Yang Han, Qu Fuheng, Yang Yong, Li Xiaofeng, Wang Ping, Guo Sike, Wang Lu
College of Computer Science and Technology, Changchun University of Science and Technology, Changchun 130022, China.
College of Software Engineering, Jilin Technology College of Electronic Information, Jilin 132021, China.
Sensors (Basel). 2024 Jul 17;24(14):4635. doi: 10.3390/s24144635.
In the field of rice processing and cultivation, it is crucial to adopt efficient, rapid and user-friendly techniques to detect the flavor values of various rice varieties. The conventional methods for flavor value assessment mainly rely on chemical analysis and technical evaluation, which not only deplete the rice resources but also incur significant time and labor costs. In this study, hyperspectral imaging technology was utilized in combination with an improved Particle Swarm Optimization Support Vector Machine (PSO-SVM) algorithm, i.e., the Grid Iterative Search Particle Swarm Optimization Support Vector Machine (GISPSO-SVM) algorithm, introducing a new non-destructive technique to determine the flavor value of rice. The method captures the hyperspectral feature data of different rice varieties through image acquisition, preprocessing and feature extraction, and then uses these features to train a model using an optimized machine learning algorithm. The results show that the introduction of GIS algorithms in a PSO-optimized SVM is very effective and can improve the parameter finding ability. In terms of flavor value prediction accuracy, the Principal Component Analysis (PCA) combined with the GISPSO-SVM algorithm achieved 96% accuracy, which was higher than the 93% of the Competitive Adaptive Weighted Sampling (CARS) algorithm. And the introduction of the GIS algorithm in different feature selection can improve the accuracy to different degrees. This novel approach helps to evaluate the flavor values of new rice varieties non-destructively and provides a new perspective for future rice flavor value detection methods.
在水稻加工与种植领域,采用高效、快速且用户友好的技术来检测各类水稻品种的风味值至关重要。传统的风味值评估方法主要依赖化学分析和技术评估,这不仅会消耗水稻资源,还会产生高昂的时间和人力成本。在本研究中,将高光谱成像技术与改进的粒子群优化支持向量机(PSO-SVM)算法,即网格迭代搜索粒子群优化支持向量机(GISPSO-SVM)算法相结合,引入了一种新的无损技术来测定水稻的风味值。该方法通过图像采集、预处理和特征提取来获取不同水稻品种的高光谱特征数据,然后利用这些特征通过优化的机器学习算法训练模型。结果表明,在PSO优化的SVM中引入GIS算法非常有效,能够提高参数寻优能力。在风味值预测精度方面,主成分分析(PCA)结合GISPSO-SVM算法达到了96%的准确率,高于竞争性自适应加权采样(CARS)算法的93%。并且在不同特征选择中引入GIS算法能不同程度地提高准确率。这种新颖的方法有助于无损评估新水稻品种的风味值,并为未来水稻风味值检测方法提供了新的视角。