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Enhancement of Visible-NIR Imaging Prediction System using Genetic Algorithm: Prediction of Carotenoid Content in Amaranthus sp. Leaf

机译:遗传算法增强可见光近红外成像预测系统::菜中类胡萝卜素含量的预测。叶

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Prediction system based on Visible-NIR Imaging had tested in various cases. This kind of prediction system excels at cases which is hard to do inspection by human eyesight. This ability is due to lots of available features or wavelengths (>100 features). However, that much of features are not always worth the prediction system performance. In this study, a genetic algorithm is used as wavelength selection methods for enhancing Visible-NIR Imaging prediction system. Prediction system would focus on the prediction of carotenoid content green amaranth (Amaranthus sp.) leaf. This study used 20 leaves of green amaranth. Image of each amaranth leaf acquired at 400-1000 nm. For each leaf, four regions of interest (ROI) is selected for determination of carotenoid content. Measurement of the reference value is done by using the Sims-Gamon method. Image of amaranth leaf then processed through correction, segmentation, and extraction. The regression model is built for predicting carotenoid content by using partial least square regression (PLSR) algorithm. Without wavelength selection, prediction system has the performance of 0.584 for R2 and 0.0169 for RMSE. Prediction system with implemented wavelength selection only use 89 of 224 wavelengths and has the performance of 0.878 for R2 and 0.01 for RMSE Results of this study showed that prediction system performance significantly improved by implementing the genetic algorithm as wavelength selection.
机译:基于可见光近红外成像的预测系统已在各种情况下进行了测试。这种预测系统适用于难以通过人眼检查的情况。此功能归因于许多可用功能或波长(> 100个功能)。但是,很多功能并不总是值得预测系统的性能。在这项研究中,遗传算法被用作增强Visible-NIR Imaging预测系统的波长选择方法。预测系统将侧重于预测类胡萝卜素含量的绿色a菜(Amaranthus sp。)叶片。这项研究使用了20片绿色a菜叶子。在400-1000 nm处获取的每朵a菜叶的图像。对于每片叶子,选择四个感兴趣区域(ROI)用于确定类胡萝卜素含量。参考值的测量通过使用Sims-Gamon方法进行。然后通过校正,分割和提取对a菜叶的图像进行处理。通过使用偏最小二乘回归(PLSR)算法构建回归模型来预测类胡萝卜素含量。如果不选择波长,则预测系统的R性能为0.584 2 RMSE为0.0169。实施波长选择的预测系统仅使用224个波长中的89个,R的性能为0.878 2 RMSE为0.01,这项研究的结果表明,通过将遗传算法用作波长选择,预测系统的性能得到了显着改善。

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