Liu Yufei, Liu Jingxin, Cheng Wei, Chen Zizhi, Zhou Junyu, Cheng Haolan, Lv Chunli
College of Information and Electrical Engineering, China Agricultural University, Beijing 100083, China.
College of Economics and Management, China Agricultural University, Beijing 100083, China.
Plants (Basel). 2023 May 23;12(11):2073. doi: 10.3390/plants12112073.
Timely and accurate detection of plant diseases is a crucial research topic. A dynamic-pruning-based method for automatic detection of plant diseases in low-computing situations is proposed. The main contributions of this research work include the following: (1) the collection of datasets for four crops with a total of 12 diseases over a three-year history; (2) the proposition of a re-parameterization method to improve the boosting accuracy of convolutional neural networks; (3) the introduction of a dynamic pruning gate to dynamically control the network structure, enabling operation on hardware platforms with widely varying computational power; (4) the implementation of the theoretical model based on this paper and the development of the associated application. Experimental results demonstrate that the model can run on various computing platforms, including high-performance GPU platforms and low-power mobile terminal platforms, with an inference speed of 58 FPS, outperforming other mainstream models. In terms of model accuracy, subclasses with a low detection accuracy are enhanced through data augmentation and validated by ablation experiments. The model ultimately achieves an accuracy of 0.94.
及时准确地检测植物病害是一个至关重要的研究课题。提出了一种基于动态剪枝的方法,用于在低计算情况下自动检测植物病害。这项研究工作的主要贡献包括:(1)收集了三年来四种作物共12种病害的数据集;(2)提出了一种重新参数化方法,以提高卷积神经网络的提升精度;(3)引入了动态剪枝门来动态控制网络结构,使其能够在计算能力差异很大的硬件平台上运行;(4)基于本文实现了理论模型并开发了相关应用。实验结果表明,该模型可以在包括高性能GPU平台和低功耗移动终端平台在内的各种计算平台上运行,推理速度为58 FPS,优于其他主流模型。在模型精度方面,通过数据增强提高了检测精度较低的子类,并通过消融实验进行了验证。该模型最终实现了0.94的准确率。