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CORRENTROPY-BASED ROBUST JOINT SPARSE REPRESENTATION FOR HYPERSPECTRAL IMAGE CLASSIFICATION

机译:基于矫正基于的高光谱图像分类的鲁棒联合稀疏表示

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In the joint sparse representation (JSR) model, a test pixel and its spatial neighbors are simultaneously approximated by a sparse linear combination of all training samples, and then the test pixel is classified based on the joint reconstruction residual of each class. Due to the least-squares representation of reconstruction residual, the JSR model is usually sensitive to outliers, such as background and noisy pixels. In order to eliminate the effect of noisy and outliers, we propose a robust correntropy-based JSR (CJSR) model for the hyperspectral image classification. It replaces the traditional square of the Euclidean distance to the correntropy-based metric in measuring the joint approximation error. To solve the correntropy-based joint sparsity model, a half-quadratic optimization technique is developed to convert the original non-convex and nonlinear optimization problem into an iteratively re-weighted JSR problem. As a result, the optimization of our model can handle the noise in the spatial neighborhood of each test pixel. It can adaptively assign small weights to noisy pixels and put more emphasis on noise-free pixels. Experiments demonstrate the effectiveness of our model in comparison to the related state-of-the-art sparsity models.
机译:在关节稀疏表示(JSR)模型中,测试像素及其空间邻居通过所有训练样本的稀疏线性组合同时近似,然后基于每个类的联合重建残余来对测试像素进行分类。由于重建残余的最小二乘表示,JSR模型通常对异常值敏感,例如背景和嘈杂像素。为了消除嘈杂和异常值的效果,我们提出了一种用于高光谱图像分类的基于坚固的基于正管的JSR(CJSR)模型。它取代了欧几里德距离的传统方块,以测量关节近似误差的基于正管的度量。为了解决基于正轮的关节稀疏模型,开发了半二次优化技术以将原始非凸和非线性优化问题转换为迭代重新加权的JSR问题。结果,我们的模型的优化可以处理每个测试像素的空间邻域中的噪声。它可以自适应地将小权重分配给嘈杂的像素,并更加强调无噪音像素。实验证明了我们模型的有效性与相关的最先进的稀疏模型相比。

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