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Anomaly detection and important bands selection for hyperspectral images via sparse PCA

机译:异常检测和通过稀疏PCA的高光谱图像的重要频段选择

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We propose a regularised version of the classical singular value decomposition for simultaneous outliers and associated important bands selection. The contributions are twofold: First, we exploit sequential optimisation techniques in L0 formulation to obtain sparse solution of classical principal component analysis. Second, we have develop new formulation for the anomaly detection problem where the simultaneous identification of important bands can be performed. Experiments in real and simulated data are included to validate the proposed method.
机译:我们为同时异常值和相关的重要频段选择提出了经典奇异值分解的正则化版本。贡献是双重的:首先,我们利用L 0 配方中的顺序优化技术,以获得经典主成分分析的稀疏解。其次,我们已经为同时识别重要条带的异常检测问题开发了新的制剂。包括实际和模拟数据的实验以验证所提出的方法。

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