Department of Computer Science and Engineering, Hajee Mohammad Danesh Science and Technology University, Dinajpur 5200, Bangladesh.
Department of Computer Science and Engineering, Rajshahi University of Engineering & Technology, Rajshahi 6204, Bangladesh.
Sensors (Basel). 2023 Jan 6;23(2):657. doi: 10.3390/s23020657.
A hyperspectral image (HSI), which contains a number of contiguous and narrow spectral wavelength bands, is a valuable source of data for ground cover examinations. Classification using the entire original HSI suffers from the "curse of dimensionality" problem because (i) the image bands are highly correlated both spectrally and spatially, (ii) not every band can carry equal information, (iii) there is a lack of enough training samples for some classes, and (iv) the overall computational cost is high. Therefore, effective feature (band) reduction is necessary through feature extraction (FE) and/or feature selection (FS) for improving the classification in a cost-effective manner. Principal component analysis (PCA) is a frequently adopted unsupervised FE method in HSI classification. Nevertheless, its performance worsens when the dataset is noisy, and the computational cost becomes high. Consequently, this study first proposed an efficient FE approach using a normalized mutual information (NMI)-based band grouping strategy, where the classical PCA was applied to each band subgroup for intrinsic FE. Finally, the subspace of the most effective features was generated by the NMI-based minimum redundancy and maximum relevance (mRMR) FS criteria. The subspace of features was then classified using the kernel support vector machine. Two real HSIs collected by the AVIRIS and HYDICE sensors were used in an experiment. The experimental results demonstrated that the proposed feature reduction approach significantly improved the classification performance. It achieved the highest overall classification accuracy of 94.93% for the AVIRIS dataset and 99.026% for the HYDICE dataset. Moreover, the proposed approach reduced the computational cost compared with the studied methods.
高光谱图像 (HSI) 包含许多连续的、窄的光谱波长带,是地面覆盖物检查的宝贵数据来源。使用整个原始 HSI 进行分类会受到“维度诅咒”问题的困扰,原因如下:(i) 图像带在光谱和空间上高度相关,(ii) 并非每个带都能携带相等的信息,(iii) 某些类别的训练样本不足,以及 (iv) 整体计算成本高。因此,需要通过特征提取 (FE) 和/或特征选择 (FS) 进行有效的特征 (波段) 降维,以经济有效的方式提高分类效果。主成分分析 (PCA) 是 HSI 分类中常用的无监督 FE 方法。然而,当数据集存在噪声时,其性能会恶化,并且计算成本会变得很高。因此,本研究首先提出了一种使用基于归一化互信息 (NMI) 的波段分组策略的有效 FE 方法,其中经典 PCA 应用于每个波段子组进行内在 FE。最后,通过基于 NMI 的最小冗余和最大相关性 (mRMR) FS 标准生成最有效特征的子空间。然后使用核支持向量机对特征子空间进行分类。实验中使用了 AVIRIS 和 HYDICE 传感器采集的两个真实 HSI。实验结果表明,所提出的特征降维方法显著提高了分类性能。对于 AVIRIS 数据集,它实现了最高的总体分类精度 94.93%,对于 HYDICE 数据集,它实现了 99.026%的最高总体分类精度。此外,与所研究的方法相比,该方法降低了计算成本。