通过局部低秩表示解混多个亲密混合物

A. Saranathan, M. Parente
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引用次数: 2

摘要

高光谱图像通常包含多个亲密(非线性)混合物。当试图分解这样的数据集时,重要的是要识别(聚类)数据中存在的不同混合物,并尽量减少由于密切混合(嵌入)而导致的数据中非线性的影响。流形聚类和嵌入技术似乎是这项任务的理想工具。以往的流形聚类研究要么简化假设,要么权衡嵌入目标来改进聚类。这在解混的情况下是不可接受的,因为嵌入的数据用于未来的处理(例如丰度估计)。我们讨论了一种低阶邻域表示,它将每个点表示为其邻居在同一流形上的仿射组合。这确保了重构矩阵具有块对角结构,从而可以通过谱聚类来识别类。不同流形的嵌入也可以由这个矩阵得到。我们将展示该算法在两个共享端元的三元混合物的模拟和实际高光谱反射率数据上的改进性能。
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Unmixing multiple intimate mixtures via a locally low-rank representation
Hyperspectral images often contain multiple intimate (nonlinear) mixtures. When attempting to unmix such datasets it is important to identify (cluster) the different mixtures present in the data and also minimize the effects of the nonlinearities in the data due to intimate mixing (embedding). Manifold clustering and embedding techniques appear to be an ideal tool for this task. Previous work in the field of manifold clustering either make simplifying assumptions or trade-off the embedding objective to improve the clustering. This is unacceptable in the case of unmixing as the embedded data is used for future processing (for e.g. abundance estimation). We discuss a low rank neighborhood representation which expresses each point as an affine combination of its neighbors on the same manifold. This ensures that the reconstruction matrix has a block diagonal structure, enabling the identification of classes by spectral clustering. The embedding of the different manifolds can also be obtained from this matrix. We will show the improved performance of this algorithm on simulated as well as real hyperspectral reflectance data of two ternary mixtures with two shared endmembers.
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