To predict oil and phenol concentrations in olive fruit,the combination of back propagation neural networks(BPNNs)and contact-less plant phenotyping techniques was employed to retrieve RGB image-based digital proxies ...To predict oil and phenol concentrations in olive fruit,the combination of back propagation neural networks(BPNNs)and contact-less plant phenotyping techniques was employed to retrieve RGB image-based digital proxies of oil and phenol concentrations.Fruits of cultivars(×3)differing in ripening time were sampled(~10-day interval,×2 years),pictured and analyzed for phenol and oil concentrations.Prior to this,fruit samples were pictured and images were segmented to extract the red(R),green(G),and blue(B)mean pixel values that were rearranged in 35 RGB-based colorimetric indexes.Three BPNNs were designed using as input variables(a)the original 35 RGB indexes,(b)the scores of principal components after a principal component analysis(PCA)pre-processing of those indexes,and(c)a reduced number(28)of the RGB indexes achieved after a sparse PCA.The results show that the predictions reached the highest mean R^(2) values ranging from 0.87 to 0.95(oil)and from 0.81 to 0.90(phenols)across the BPNNs.In addition to the R^(2),other performance metrics were calculated(root mean squared error and mean absolute error)and combined into a general performance indicator(GPI).The resulting rank of the GPI suggests that a BPNN with a specific topology might be designed for cultivars grouped according to their ripening period.The present study documented that an RGB-based image phenotyping can effectively predict key quality traits in olive fruit supporting the developing olive sector within a digital agriculture domain.展开更多
基金funded by the 2014–2020 Rural Development Programme for Basilicata Region[Misura 16.2,ORGOLIO,CUP C38I19000050006]the Programma Operativo Nazionale《Imprese e Competitività》2014–2020 FESR of Ministero Sviluppo Economico(Project n.F/200058/01-02/X45,Decree n.0110536 dated 2020 April 15)Project E.A.Sy.,Ecological sustainability in Agriculture Systems.
文摘To predict oil and phenol concentrations in olive fruit,the combination of back propagation neural networks(BPNNs)and contact-less plant phenotyping techniques was employed to retrieve RGB image-based digital proxies of oil and phenol concentrations.Fruits of cultivars(×3)differing in ripening time were sampled(~10-day interval,×2 years),pictured and analyzed for phenol and oil concentrations.Prior to this,fruit samples were pictured and images were segmented to extract the red(R),green(G),and blue(B)mean pixel values that were rearranged in 35 RGB-based colorimetric indexes.Three BPNNs were designed using as input variables(a)the original 35 RGB indexes,(b)the scores of principal components after a principal component analysis(PCA)pre-processing of those indexes,and(c)a reduced number(28)of the RGB indexes achieved after a sparse PCA.The results show that the predictions reached the highest mean R^(2) values ranging from 0.87 to 0.95(oil)and from 0.81 to 0.90(phenols)across the BPNNs.In addition to the R^(2),other performance metrics were calculated(root mean squared error and mean absolute error)and combined into a general performance indicator(GPI).The resulting rank of the GPI suggests that a BPNN with a specific topology might be designed for cultivars grouped according to their ripening period.The present study documented that an RGB-based image phenotyping can effectively predict key quality traits in olive fruit supporting the developing olive sector within a digital agriculture domain.