Detection of peach soluble solids based on near-infrared spectroscopy with High Order Spatial Interaction network.
Hengnian QiJiahao LuoGang ChenJianyi ZhangFengnong ChenHongyang LiCong ShenChu ZhangPublished in: Journal of the science of food and agriculture (2024)
The optimal model, PC-HOSI model, performed well with an order of 3 (PC-HOSI-3), with a root mean square error of 0.421 °Brix and a coefficient of determination of 0.864. Compared with traditional machine learning and deep learning algorithms, the coefficient of determination for the prediction set was improved by 0.07 and 0.39, respectively. The permutation algorithm also provided interpretability analysis for the predictions of the deep learning model, offering insights into the importance of spectral bands. These results contribute to the accurate prediction of SSC in peaches and support research on interpretability of neural network models for prediction. © 2024 Society of Chemical Industry.