Wang Jing, Yang Guoguo, Lu Hongliang
Department of Geographic Information and Tourism, Chuzhou University, Chuzhou, 239000, China.
School of Earth Sciences and Engineering, Hohai University, Jiangning, Nanjing, 211100, China.
Heliyon. 2024 Aug 5;10(16):e35792. doi: 10.1016/j.heliyon.2024.e35792. eCollection 2024 Aug 30.
Dynamic ensemble selection has emerged as a promising approach for hyperspectral image classification. However, selecting relevant features and informative samples remains a pressing challenge. To address this issue, we introduce two novel dynamic residual ensemble learning methods. The first proposed method is called multi-features driven dynamic weighted residuals ensemble learning (MF-DWRL). This method leverages various combinations of features to construct classifier pools that incorporate feature differences. The K-Nearest Neighbors algorithm is employed to establish the region of competence (RoC) in the dynamic ensemble selection process. By assessing the performance of the RoC, the feature sets that yield the highest classification accuracy are identified as the optimal feature combinations. Additionally, the classification accuracy is utilized as prior information to guide the residual adjustments of each classifier. The second method, known as features and samples double-driven dynamic weighted residual ensemble learning (FS-DWRL), further enhances the performance of the ensemble. This approach not only considers the selection of feature combinations but also takes into account the informative samples. By jointly optimizing the feature and sample selection processes, FS-DWRL achieves superior classification accuracy compared to existing state-of-the-art methods. To evaluate the effectiveness of the proposed methods, three hyperspectral datasets from China-WHU-Hi-HanChuan, WHU-Hi-LongKou, and WHU-Hi-HongHu-are used for classification experiments. For these datasets, the proposed methods achieve the highest classification accuracies of 90.57 %, 98.77 %, and 91.08 %, respectively. The MF-DWRL and FS-DWRL methods exhibit significant improvements in classification accuracy.
动态集成选择已成为一种用于高光谱图像分类的有前景的方法。然而,选择相关特征和信息丰富的样本仍然是一个紧迫的挑战。为了解决这个问题,我们引入了两种新颖的动态残差集成学习方法。第一种提出的方法称为多特征驱动动态加权残差集成学习(MF-DWRL)。该方法利用特征的各种组合来构建包含特征差异的分类器池。在动态集成选择过程中,采用K近邻算法来建立能力区域(RoC)。通过评估RoC的性能,将产生最高分类准确率的特征集确定为最优特征组合。此外,分类准确率被用作先验信息来指导每个分类器的残差调整。第二种方法,称为特征和样本双驱动动态加权残差集成学习(FS-DWRL),进一步提高了集成的性能。这种方法不仅考虑特征组合的选择,还考虑信息丰富的样本。通过联合优化特征和样本选择过程,FS-DWRL与现有的最先进方法相比实现了更高的分类准确率。为了评估所提出方法的有效性,使用了来自中国-武汉大学-高光谱-汉川、武汉大学-高光谱-龙口和武汉大学-高光谱-洪湖的三个高光谱数据集进行分类实验。对于这些数据集,所提出的方法分别实现了90.57%、98.77%和91.08%的最高分类准确率。MF-DWRL和FS-DWRL方法在分类准确率上有显著提高。