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首页> 外文期刊>Journal of Applied Spectroscopy >Classification of Tree Species at the Leaf Level based on Hyperspectral Imaging Technology
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Classification of Tree Species at the Leaf Level based on Hyperspectral Imaging Technology

机译:基于高光谱成像技术的叶级树种分类

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This study utilized hyperspectral imaging technology to identify eight tree species at the leaf level. The successive projections algorithm (SPA), information gain (IG), and Gini index (Gini) were used to select the feature bands. Furthermore, the binary particle swarm optimization (BPSO) algorithm was used to optimize the feature bands selected by SPA, IG, and Gini. The particle swarm optimization-extreme learning machine (PSO-ELM), linear Bayes normal classifi er (LBNC), and k-nearest neighbor (KNN) recognition models for tree species were established based on all bands, feature bands, and optimized feature bands, respectively. The experimental results show that the recognition rates of the PSO-ELM, LBNC, and KNN models based on all bands were 98.45, 99.10, and 83.67%, respectively. The SPA, IG, and Gini models can all effectively select spectral bands on tree species discrimination and greatly reduce the dimension of spectral data, in which the recognition effects of the models based on the feature bands selected by Gini were the best, and the recognition rates of the PSO-ELM, LBNC, and KNN models reached 97.55, 96.53, and 80.5%, respectively. Additionally, BPSO-SPA, BPSO-IG, and BPSO-Gini models can all further reduce the dimension of spectral data on the basis of ensuring the recognition accuracy of models, in which the models established based on the optimized feature bands selected by BPSO-Gini achieved the best recognition effect and the recognition rates of the PSO-ELM, LBNC, and KNN models reached 96.53, 96.68, and 81.05%, respectively. In general, the recognition performance of the PSO-ELM model was better than those of the LBNC and KNN models.
机译:本研究利用高光谱成像技术来识别叶片水平的八种树种。连续投影算法(SPA),信息增益(IG)和GINI索引(GINI)用于选择要素频带。此外,二进制粒子群优化(BPSO)算法用于优化SPA,IG和GINI选择的特征频带。基于所有频带,特征频带和优化的特征频带建立了粒子培养型 - 极端学习机(PSO-ELM),线性贝叶斯普通分类机(LBNC)和K最近邻(KNN)识别模型, 分别。实验结果表明,基于所有带的PSO-ELM,LBNC和KNN模型的识别率分别为98.45,99.10和83.67%。 SPA,IG和GINI模型可以在树种鉴别上有效地选择光谱带,大大降低光谱数据的维度,其中基于由Gini选择的特征频带的模型的识别效果是最好的,并且识别PSO-ELM,LBNC和KNN模型的速率分别达到97.55,96.53和80.5%。此外,BPSO-SPA,BPSO-IG和BPSO-GINI模型可以进一步降低频谱数据的尺寸,基于确保模型的识别准确性,其中基于BPSO-选择的优化特征频带建立的模型GINI达到了最佳识别效果和PSO-ELM,LBNC和KNN模型的识别率分别达到96.53,96.68和81.05%。通常,PSO-ELM模型的识别性能优于LBNC和KNN模型的识别性能。

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