A Gas-Spectral Bimodal Information Fusion Method Combining Electronic Nose and Hyperspectral System to Identify the Rice Quality in Different Storage Periods

Published: 01 Jan 2024, Last Modified: 13 May 2025IEEE Trans. Instrum. Meas. 2024EveryoneRevisionsBibTeXCC BY-SA 4.0
Abstract: Rice quality tends to decline with the increase in storage period. In rice production, it is common to pass off poor-quality rice with a long storage period as fresh rice. In this work, we designed a self-selection convolution neural network (SS-Net) combined with nondestructive detection techniques of electronic nose (e-nose) and hyperspectral to identify the rice quality in different storage periods. First, apply the e-nose and hyperspectral system to detect the gas and spectral information of two rice brands, Dao Huaxiang and Xiao Yuanli, in six storage periods, with three humidity levels. Second, a self-selection convolution (SSConv) is proposed to concern essential features affecting the classification performance after fusing the gas and spectral information. Finally, SS-Net is designed to achieve the adaptive classification of gas and spectral information, realizing rice quality discrimination. Compared with other classification methods, SS-Net obtains the best classification performance and provides an effective method for rice quality monitoring.
Loading