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Sparse Representation Classification Based on Flexible Patches Sampling of Superpixels for Hyperspectral Images

机译:基于超像素柔性斑块采样的高光谱图像稀疏表示分类

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Aiming at solving the difficulty of modeling on spatial coherence, complete feature extraction, and sparse representation in hyperspectral image classification, a joint sparse representation classification method is investigated by flexible patches sampling of superpixels. First, the principal component analysis and total variation diffusion are employed to form the pseudo color image for simplifying superpixels computing with (simple linear iterative clustering) SLIC model. Then, we design a joint sparse recovery model by sampling overcomplete patches of superpixels to estimate joint sparse characteristics of test pixel, which are carried out on the orthogonal matching pursuit (OMP) algorithm. At last, the pixel is labeled according to the minimum distance constraint for final classification based on the joint sparse coefficients and structured dictionary. Experiments conducted on two real hyperspectral datasets show the superiority and effectiveness of the proposed method.
机译:为了解决高光谱图像分类中空间相干,完整特征提取和稀疏表示建模的困难,研究了一种基于超像素的柔性斑块采样的联合稀疏表示分类方法。首先,使用主成分分析和总变化扩散形成伪彩色图像,以简化使用(简单线性迭代聚类)SLIC模型的超像素计算。然后,我们通过对超像素的超完备块进行采样来设计联合稀疏恢复模型,以估计测试像素的联合稀疏特征,该模型是在正交匹配追踪(OMP)算法上进行的。最后,根据最小距离约束对像素进行标记,以基于联合稀疏系数和结构化字典进行最终分类。在两个真实的高光谱数据集上进行的实验证明了该方法的优越性和有效性。

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