Hyperspectral detection of walnut protein contents based on improved whale optimized algorithm  

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作  者:Yao Zhang Zezhong Tian Wenqiang Ma Man Zhang Liling Yang 

机构地区:[1]Key Laboratory of Smart Agriculture System Integration,Ministry of Education,China Agricultural University,Beijing 100083,China [2]Agricultural Mechanization Institute,Xinjiang Academy of Agricultural Sciences,Urumqi 830091,China

出  处:《International Journal of Agricultural and Biological Engineering》2022年第6期235-241,共7页国际农业与生物工程学报(英文)

基  金:supported by the Science and Technology Innovation Key Cultivation Project of Xinjiang Academy of Agricultural Sciences(Grant No.xjkcpy-004).

摘  要:Nondestructive and accurate estimation of walnut kernel protein content is important for food quality grading and profitability improvement of walnut packinghouses.Hyperspectral image technology provides potential solutions for walnuts nutrients detection by obtaining both spectral and textural information.However,the redundancy and large computation of spectral data prevent the widespread application of hyperspectral technology for high throughput evaluation.For walnut kernel protein inversion from hyperspectral image,this study proposed a novel feature selection method,which is named as improved whale optimized algorithm(IWOA).In the IWOA,a comprehensive feature selection criterion was applied in the iterative process,which fully considered the relevance of spectra information with target variables,representative ability of the selected wavebands to entire spectra,and redundancy of the selected wavebands.Especially in the relevance with target variables,the amplitude and shape characteristics of the spectra were both taken into consideration.Eight wavelengths around 996,1225,1232,1377,1552,1600,1691 and 1700 nm were then selected as the sensitive wavelengths to walnut protein.These wavelengths showed good correlation with certain chemical compounds related to protein contents mechanistically.Then three protein prediction models were established.After analysis and comparison,the model based on the selected wavelengths got better results with the one based on the full spectrum.Compared to the models based on solely spectral information,the model that combine spectral and textural information outperformed and got the best prediction results.The R^(2)in the calibration group was 0.9047,and the root mean square errors(RMSE)was 11.1382 g/kg.In the validation group,the R^(2)was 0.8537,and the RMSE was 18.9288 g/kg.The results demonstrated that the combination of the selected wavelengths through the IWOA with the textural characteristics could effectively estimate walnut protein contents.And the proposed method can be

关 键 词:walnut protein hyperspectral image whale optimized algorithm feature selection textural indicator 

分 类 号:S127[农业科学—农业基础科学]

 

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