School of Management, Harbin University of Commerce, Harbin, 150028, China.
PLoS One. 2024 May 31;19(5):e0304469. doi: 10.1371/journal.pone.0304469. eCollection 2024.
In recent years, the advancement of hyperspectral remote sensing technology has greatly enhanced the detailed mapping of tree species. Nevertheless, delving deep into the significance of hyperspectral remote sensing data features for tree species recognition remains a challenging endeavor. The method of Hybrid-CS was proposed to addresses this challenge by synergizing the strengths of both deep learning and traditional learning techniques. Initially, we extract comprehensive correlation structures and spectral features. Subsequently, a hybrid approach, combining correlation-based feature selection with an optimized recursive feature elimination algorithm, identifies the most valuable feature set. We leverage the Support Vector Machine algorithm to evaluate feature importance and perform classification. Through rigorous experimentation, we evaluate the robustness of hyperspectral image-derived features and compare our method with other state-of-the-art classification methods. The results demonstrate: (1) Superior classification accuracy compared to traditional machine learning methods (e.g., SVM, RF) and advanced deep learning approaches on the tree species dataset. (2) Enhanced classification accuracy achieved by incorporating SVM and CNN information, particularly with the integration of attention mechanisms into the network architecture. Additionally, the classification performance of a two-branch network surpasses that of a single-branch network. (3) Consistent high accuracy across different proportions of training samples, indicating the stability and robustness of the method. This study underscores the potential of hyperspectral images and our proposed methodology for achieving precise tree species classification, thus holding significant promise for applications in forest resource management and monitoring.
近年来,高光谱遥感技术的进步极大地增强了树种的详细制图能力。然而,深入研究高光谱遥感数据特征对于树种识别的意义仍然是一项具有挑战性的工作。Hybrid-CS 方法通过结合深度学习和传统学习技术的优势来解决这一挑战。首先,我们提取了全面的相关结构和光谱特征。然后,采用一种混合方法,将基于相关性的特征选择与优化的递归特征消除算法相结合,确定最有价值的特征集。我们利用支持向量机算法来评估特征的重要性并进行分类。通过严格的实验,我们评估了高光谱图像衍生特征的稳健性,并将我们的方法与其他最先进的分类方法进行了比较。结果表明:(1)与传统机器学习方法(例如 SVM、RF)和先进的深度学习方法相比,在树种数据集上具有更高的分类精度。(2)通过将 SVM 和 CNN 信息结合起来,可以提高分类精度,特别是在网络架构中集成注意力机制。此外,双分支网络的分类性能优于单分支网络。(3)在不同比例的训练样本下都具有一致的高准确性,表明该方法的稳定性和鲁棒性。本研究强调了高光谱图像及其提出的方法在实现精确树种分类方面的潜力,因此在森林资源管理和监测等应用中具有广阔的前景。