无监督高光谱特征提取的多尺度非线性边缘三相模型

IF 1.4 4区 地球科学 Q4 ENVIRONMENTAL SCIENCES Journal of Applied Remote Sensing Pub Date : 2023-09-26 DOI:10.1117/1.jrs.17.036509
Xianyue Wang, Longxia Qian, Chengzu Bai, Jinde Cao
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引用次数: 0

摘要

近年来,高光谱图像的无监督特征提取技术因其优异的分类性能和效率而备受关注。在现有的一些方法中,忽略了降低固有噪声影响的去噪过程,仍然需要充分考虑有助于分类的非线性边缘特征和多尺度特征。为了解决这些问题,我们采用多尺度非线性基于边缘的无监督三相模型(UTPM)进行高光谱特征提取。具体而言,在初始阶段,采用噪声调整主成分技术来降低噪声,以提高所提模型的性能。然后,设计了一种邻带分组技术,利用信息熵减少冗余和计算量。由于信息熵可以具体反映同一组中不同波段的重要性,因此可以最大限度地保留内部结构。最后,利用核低秩熵分析的多尺度特征融合提取非线性边缘特征,并结合卷积算法融合多尺度元素,提高分类性能。与其他几种经典或渐进式无监督高光谱特征提取算法进行比较,在三个公开HSI数据集上的分类结果验证了UTPM的有效性。
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Multi-scale nonlinear edge-based three-phase model for unsupervised hyperspectral feature extraction
Unsupervised feature extraction techniques of hyperspectral images (HSIs) have recently drawn significant attention for their excellent performance and efficiency in classification. In some existing methods, the denoising process that reduces the influence of inherent noise is ignored, and the nonlinear edge characteristics and multi-scale features that help to classify still need to be fully considered. To solve these issues, we employ a multi-scale nonlinear edge-based unsupervised three-phase model (UTPM) for hyperspectral feature extraction. Specifically, in the initial phase, a noise-adjusted principal components technique is adopted to lower the noise to improve the performance of the proposed model. Then, a neighbor band grouping technique is designed to reduce redundancy and computational cost with information entropy. Because the information entropy can concretely reflect the importance of different bands in the same group, the inner structure can be maximally preserved. Finally, we utilize a multi-scale feature fusion on kernel low-rank entropic analysis to extract nonlinear edge features and combine it with a convolution algorithm to fuse the elements of multiple scales to improve the classification performance. Compared with several other classical or progressive unsupervised hyperspectral feature extraction algorithms, the classification results on three public HSI datasets validate the effectiveness of UTPM.
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来源期刊
Journal of Applied Remote Sensing
Journal of Applied Remote Sensing 环境科学-成像科学与照相技术
CiteScore
3.40
自引率
11.80%
发文量
194
审稿时长
3 months
期刊介绍: The Journal of Applied Remote Sensing is a peer-reviewed journal that optimizes the communication of concepts, information, and progress among the remote sensing community.
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