Chen Zhuo, Zhou Rigui, Ren Pengju
School of Information Engineering, Shanghai Maritime University Shanghai 201306 China
Research Center of Intelligent Information Processing and Quantum Intelligent Computing Shanghai 201306 China.
RSC Adv. 2024 Mar 7;14(12):8053-8066. doi: 10.1039/d3ra07708j. eCollection 2024 Mar 6.
This study delves into the use of compact near-infrared spectroscopy instruments for distinguishing between different varieties of barley, chickpeas, and sorghum, addressing a vital need in agriculture for precise crop variety identification. This identification is crucial for optimizing crop performance in diverse environmental conditions and enhancing food security and agricultural productivity. We also explore the potential application of transformer models in near-infrared spectroscopy and conduct an in-depth evaluation of the impact of data preprocessing and machine learning algorithms on variety classification. In our proposed spectraformer multi-classification model, we successfully differentiated 24 barley varieties, 19 chickpea varieties, and ten sorghum varieties, with the highest accuracy rates reaching 85%, 95%, and 86%, respectively. These results demonstrate that small near-infrared spectroscopy instruments are cost-effective and efficient tools with the potential to advance research in various identification methods, but also underscore the value of transformer models in near-infrared spectroscopy classification. Furthermore, we delve into the discussion of the influence of data preprocessing on the performance of deep learning models compared to traditional machine learning models, providing valuable insights for future research in this field.
本研究深入探讨了紧凑型近红外光谱仪器用于区分不同品种大麦、鹰嘴豆和高粱的情况,满足了农业中精确作物品种识别的重要需求。这种识别对于在不同环境条件下优化作物性能、加强粮食安全和提高农业生产力至关重要。我们还探索了变压器模型在近红外光谱中的潜在应用,并对数据预处理和机器学习算法对品种分类的影响进行了深入评估。在我们提出的光谱变压器多分类模型中,我们成功区分了24个大麦品种、19个鹰嘴豆品种和10个高粱品种,最高准确率分别达到85%、95%和86%。这些结果表明,小型近红外光谱仪器是具有成本效益和高效的工具,有潜力推动各种识别方法的研究,但也强调了变压器模型在近红外光谱分类中的价值。此外,我们深入讨论了与传统机器学习模型相比,数据预处理对深度学习模型性能的影响,为该领域未来的研究提供了有价值的见解。