Autor: |
Xue-juan, Chen, Xiang, Wu, Zhong-qiang, Yuan, Xiang, Chen, Yu-wu, Zhang, Chun-xiang, Cao |
Předmět: |
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Zdroj: |
Spectroscopy Letters; 2017, Vol. 50 Issue 2, p65-72, 8p |
Abstrakt: |
Rhododendronsare an important genus of alpine flowering plant used ornamentally worldwide. The purpose of this study is to improve the application of remote-sensing technology for investigating and monitoring mountainrhododendrongermplasm. Research area is the Baili Rhododendron National Forest Park located in the karst region of Guizhou Province, China. Field spectrometry was used to acquire spectral data for 20 samples extracted from eightrhododendronspecies. A deep-learning algorithm from a discriminative restricted Boltzmann machine was used with the original spectral data from the differentrhododendronspecies to obtain the optimal parameters for the model. Simultaneously, the data processing methodology from the discriminative restricted Boltzmann machine was used to recognize the original spectra, the noise smoothed spectra, and the first- and second-order spectral derivatives with accuracies of 88.54%, 88.54%, 93.75%, and 90.62%, respectively. The results show that the discriminative restricted Boltzmann machine is effective in recognizing spectral information for differentrhododendronspecies. Changes in the first-order derivative gave the most accurate classification, but changes in the second-order derivative significantly reduced the sample training time. Changes in both derivatives therefore proved useful in recognizing and extracting particular features of the plant species. This research may therefore further support the use of hyperspectral remote-sensing imagery for investigating and monitoring germplasm, species classification, and physiological parameter inversions forrhododendronsfrom various mountain regions of China. [ABSTRACT FROM AUTHOR] |
Databáze: |
Complementary Index |
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