Study on the method and model of rice quality monitoring based on hyperspectral data

文献类型: 外文期刊

第一作者: Yan, Shibo

作者: Yan, Shibo;Wang, Xiuzhen;Huang, Jingfeng;Liu, Jia;Wang, Limin

作者机构:

关键词: the quality of rice;hyperspectral data;spectra tansform;PLSR plus R '

期刊名称:2016 FIFTH INTERNATIONAL CONFERENCE ON AGRO-GEOINFORMATICS (AGRO-GEOINFORMATICS)

ISSN: 2334-3168

年卷期: 2016 年

页码:

收录情况: SCI

摘要: Crude protein and amylose content are 2 important indexes of rice quality, the aim of the study is to explore an appropriate method and model to monitor the rice quality by using hyperspectral data. We colleceted samples in 2013 and 2014 when rice entered the mature period in the east of Deqing county and aquired the hyperspectral data of 4 diffenent forms of rice, including ear of rice, paddy, rice grain and rice flour, then we acquired crude protein and amylose content of rice flour by using NY/T 3-1982 and NY/T 83-1988. We chose 400nm-2400nm to anylyze and used 9 points weighted moving average method to smooth the spectra, then derived the samples into 2 parts, 70 samples used for builing model and 36 samples used for validation. Results showed that the paddy had the best correlation between spectra (R) and crude protein or amylose content, its spectra of 612nm showed a best correlation with crude protein content (r=-0.5561) and 1409nm with amylose content (r=-0.482), it's possible that the smooth degree influenced the spectra of rice grain and the density influenced the spectra of rice flour, so we choose paddy's original spectra to acquire more spectral varibles. In terms of spectra transform, we used the derivative transform (R'), logarithmic transform (Lg(1/R)) and continuum removal methods (Rr). Comparing R, R', Lg(1/R) and Rr, the R' 441 (r=-0.6417) had a best correlation with crude protein and R' 792 (r=-0.5549) had a best correlation with amylose content, used these 2 spectral varibles to buid the single factor model (liner , exponential, parabolic) and used the partial least squares regression (PLSR) to explore the correlation between R' and the 2 indexes (PLSR+ R'). From the single factor model, exponential model has a highst r(2) (0.4364) and highest RMSE (0.7756%) in crude protein content and the parabolic model also has a highest r(2) (0.3485) and highest RMSE (2.9952%) in amylose content, so PLSR+ R' was more suitable for building model (r(2)=0.5945, RMSE=0.4192% in crude protein content and r(2)=0.6062, RMSE=1.8401% in amylose content). Use validation samples to check all above models, the r2 between measured and estimated data are all lower than modeling samples, PLSR+ R' also had a highest r(2) (r(2)=0.291 in crude protein content and r(2)=0.3786 in amylose content) but the highest r(2) of signal factor model was only 0.2333 in crude protein content (exponential model) and 0.1573 in amylose content (parabolic model). In conclusion, the most appropriate method is to acquire the hyperspectral data of paddy and use PLSR+ R' to monitor the rice quality.

分类号:

  • 相关文献

[1]Comparison between wavelet spectral features and conventional spectral features in detecting yellow rust for winter wheat. Zhang, Jingcheng,Yuan, Lin,Yang, Guijun,Wang, Jihua,Zhang, Jingcheng,Yuan, Lin,Yang, Guijun,Wang, Jihua,Zhang, Jingcheng,Yuan, Lin,Yang, Guijun,Wang, Jihua,Zhang, Jingcheng,Pu, Ruiliang,Loraamm, Rebecca W.. 2014

[2]Canopy Spatial Distribution and Identification Using Hyperspectal Data in Winter Wheat. Lu, Yan-Li,Li, Shao-Kun,Lu, Yan-Li,Bai, You-Lu,Lu, Yan-Li,Bai, You-Lu,Jones, Carol L.,Wang, Ji-Hua.

[3]Hyperspectral Prediction Model for Maize Leaf SPAD in the Whole Growth Period. Chen Zhi-qiang,Wang Lei,Bai You-lu,Yang Li-ping,Lu Yan-li,Wang He,Wang Zhi-yong. 2013

作者其他论文 更多>>