Li Jiaqi, Zhao Xinyan, Xu Hening, Zhang Liman, Xie Boyu, Yan Jin, Zhang Longchuang, Fan Dongchen, Li Lin
China Agricultural University, Beijing 100083, China.
School of Computer Science and Engineering, Beihang University, Beijing 100191, China.
Plants (Basel). 2023 Sep 15;12(18):3273. doi: 10.3390/plants12183273.
With the evolution of modern agriculture and precision farming, the efficient and accurate detection of crop diseases has emerged as a pivotal research focus. In this study, an interpretative high-precision rice disease detection method, integrating multisource data and transfer learning, is introduced. This approach harnesses diverse data types, including imagery, climatic conditions, and soil attributes, facilitating enriched information extraction and enhanced detection accuracy. The incorporation of transfer learning bestows the model with robust generalization capabilities, enabling rapid adaptation to varying agricultural environments. Moreover, the interpretability of the model ensures transparency in its decision-making processes, garnering trust for real-world applications. Experimental outcomes demonstrate superior performance of the proposed method on multiple datasets when juxtaposed against advanced deep learning models and traditional machine learning techniques. Collectively, this research offers a novel perspective and toolkit for agricultural disease detection, laying a solid foundation for the future advancement of agriculture.
随着现代农业和精准农业的发展,作物病害的高效准确检测已成为关键的研究重点。本研究介绍了一种集成多源数据和迁移学习的解释性高精度水稻病害检测方法。该方法利用多种数据类型,包括图像、气候条件和土壤属性,便于丰富信息提取并提高检测准确性。迁移学习的融入赋予模型强大的泛化能力,使其能够快速适应不同的农业环境。此外,模型的可解释性确保了其决策过程的透明度,赢得了在实际应用中的信任。实验结果表明,与先进的深度学习模型和传统机器学习技术相比,该方法在多个数据集上具有卓越的性能。总体而言,本研究为农业病害检测提供了新的视角和工具包,为农业的未来发展奠定了坚实基础。