Department of Computer and Self Development, Preparatory Year Deanship, Prince Sattam Bin Abdulaziz University, AlKharj, Saudi Arabia.
Department of Information Systems, College of Computer and Information Sciences, Princess Nourah Bint Abdulrahman University, P.O. Box 84428, Riyadh 11671, Saudi Arabia.
Comput Intell Neurosci. 2022 Mar 27;2022:4063354. doi: 10.1155/2022/4063354. eCollection 2022.
Remote sensing image (RSI) scene classification has become a hot research topic due to its applicability in different domains such as object recognition, land use classification, image retrieval, and surveillance. During RSI classification process, a class label will be allocated to every scene class based on the semantic details, which is significant in real-time applications such as mineral exploration, forestry, vegetation, weather, and oceanography. Deep learning (DL) approaches, particularly the convolutional neural network (CNN), have shown enhanced outcomes on the RSI classification process owing to the significant aspect of feature learning as well as reasoning. In this aspect, this study develops fuzzy cognitive maps with a bird swarm optimization-based RSI classification (FCMBS-RSIC) model. The proposed FCMBS-RSIC technique inherits the advantages of fuzzy logic (FL) and swarms intelligence (SI) concepts. In order to transform the RSI into a compatible format, preprocessing is carried out. Besides, the features are produced by the use of the RetinaNet model. Besides, a FCM-based classifier is involved to allocate proper class labels to the RSIs and the classification performance can be improved by the design of bird swarm algorithm (BSA). The performance validation of the FCMBS-RSIC technique takes place using benchmark open access datasets, and the experimental results reported the enhanced outcomes of the FCMBS-RSIC technique over its state-of-the-art approaches.
遥感图像(RSI)场景分类由于在目标识别、土地利用分类、图像检索和监控等不同领域的适用性而成为热门研究课题。在 RSI 分类过程中,将根据语义细节为每个场景类分配一个类别标签,这在矿产勘探、林业、植被、天气和海洋学等实时应用中非常重要。深度学习(DL)方法,特别是卷积神经网络(CNN),由于其特征学习和推理的重要方面,在 RSI 分类过程中显示出了增强的结果。在这方面,本研究开发了具有基于鸟类群优化的遥感图像分类(FCMBS-RSIC)模型的模糊认知图。所提出的 FCMBS-RSIC 技术继承了模糊逻辑(FL)和群智能(SI)概念的优势。为了将 RSI 转换为兼容的格式,需要进行预处理。此外,还使用 RetinaNet 模型生成特征。此外,还涉及基于 FCM 的分类器,为 RSIs 分配适当的类别标签,并通过设计鸟类群算法(BSA)来提高分类性能。FCMBS-RSIC 技术的性能验证是使用基准开放访问数据集进行的,实验结果报告了 FCMBS-RSIC 技术在其最先进方法上的增强结果。