Yu Jia-Jia, Zou Wei, He Yong, Xu Zheng-Hao
College of Biosystems Engineering and Food Science, Zhejiang University, Hangzhou 310029, China.
Guang Pu Xue Yu Guang Pu Fen Xi. 2009 Nov;29(11):2955-8.
The feasibility of visible and short-wave near-infrared spectroscopy (VIS/WNIR) techniques as means for the nondestructive and fast detection of alien invasive weeds was evaluated. Selected sensitive bands were found validated. In the present study, 3 kinds of alien invasive weeds, Veronica persica, Veronica polita, and Veronica arvensis Linn, and one kind of local weed, Lamiaceae amplexicaule Linn, were employed. The results showed that visible and NIR (Vis/NIR) technology could be introduced in classification of the alien invasive weeds or local weed with the similar outline. Thirty x 4 weeds samples were randomly selected for the calibration set, while the remaining 20 x 4 samples for the prediction set. Smoothing methods of moving average and standard normal variate (SNV) were used to pretreat spectra data. Based on principal components analysis, soft independent models of class analogy (SIMCA) were applied to make the model. Four frontal principal components of each catalogues were applied as the input of SIMCA, and with a significance level of 0.05, recognition ratio of 78.75% was obtained. The average prediction result is 90% except for Veronica polita. According to the modeling power of each spectra data in SIMCA, some possible sensitive bands, 496-521, 589-626 and 789-926 nm, were founded. By using these possible sensitive bands as the inputs of least squares support vector machine (LS-SVM), and setting the result of LS-SVM as the object function value of genetic algorithm (GA), mutational rate, crossover rate and population size were set up as 0.9, 0.5 and 50 respectively. Finally recognition ratio of 95.63% was obtained. The prediction results of 95.63% indicated that the selected wavelengths reflected the main characteristics of the four weeds, which proposed a new way to accelerate the research on cataloguing alien invasive weeds.
评估了可见和短波近红外光谱(VIS/WNIR)技术作为外来入侵杂草无损快速检测手段的可行性。发现所选的敏感波段得到了验证。在本研究中,采用了3种外来入侵杂草,即波斯婆婆纳、直立婆婆纳和阿拉伯婆婆纳,以及1种本地杂草,即唇形科水棘针。结果表明,可见/近红外(Vis/NIR)技术可用于对轮廓相似的外来入侵杂草或本地杂草进行分类。随机选择30×4个杂草样本作为校准集,其余20×4个样本作为预测集。采用移动平均和平滑方法以及标准正态变量变换(SNV)对光谱数据进行预处理。基于主成分分析,应用软独立类比模型(SIMCA)建立模型。将每个类别目录的4个前沿主成分作为SIMCA的输入,在显著性水平为0.05时,识别率达到78.75%。除直立婆婆纳外,平均预测结果为90%。根据SIMCA中各光谱数据的建模能力,确定了一些可能的敏感波段,即496 - 521、589 - 626和789 - 926 nm。以这些可能的敏感波段作为最小二乘支持向量机(LS - SVM)的输入,并将LS - SVM的结果作为遗传算法(GA)的目标函数值,将变异率、交叉率和种群大小分别设置为0.9、0.5和50。最终获得了95.63%的识别率。95.63%的预测结果表明,所选波长反映了这4种杂草的主要特征,为加快外来入侵杂草编目研究提出了一种新途径。