Relaxation linear regression with spectral–spatial constrained locality adaptive regularization for hyperspectral image classification
Meng‐Long Yang,
Chen‐Feng Long,
Yang‐Jun Deng
et al.
Abstract:Recently, relaxation linear regression has received increasing attention in image analysis. However, the current relaxation linear regression methods fail to consider the local geometrical structure and spatial information while they are applied for hyperspectral image (HSI) classification. To address the above problems, this letter proposes a novel relaxation linear regression with spectral–spatial constrained locality adaptive regularization (SSLA‐RLR) method for HSI classification. The SSLA‐RLR method not o… Show more
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