Li Sheng, Wang Min, Sun Shuo, Wu Jia, Zhuang Zhihao
School of Electronic and Information Engineering, Nanjing University of Information Science and Technology, Nanjing 210044, China.
School of Electronic and Information Engineering, Anhui Jianzhu University, Hefei 230009, China.
Sensors (Basel). 2023 Sep 18;23(18):7957. doi: 10.3390/s23187957.
Cloud observation serves as the fundamental bedrock for acquiring comprehensive cloud-related information. The categorization of distinct ground-based clouds holds profound implications within the meteorological domain, boasting significant applications. Deep learning has substantially improved ground-based cloud classification, with automated feature extraction being simpler and far more accurate than using traditional methods. A reengineering of the DenseNet architecture has given rise to an innovative cloud classification method denoted as CloudDenseNet. A novel CloudDense Block has been meticulously crafted to amplify channel attention and elevate the salient features pertinent to cloud classification endeavors. The lightweight CloudDenseNet structure is designed meticulously according to the distinctive characteristics of ground-based clouds and the intricacies of large-scale diverse datasets, which amplifies the generalization ability and elevates the recognition accuracy of the network. The optimal parameter is obtained by combining transfer learning with designed numerous experiments, which significantly enhances the network training efficiency and expedites the process. The methodology achieves an impressive 93.43% accuracy on the large-scale diverse dataset, surpassing numerous published methods. This attests to the substantial potential of the CloudDenseNet architecture for integration into ground-based cloud classification tasks.
云观测是获取全面云相关信息的基础基石。不同地基云的分类在气象领域具有深远意义,有着重要应用。深度学习极大地改进了地基云分类,其自动特征提取比使用传统方法更简单且准确得多。对DenseNet架构的重新设计产生了一种创新的云分类方法,称为CloudDenseNet。精心设计了一种新颖的云密集块,以增强通道注意力并提升与云分类工作相关的显著特征。轻量级的CloudDenseNet结构根据地基云的独特特征和大规模多样数据集的复杂性精心设计,这增强了网络的泛化能力并提高了识别准确率。通过将迁移学习与设计的大量实验相结合获得了最优参数,这显著提高了网络训练效率并加快了进程。该方法在大规模多样数据集上实现了令人印象深刻的93.43%的准确率,超过了众多已发表的方法。这证明了CloudDenseNet架构在集成到地基云分类任务中的巨大潜力。