Ma Hao, Ji Hai-yan, Won Suk-Lee
Guang Pu Xue Yu Guang Pu Fen Xi. 2016 Jul;36(7):2344-50.
In this paper we discussed the application of spectral and textural features in identifying early stage of the citrus greening disease (Huanglongbing or HLB). A total of 176 hyperspectral images of citrus leaves (60 for healthy, 60 for HLB-infected and 56 for zinc-deficient) were captured by using a near-ground hyperspectral imaging system. Regions of interest (ROI) were extracted manually from the part of pathological changes in the images to calculate the average reflectance spectra of each sample as the sample spectra, ranging from 396 to 1 010 nm. The dimensions of the sample spectra were reduced with the algorithms of principal component analysis (PCA) and successive projection analysis (SPA). Classification models were built with the original spectra and candidate variables, the first four PCs selected by PCA and a set of wavelengths (630.5, 679.4, 749.4 and 899.9 nm) selected by SPA. The results based on a classifier of least square-support vector machine (LS-SVM) showed that the classification models built with the candidate variables selected by PCA and SPA had a better performance, achieving 89.7% and 87.4% in terms of average accuracy. In addition, two groups of textural features, extracted from gray images of the four selected wavelengths based on gray-level histogram and gray-level co-occurrence matrix (GLCM), were also used for the classifier. The first ten features ranked by SPA promoted the average accuracy of classifier significantly, achieving 100%, 93.3% and 92.9% for the three class samples respectively. The results of this study indicated that it would be feasible to identify HLB using the image textural features based on selected wavelengths, and it provided a basis for developing a portable HLB detection system with multispectral imaging techniques.
在本文中,我们讨论了光谱和纹理特征在柑橘黄龙病(HLB)早期识别中的应用。使用近地高光谱成像系统采集了总共176幅柑橘叶片的高光谱图像(60幅健康叶片图像、60幅感染HLB的叶片图像和56幅缺锌叶片图像)。从图像中病变部分手动提取感兴趣区域(ROI),以计算每个样本的平均反射光谱作为样本光谱,范围为396至1010nm。利用主成分分析(PCA)和连续投影分析(SPA)算法对样本光谱进行降维。使用原始光谱和候选变量、PCA选择的前四个主成分以及SPA选择的一组波长(630.5、679.4、749.4和899.9nm)建立分类模型。基于最小二乘支持向量机(LS-SVM)分类器的结果表明,用PCA和SPA选择的候选变量建立的分类模型具有更好的性能,平均准确率分别达到89.7%和87.4%。此外,还从基于灰度直方图和灰度共生矩阵(GLCM)的四个选定波长的灰度图像中提取了两组纹理特征用于分类器。SPA排名前十的特征显著提高了分类器的平均准确率,三类样本的平均准确率分别达到100%、93.3%和92.9%。本研究结果表明,利用基于选定波长的图像纹理特征识别HLB是可行的,为开发基于多光谱成像技术的便携式HLB检测系统提供了依据。