CWPA).W1,W2 and Wn indicate wavelet features of differing decomposition scales.

    Fig.2.A schematic illustration of data analysis and model evaluation.

    3.Rsesults

    3.1.Selection of spectral features

    For TEASPEC,the spectral curves of GL,AH,and BR samples overlapped (Fig.S1).The averaged coefficients of variation (CV,the standard deviation/mean per band,averaged over bands) of the three classes were 0.15,0.19,and 0.16,respectively.The mean CV of the CORNSPEC dataset was 0.13,whereas the spectral variation of the LOPEX dataset was relatively large (CV=0.29,Fig.S2).

    ANOVA fitted to the decomposed wavelet features among the stress classes in TEASPEC revealed that a high proportion of the wavelet features were capable of differentiating stresses even with a strict criterion(P-value<0.001,Fig.3).In the CORNSPEC dataset,most sensitive features were distributed in 400-900 nm (Fig.4A).In the LOPEX dataset,most features over all bands responded well to the EWT (R2>0.7,Fig.4B).For feature selection of CWA,under differing sensitivity thresholds,differing number of wavelet features were obtained.For the TEASPEC dataset,the most sensitive wavelet features in separate feature regions were selected(Fig.3),and the same wavelet features were retained under the 1% and 5% thresholds (scale: 8;central: 930 nm;hereafter the wavelet feature is described as S8-B930),and an additional feature under the 10% threshold (S9-B526,Table S1).For CORNSPEC,that the sensitive areas were relatively concentrated(Fig.4A),resulting in similar selected wavelet features (such as at S3-B511,S7-B719,and S6-B805 nm) under three different thresholds (Table S2).Unlike the results of the first two datasets,the NF of LOPEX differed under three thresholds (Table S3).Under the 10% threshold,five feature regions adjacently positioned on the left side of the scalogram were selected (Fig.4B).

    Compared to the CWA model,owning to the mechanism of optimizing the combination of features by successive projection,the CWPA model identified small numbers of features for the TEASPEC(NF=2),CORNSPEC(NF=2),and LOPEX(NF=3)datasets.The position of the first feature selected by the CWPA model was close to those of the features selected by CWA under the threshold of 1%(Tables 2,S1-S3),including S7-B941 and S8-B930 for TEASPEC,S4-B560 and S3-B559 for CORNSPEC,and S7-B1162 and S6-B1158 for LOPEX.However,the subsequent features selected by the CWPA model differed from those of the CWA model.Most wavelet features selected by CWPA were not located in the most sensitive regions identified by CWA (Figs.3 and 4).

    Fig.3.Sensitivity scalogram and selected feature regions under CWA and CWPA for TEASPEC dataset (classification scenario).The P-value is used as the sensitivity index;10%,5%,and 1% indicate the retention ratio of the top most sensitive features.

    Fig.4.Sensitivity scalogram and selected feature regions under CWA and CWPA for regression scenarios(A)CORNSPEC dataset and(B)LOPEX dataset.The R2 is used as the sensitivity index;10%,5%,and 1% indicate the retention ratios of the top most sensitive features.

    Fig.5 shows the variation in accuracy for SPA and CWPA within the NF range of[1,100].The OA of SPA in the classification scenario increased with NF in general,and the accuracy tended to be stable when the NF was large.In the regression scenario,the R2of SPA increased at the beginning,and then tended to be stable (LOPEX)or decline (CORNSPEC).In contrast,the accuracy variation curve of the CWPA model exhibited a consistent pattern across datasets.The accuracy curve showed a sharp increase at the very beginning(usually two or three features),and then the accuracy decreased sharply,followed by a slow rise (TEASPEC) or a slight rebound across the slow decline in accuracy (CORNSPEC and LOPEX).Although the accuracy curve of the CWPA model showed an irregular variation pattern with the increase in NF,the maximum accuracy was still found at the very beginning of the curve.In comparison with the optimal SPA model,the optimal CWPA model reduced the NF from 67(RF)and 69(NB)to 2(both RF and NB)for the TEASPEC dataset.A similar pattern was observed in regression scenarios.With the CORNSPEC and LOPEX datasets,the optimal SPA model selected 16 and 67 features,whereas the optimal CWPA model selected only 2 and 3 features.

    Fig.5.Model accuracy varying with number of features for SPA and CWPA.The dotted line indicates the number of features corresponding to the maximum accuracy in the test set.

    3.2.Modeling accuracy

    The CWPA model was more accurate than the CWA and SPA models with both classifiers in TEASPEC (Table 3).The accuracies of the CWPA model reached 98.08% (RF) and 100% (NB),whereas the accuracies of the CWA model using two wavelet features were only 82.70% (RF) and 73.08% (NB).Although the SPA model used a large number of spectral features,their accuracies were still lower than the CWPA model (94.23% for RF and 78.85% for NB).In the regression scenarios,even though it found the smallest NF (2 or 3 features),the CWPA model produced similar accuracy to the

    Table 2 Selected wavelet feature parameters of CWPA.

    WFT,WFC,and WFLare selected wavelet features identified by the CWPA for TEASPEC,CORNSPEC,and LOPEX,respectively.CWA and SPA models (Table 3).With the CORNSPEC dataset,the generally high accuracy suggests that the chlorophyll of corn leaves could be effectively retrieved based on any of the models.The accuracies of the three models were generally satisfactory for retrieving EWT with the LOPEX dataset.Overall,even with very small NF,the CWPA model produced equal or even higher accuracy in comparison with the CWA and SPA models under both classification and regression scenarios.

    Table 3 Results created by three algorithms.

    4.Discussion

    The CWPA model generated an ideal and small number of features for crop detection under classification and regression scenarios.This superiority stems mainly from the core idea of the CWPA model,which is to maximize the sensitivity of features,meanwhile ensuring complementarity among them.In the CWPA model,the feature sensitivity-ranking procedure that was proposed for generating the feature chain ensures that the topranked features in the chain have both high sensitivity and strong complementarity.Accordingly,the head of the feature chain ensures a small NF with excellent combinations.For all three datasets,the first wavelet feature identified by the CWPA model was the most sensitive of all the SPA features (Fig.S3).This advantage arises from the essence of wavelet analysis,which transfers the original spectral information to the wavelet feature space and allows deep mining of the spectral features for crop detection.Because the CWPA model adopts a successive projection strategy in generating the wavelet feature chain,the selected feature set can include not only sensitive features,but also features that are complementary with those sensitive features,thus increasing the information richness.

    In the TEASPEC dataset,the first feature,WFT01 (S7-B941),identified by the CWPA reflects mainly the destruction of the cellular structure of the leaf and the decrease in water content caused by tea stresses [31,53].The high sensitivity of WFT01 to the tea stresses forms a solid basis for the CWPA feature set.The next identified feature,WFT02(S6-B632),reflects the damage to chloroplast structure [53].Even though the WFT02 is out of the top 10%sensitivity scalogram,it may carry important information complementary to the WFT01,a notion supported by a low correlation between them (R2=6.004 × 10-10).In contrast,the two wavelet features selected by CWA have high information redundancy(R2=0.9543),which results in lower accuracy.The SPA model selected 67(RF)and 69(NB)features,with the feature sets including bands over 450-650 nm and some bands in the near-infrared region.The inability of original spectral bands to characterize some subtle spectral variations may account for the lower accuracy than CWPA.A lack of highly sensitive features that are able to dominate the feature set may explain why the accuracy of the SPA model varied smoothly with increasing NF.Too many features also lead to inefficient model operations.

    The high sensitivity and strong complementarity of features identified by the CWPA model were also evident in the regression scenarios.In the LOPEX dataset,the three wavelet features selected by the CWPA model were located at 1162,1313,and 1282 nm,which are all important regions of leaf water absorption [54].The first feature WFL01 showed high sensitivity (R2=0.9172) to the parameter but very low correlation with the other features.Cheng et al.[42]showed that wavelet features outperformed spectral bands and vegetation indices in retrieving leaf water content.However,severe information redundancy was found among features selected by CWA (Fig.S4),with R2>0.99 between features 1-5 and R2>0.86 between features 6-10.Similarly,for the CORNSPEC dataset,the first feature WFC01 selected by the CWPA was very sensitive to Chl (R2=0.7928) and was located at the green peak of the spectrum (560 nm),which is indeed an important reflection spectral region of Chl.The very low correlation between WFC01 and WFC02 (R2=1.2803 × 10-10) confirmed the strong complementarity between them.The same defects of low sensitivity and highly correlated features were found in the SPA and CWA models for the CORNSPEC dataset.

    The CWPA used in spectral deep mining and informationdimension reduction has shown great potential for modeling applications based on hyperspectral data.The essence of the CWPA algorithm is to examine the sensitivity of spectral features to specific datasets and optimize feature combinations.The strategy of taking model accuracy to feed back into feature combination further strengthens the adaptability of CWPA.The CWPA has been tested only in typical crop phenotype detection indicators at leaf and canopy level.Further testing in other scenarios,such as in detecting nitrogen content [55],nitrogen use efficiency [56],water use efficiency[57],canopy coverage[58],canopy height[59]and plant density at emergence [60],is needed.The CWPA model greatly alleviates the computational complexity of spectral data analysis and was calculated within one second based on validation dataset(Intel Core i7-6700HQ,RAM 8 GB),suggesting relatively high efficiency of computation.CWPA is an efficient data-analysis method for large-scale crop monitoring by remote sensing (with airborne and satellite-borne spectral sensors) for specific scenarios and has great application potential in crop breeding and cultivation.Further research would investigate the compatibility of the proposed algorithm at diverse spectral resolutions and measure its performance using real-world data.Combination of CWPA features with deep-learning approaches may further improve the performance of models in crop monitoring and phenotyping.

    5.Conclusions

    A novel method,the continuous wavelet projections algorithm(CWPA) is described for identifying sensitive feature set for crop detection.By performing deep mining of spectral information and optimization of feature combinations,the CWPA generates fewer complementary features than other algorithms while achieving greater accuracy in correlating crop status with bioparameters.Facilitated by continuous wavelet analysis,the first feature identified by the CWPA was highly sensitive in both classification and regression scenarios.Under the successive projection procedure,the features sequentially selected by CWPA carry information supplementing that of the first feature.It thereby conquers the common problem of feature-selection methods: the lack of spectral uniqueness and information redundancy among features,and ensures relatively high accuracy with fewer features.The classification accuracy of tea plant stresses reached 98.08%by application of the CWPA-derived two features from the TEASPEC dataset.The CWPA used two features to retrieve corn chlorophyll in CORNSPEC (R2=0.8521) and more accurately extracted the equivalent water thickness from LOPEX(R2=0.9508)using three selected features.Overall,the CWPA outperformed the CWA and SPA in extracting and identifying effective features in both classification and regression scenarios.

    CRediT authorship contribution statement

    Xiaohu Zhao:Writing-original draft,Investigation,Validation,Data curation.Jingcheng Zhang:Conceptualization,Funding acquisition,Writing -review &editing.Ruiliang Pu:Writing -review &editing.Zaifa Shu:Investigation,Validation,Data curation.Weizhong He:Investigation,Validation,Data curation.Kaihua Wu:Conceptualization,Funding acquisition.

    Declaration of competing interest

    The authors declare that they have no known competing financial interests or personal relationships that could have appeared to influence the work reported in this paper.

    Acknowledgments

    This work was supported by the National Natural Science Foundation of China(42071420),the Major Special Project for 2025 Scientific,Technological Innovation (Major Scientific and Technological Task Project in Ningbo City) (2021Z048),and the National Key Research and Development Program of China(2019YFE0125300).

    Appendix A.Supplementary data

    Supplementary data for this article can be found online at https://doi.org/10.1016/j.cj.2022.04.018.

    又大又黄又爽视频免费| 精品人妻偷拍中文字幕| 国产极品天堂在线| av又黄又爽大尺度在线免费看| 久久97久久精品| 国产中年淑女户外野战色| 中文字幕人妻熟人妻熟丝袜美| 国产精品久久久久久久久免| a级毛片免费高清观看在线播放| 一级毛片黄色毛片免费观看视频| 伦精品一区二区三区| 亚洲丝袜综合中文字幕| 日韩视频在线欧美| 国产91av在线免费观看| 亚洲va在线va天堂va国产| 久久影院123| 青春草亚洲视频在线观看| 超碰av人人做人人爽久久| 精品少妇久久久久久888优播| 亚洲,一卡二卡三卡| 视频中文字幕在线观看| 国产成人aa在线观看| 乱码一卡2卡4卡精品| 美女高潮的动态| 日日啪夜夜爽| 一级毛片黄色毛片免费观看视频| 国产一区亚洲一区在线观看| 色婷婷久久久亚洲欧美| 成人一区二区视频在线观看| 精品熟女少妇av免费看| 国产男人的电影天堂91| 亚洲欧美中文字幕日韩二区| 美女中出高潮动态图| 老司机影院毛片| 哪个播放器可以免费观看大片| 成人影院久久| 亚洲四区av| 欧美极品一区二区三区四区| 大香蕉久久网| 国产 一区精品| 在线观看国产h片| 春色校园在线视频观看| 国产淫语在线视频| 亚洲国产高清在线一区二区三| 九九久久精品国产亚洲av麻豆| 91在线精品国自产拍蜜月| 韩国av在线不卡| 在线观看免费视频网站a站| 夜夜看夜夜爽夜夜摸| 黄片wwwwww| 男女国产视频网站| 国产精品嫩草影院av在线观看| 丝瓜视频免费看黄片| 欧美人与善性xxx| 久久99精品国语久久久| 人人妻人人添人人爽欧美一区卜 | 亚洲美女搞黄在线观看| .国产精品久久| 最黄视频免费看| 久久久久久久精品精品| 蜜桃久久精品国产亚洲av| 免费大片黄手机在线观看| 少妇人妻一区二区三区视频| 国产成人a∨麻豆精品| 中文字幕制服av| 国产一区二区三区综合在线观看 | 精品99又大又爽又粗少妇毛片| 91狼人影院| 欧美亚洲 丝袜 人妻 在线| 伦理电影免费视频| 男人狂女人下面高潮的视频| 人人妻人人爽人人添夜夜欢视频 | 日韩精品有码人妻一区| 亚洲精品久久午夜乱码| 久久精品国产亚洲av天美| 成人免费观看视频高清| 一本—道久久a久久精品蜜桃钙片| 国模一区二区三区四区视频| 欧美97在线视频| 边亲边吃奶的免费视频| 亚洲国产精品一区三区| 国产精品国产三级国产专区5o| 另类亚洲欧美激情| .国产精品久久| 国产伦在线观看视频一区| 一级毛片我不卡| 91精品伊人久久大香线蕉| 日韩欧美精品免费久久| 亚洲不卡免费看| 亚洲欧美日韩东京热| 精华霜和精华液先用哪个| 久久99热这里只频精品6学生| 亚洲av综合色区一区| 亚洲最大成人中文| 亚洲综合色惰| 久久久色成人| 91精品一卡2卡3卡4卡| 国产精品国产三级专区第一集| 激情五月婷婷亚洲| 国产视频内射| 九草在线视频观看| 97超视频在线观看视频| 日韩一区二区三区影片| 国产欧美亚洲国产| 18禁裸乳无遮挡动漫免费视频| 日本一二三区视频观看| av视频免费观看在线观看| 亚洲av欧美aⅴ国产| 国产精品欧美亚洲77777| 在线免费观看不下载黄p国产| 在线观看免费视频网站a站| 制服丝袜香蕉在线| 狂野欧美激情性xxxx在线观看| 少妇熟女欧美另类| 免费大片黄手机在线观看| 精品国产三级普通话版| 最近手机中文字幕大全| 在线播放无遮挡| 久久99蜜桃精品久久| 天堂8中文在线网| 国产精品久久久久久精品古装| 国产探花极品一区二区| 菩萨蛮人人尽说江南好唐韦庄| videossex国产| 在线观看人妻少妇| 久久国产精品大桥未久av | 高清不卡的av网站| 国产成人精品婷婷| 精品久久久久久久久av| 美女主播在线视频| 只有这里有精品99| 欧美区成人在线视频| 成年美女黄网站色视频大全免费 | 老司机影院成人| 亚洲精品成人av观看孕妇| 欧美成人精品欧美一级黄| 国产在线一区二区三区精| 色5月婷婷丁香| 国产精品偷伦视频观看了| 日本av手机在线免费观看| 亚洲精品456在线播放app| 黄色配什么色好看| 久久久国产一区二区| 简卡轻食公司| 男人和女人高潮做爰伦理| 极品教师在线视频| 欧美区成人在线视频| 日本猛色少妇xxxxx猛交久久| 狂野欧美白嫩少妇大欣赏| 欧美激情国产日韩精品一区| 国产成人免费观看mmmm| 国产精品一区www在线观看| 国产成人午夜福利电影在线观看| 婷婷色综合大香蕉| 日本欧美国产在线视频| 在线播放无遮挡| 最黄视频免费看| 午夜老司机福利剧场| 在线观看一区二区三区激情| 在线观看免费日韩欧美大片 | av一本久久久久| 久久精品久久久久久久性| 亚洲中文av在线| 色婷婷av一区二区三区视频| 五月天丁香电影| av专区在线播放| 亚洲欧美精品专区久久| 欧美日韩国产mv在线观看视频 | 舔av片在线| 纯流量卡能插随身wifi吗| 一级毛片黄色毛片免费观看视频| av天堂久久9| 91字幕亚洲| 中文字幕另类日韩欧美亚洲嫩草| 国产精品三级大全| 老熟女久久久| 亚洲精品久久久久久婷婷小说| xxxhd国产人妻xxx| 国产在线观看jvid| 国产精品一国产av| 女性被躁到高潮视频| kizo精华| 国产精品亚洲av一区麻豆| 9热在线视频观看99| 亚洲男人天堂网一区| 在线观看免费午夜福利视频| 美女国产高潮福利片在线看| 男女午夜视频在线观看| 热99久久久久精品小说推荐| 99国产精品一区二区三区| 亚洲精品国产av成人精品| 一边摸一边抽搐一进一出视频| 欧美国产精品va在线观看不卡| 超碰成人久久| 久久精品久久久久久久性| 亚洲av综合色区一区| 另类亚洲欧美激情| 国产免费福利视频在线观看| 日本wwww免费看| 国产av国产精品国产| 少妇 在线观看| 国产免费又黄又爽又色| 性高湖久久久久久久久免费观看| 国产精品成人在线| 国产精品 欧美亚洲| 妹子高潮喷水视频| 亚洲欧美精品自产自拍| 日日爽夜夜爽网站| 另类亚洲欧美激情| 狂野欧美激情性xxxx| 久久久久国产精品人妻一区二区| 午夜福利在线免费观看网站| 国产高清国产精品国产三级| 久久久国产欧美日韩av| 国产黄频视频在线观看| 国语对白做爰xxxⅹ性视频网站| 国产午夜精品一二区理论片| 色婷婷av一区二区三区视频| 国产精品国产三级国产专区5o| 色94色欧美一区二区| 日韩av免费高清视频| 亚洲精品中文字幕在线视频| 男女免费视频国产| 免费一级毛片在线播放高清视频 | 欧美国产精品va在线观看不卡| 亚洲男人天堂网一区| 国产97色在线日韩免费| 婷婷色av中文字幕| 狠狠婷婷综合久久久久久88av| 国产片内射在线| 韩国精品一区二区三区| 视频在线观看一区二区三区| 午夜福利影视在线免费观看| 欧美激情极品国产一区二区三区| 午夜久久久在线观看| 成年av动漫网址| 男女下面插进去视频免费观看| 青青草视频在线视频观看| av在线老鸭窝| bbb黄色大片| 中文乱码字字幕精品一区二区三区| 99re6热这里在线精品视频| 首页视频小说图片口味搜索 | 日本wwww免费看| 久久国产精品影院| 国产有黄有色有爽视频| 精品一区二区三区av网在线观看 | 欧美人与性动交α欧美软件| 99re6热这里在线精品视频| 久久久久国产一级毛片高清牌| 国产精品久久久久久精品古装| 国产伦人伦偷精品视频| 国产日韩一区二区三区精品不卡| 少妇 在线观看| 热99久久久久精品小说推荐| 高清欧美精品videossex| 国产亚洲av高清不卡| 涩涩av久久男人的天堂| www.av在线官网国产| 亚洲精品日韩在线中文字幕| 国产成人一区二区三区免费视频网站 | 免费女性裸体啪啪无遮挡网站| 国产麻豆69| 真人做人爱边吃奶动态| 国产精品久久久久久精品古装| 黄片小视频在线播放| 男女边摸边吃奶| av一本久久久久| 国产亚洲一区二区精品| 51午夜福利影视在线观看| 天堂8中文在线网| 欧美在线黄色| 黄色片一级片一级黄色片| 欧美日韩精品网址| 久久人妻福利社区极品人妻图片 | 黑丝袜美女国产一区| 91老司机精品| 久久久精品免费免费高清| 欧美+亚洲+日韩+国产| 最新的欧美精品一区二区| 美国免费a级毛片| 精品人妻熟女毛片av久久网站| 日本猛色少妇xxxxx猛交久久| 亚洲少妇的诱惑av| 久久这里只有精品19| 麻豆乱淫一区二区| 男女免费视频国产| 中文字幕精品免费在线观看视频| 十八禁网站网址无遮挡| 亚洲国产欧美在线一区| 精品人妻一区二区三区麻豆| 国产一区二区在线观看av| 黄网站色视频无遮挡免费观看| 日本a在线网址| 高清不卡的av网站| 成年人免费黄色播放视频| 欧美少妇被猛烈插入视频| 国产日韩欧美亚洲二区| 一区二区av电影网| 国产亚洲一区二区精品| 国产黄色免费在线视频| 国产老妇伦熟女老妇高清| 久久女婷五月综合色啪小说| 久久99热这里只频精品6学生| 国产主播在线观看一区二区 | 日韩欧美一区视频在线观看| 一级片'在线观看视频| 人人妻,人人澡人人爽秒播 | 一区二区三区激情视频| 亚洲av欧美aⅴ国产| 中文字幕精品免费在线观看视频| 国产高清不卡午夜福利| 热re99久久国产66热| 亚洲男人天堂网一区| 欧美国产精品一级二级三级| 日韩视频在线欧美| 中文字幕色久视频| 黑人巨大精品欧美一区二区蜜桃| 国产欧美日韩综合在线一区二区| 另类精品久久| 十八禁人妻一区二区| av国产精品久久久久影院| 国产成人系列免费观看| av片东京热男人的天堂| 91字幕亚洲| 欧美成狂野欧美在线观看| 一级a爱视频在线免费观看| 免费观看人在逋| 亚洲成人手机| 国产亚洲欧美在线一区二区| 亚洲精品av麻豆狂野| 亚洲视频免费观看视频| 欧美中文综合在线视频| 精品一区二区三卡| 成人三级做爰电影| 亚洲欧美色中文字幕在线| 黄色片一级片一级黄色片| 亚洲国产欧美日韩在线播放| 欧美日韩视频精品一区| 黄色 视频免费看| 欧美日韩成人在线一区二区| 又紧又爽又黄一区二区| 又大又爽又粗| 一级a爱视频在线免费观看| 国产伦人伦偷精品视频| 老司机亚洲免费影院| 波野结衣二区三区在线| 精品少妇久久久久久888优播| 亚洲成人国产一区在线观看 | 在线天堂中文资源库| 青春草亚洲视频在线观看| 两个人免费观看高清视频| 中文精品一卡2卡3卡4更新| 亚洲av在线观看美女高潮| 日本色播在线视频| 纯流量卡能插随身wifi吗| 日本av免费视频播放| 久久国产精品影院| 汤姆久久久久久久影院中文字幕| 亚洲精品第二区| av网站免费在线观看视频| 欧美性长视频在线观看| 黄频高清免费视频| 欧美国产精品va在线观看不卡| 精品久久久久久久毛片微露脸 | 亚洲中文日韩欧美视频| 美女高潮到喷水免费观看| 国产成人av激情在线播放| 91麻豆精品激情在线观看国产 | 我的亚洲天堂| 久久精品国产亚洲av涩爱| 欧美久久黑人一区二区| 久久久欧美国产精品| 各种免费的搞黄视频| av在线app专区| 亚洲av成人精品一二三区| 狠狠精品人妻久久久久久综合| 99香蕉大伊视频| 亚洲熟女毛片儿| av网站免费在线观看视频| 五月天丁香电影| 色网站视频免费| 王馨瑶露胸无遮挡在线观看| 老司机影院毛片| 国产免费一区二区三区四区乱码| 天天添夜夜摸| 无限看片的www在线观看| 少妇裸体淫交视频免费看高清 | 中文字幕高清在线视频| 久久精品人人爽人人爽视色| 免费一级毛片在线播放高清视频 | 亚洲欧美日韩高清在线视频 | 亚洲伊人色综图| 汤姆久久久久久久影院中文字幕| 丰满饥渴人妻一区二区三| 一区二区三区精品91| 黄色视频在线播放观看不卡| cao死你这个sao货| 老司机在亚洲福利影院| 欧美精品人与动牲交sv欧美| 秋霞在线观看毛片| 欧美亚洲 丝袜 人妻 在线| 激情视频va一区二区三区| 91国产中文字幕| av不卡在线播放| 亚洲久久久国产精品| 亚洲国产av新网站| 免费在线观看日本一区| 成人国产一区最新在线观看 | 午夜激情av网站| 欧美日韩亚洲综合一区二区三区_| 91精品伊人久久大香线蕉| 国产在线免费精品| av国产久精品久网站免费入址| 最近中文字幕2019免费版| 一本大道久久a久久精品| 亚洲国产精品一区二区三区在线| 国产精品久久久久久精品电影小说| 亚洲欧美精品自产自拍| 黄色视频在线播放观看不卡| 只有这里有精品99| 国产欧美日韩一区二区三区在线| 国产97色在线日韩免费| 久久狼人影院| 中国国产av一级| 高清视频免费观看一区二区| 校园人妻丝袜中文字幕| 夫妻性生交免费视频一级片| 国产老妇伦熟女老妇高清| 亚洲国产欧美一区二区综合| 亚洲精品在线美女| 日本午夜av视频| 热re99久久精品国产66热6| 99精品久久久久人妻精品| www.自偷自拍.com| e午夜精品久久久久久久| 天天躁狠狠躁夜夜躁狠狠躁| 国产男女内射视频| 亚洲精品一二三| 国产片内射在线| 1024香蕉在线观看| xxxhd国产人妻xxx| 最近中文字幕2019免费版| 国产欧美日韩精品亚洲av| 日本av手机在线免费观看| 免费看不卡的av| 久久久国产一区二区| 欧美黑人精品巨大| 国产视频首页在线观看| 亚洲视频免费观看视频| 久久青草综合色| videosex国产| 超碰成人久久| 久久精品成人免费网站| 国产日韩欧美视频二区| 婷婷色综合大香蕉| 亚洲成人免费av在线播放| 一边亲一边摸免费视频| 一本一本久久a久久精品综合妖精| 啦啦啦视频在线资源免费观看| 女性生殖器流出的白浆| 日本欧美国产在线视频| 亚洲精品日韩在线中文字幕| 欧美日韩黄片免| 在线观看免费午夜福利视频| 亚洲专区中文字幕在线| 在线av久久热| 久久精品熟女亚洲av麻豆精品| svipshipincom国产片| 久久av网站| 免费在线观看日本一区| 国产有黄有色有爽视频| 少妇 在线观看| 观看av在线不卡| videos熟女内射| 2018国产大陆天天弄谢| 免费在线观看完整版高清| 国产免费视频播放在线视频| 精品免费久久久久久久清纯 | 欧美日韩一级在线毛片| 十八禁高潮呻吟视频| 777米奇影视久久| 午夜免费观看性视频| 久久人人爽av亚洲精品天堂| 在线天堂中文资源库| 亚洲国产最新在线播放| 伊人亚洲综合成人网| 免费看av在线观看网站| 七月丁香在线播放| 91麻豆精品激情在线观看国产 | 18禁观看日本| 大码成人一级视频| 欧美激情 高清一区二区三区| 久久99热这里只频精品6学生| 国产高清不卡午夜福利| 777久久人妻少妇嫩草av网站| 只有这里有精品99| 日本五十路高清| 2018国产大陆天天弄谢| 91精品三级在线观看| 一区二区三区乱码不卡18| 美女大奶头黄色视频| 免费看av在线观看网站| 一级毛片 在线播放| 精品一区二区三卡| 巨乳人妻的诱惑在线观看| 在线观看国产h片| 五月开心婷婷网| 久久精品亚洲熟妇少妇任你| 欧美亚洲 丝袜 人妻 在线| 丝瓜视频免费看黄片| 熟女少妇亚洲综合色aaa.| 欧美黑人欧美精品刺激| 91九色精品人成在线观看| 伊人亚洲综合成人网| 丝袜在线中文字幕| 桃花免费在线播放| 亚洲人成网站在线观看播放| 国产1区2区3区精品| 黄频高清免费视频| 建设人人有责人人尽责人人享有的| 视频区图区小说| 久久狼人影院| 亚洲精品久久午夜乱码| 亚洲七黄色美女视频| 婷婷色av中文字幕| 国产精品亚洲av一区麻豆| 成年动漫av网址| 夫妻午夜视频| 国产又爽黄色视频| 少妇被粗大的猛进出69影院| 爱豆传媒免费全集在线观看| 巨乳人妻的诱惑在线观看| 自拍欧美九色日韩亚洲蝌蚪91| 女人高潮潮喷娇喘18禁视频| bbb黄色大片| 超碰97精品在线观看| 这个男人来自地球电影免费观看| 久热爱精品视频在线9| 老鸭窝网址在线观看| 高清欧美精品videossex| 最近最新中文字幕大全免费视频 | 欧美在线黄色| 久久久久精品国产欧美久久久 | 成在线人永久免费视频| 亚洲精品一卡2卡三卡4卡5卡 | 少妇的丰满在线观看| 国产91精品成人一区二区三区 | 欧美日韩视频高清一区二区三区二| 90打野战视频偷拍视频| 一二三四在线观看免费中文在| 又大又黄又爽视频免费| 人妻 亚洲 视频| 久久青草综合色| 亚洲国产精品一区二区三区在线| 亚洲国产欧美日韩在线播放| 国产亚洲欧美精品永久| 19禁男女啪啪无遮挡网站| 老司机影院成人| 成人黄色视频免费在线看| 欧美精品高潮呻吟av久久| 午夜免费鲁丝| 免费女性裸体啪啪无遮挡网站| 久久久精品区二区三区| 18禁裸乳无遮挡动漫免费视频| 久久精品熟女亚洲av麻豆精品| 亚洲国产中文字幕在线视频| 亚洲伊人色综图| 性少妇av在线| 精品人妻一区二区三区麻豆| 91麻豆av在线| 搡老岳熟女国产| 免费久久久久久久精品成人欧美视频| 午夜福利乱码中文字幕| 国产精品三级大全| 在线观看免费视频网站a站| 日本wwww免费看| 精品人妻1区二区| 免费不卡黄色视频| 亚洲国产精品国产精品| 国产国语露脸激情在线看| 中文字幕制服av| 99香蕉大伊视频| 女人被躁到高潮嗷嗷叫费观| 在线观看免费日韩欧美大片| 9热在线视频观看99| 久久天躁狠狠躁夜夜2o2o | 久久九九热精品免费| 18禁观看日本| 99久久精品国产亚洲精品| 国产日韩欧美亚洲二区| cao死你这个sao货| 国产亚洲欧美精品永久| 少妇精品久久久久久久| 最新在线观看一区二区三区 | 国产xxxxx性猛交| 日韩av免费高清视频| 免费看不卡的av| 高潮久久久久久久久久久不卡| 九草在线视频观看| 亚洲国产欧美网| 一级毛片黄色毛片免费观看视频| 天天躁日日躁夜夜躁夜夜| 一级毛片黄色毛片免费观看视频| 亚洲精品日本国产第一区| 欧美精品一区二区大全| 侵犯人妻中文字幕一二三四区| 亚洲精品自拍成人| 久久精品亚洲熟妇少妇任你| 亚洲av欧美aⅴ国产| 国产精品久久久久成人av| 欧美日韩综合久久久久久| 好男人视频免费观看在线| 性色av乱码一区二区三区2| 婷婷色av中文字幕|