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Bilinear Factorization via Recursive Sample Factoring for Low-Rank Hyperspectral Image Recovery

机译:通过递归样品对低秩高光谱图像恢复的递归样本分解的双线性分解

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Low-rank hyperspectral image recovery (LRHSIR) is a very challenging task in various computer vision applications for its inherent complexity. Hyperspectral image (HSI) contains much more information than a regular image due to significant number of spectra bands and the spectral information can be considered as multiview. In this paper, a method of bilinear factorization via recursive sample factoring (BF-RSF) is proposed. Different from traditional low rank models with each data point being treated equally, the importance of each data point is measured by the sample factoring that imposes a penalty on each sample in our BF-RSF model. The sample factoring is a cosine similarity metric learnt from the angle between each data point and the principal component of the low-rank matrix in the feature space. That is, the closer a data point to the principal component vector, the more likely it is a clean data point. By imposing the sample factoring onto the training dataset, the outliers or noise will be detected and their effect will be suppressed. Therefore, a better low-rank structure of clean data can be obtained especially in a heavy noisy scenario, with the effect of noisy data points in modeling being suppressed. Extensive experimental results on SalinasA, demonstrate that BF-RSF outperforms state-of-the-art low-rank matrix recovery methods in image clustering tasks with various levels of corruptions.
机译:低等级的光谱图像恢复(LRHSIR)是在不同的计算机视觉应用其固有的复杂性非常具有挑战性的任务。高光谱图像(HSI)含有比普通图像更多的信息由于显著数光谱带和光谱信息可被认为是多视图。在本文中,通过递归样品保(BF-RSF)双线性因子分解的方法,提出了从传统的低级别车型与每个数据点不同而一视同仁,每个数据点的重要性是由样品测量保强加在我们的BF-RSF模型中的每个样本的罚款。将样品保是从每一个数据点,并在特征空间中的低秩矩阵的主成分之间的角度了解到的余弦相似性度量。也就是说,越靠近数据点以主成分向量,越有可能是一个干净的数据点。通过施加所述样品保到训练数据集,所述异常值或噪声将被检测和它们的作用将被抑制。因此,可以特别是在重嘈杂场景获得干净的数据的更好的低秩结构,具有噪声数据点的模型被抑制的效果。上SalinasA广泛的实验结果,证明与各级损坏的图像聚类任务即BF-RSF性能优于状态的最先进的低秩矩阵恢复方法。

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