Sliding-window based low-rank matrix approximation (LRMA) is a technique widely used in hyperspectral images (HSIs) denoising or completion. However, the uncertainty quantification of the restored HSI has not been addressed to date. Accurate uncertainty quantification of the denoised HSI facilitates to applications such as multi-source or multi-scale data fusion, data assimilation, and product uncertainty quantification, since these applications require an accurate approach to describe the statistical distributions of the input data. Therefore, we propose a prior-free closed-form element-wise uncertainty quantification method for LRMA-based HSI restoration. Our closed-form algorithm overcomes the difficulty of the HSI patch mixing problem caused by the sliding-window strategy used in the conventional LRMA process. The proposed approach only requires the uncertainty of the observed HSI and provides the uncertainty result relatively rapidly and with similar computational complexity as the LRMA technique. We conduct extensive experiments to validate the estimation accuracy of the proposed closed-form uncertainty approach. The method is robust to at least 10% random impulse noise at the cost of 10-20% of additional processing time compared to the LRMA. The experiments indicate that the proposed closed-form uncertainty quantification method is more applicable to real-world applications than the baseline Monte Carlo test, which is computationally expensive. The code is available in the attachment and will be released after the acceptance of this paper.
翻译:在超光谱图像(HISI)拆卸或完成超光谱图像(HISI)中广泛使用的是一种技术,其结果是,对恢复的HSI的不确定性量化迄今尚未解决。对取消的HSI的准确不确定性量化有利于多源或多尺度数据聚合、数据同化和产品不确定性量化等应用,因为这些应用需要准确的方法来描述输入数据的统计分布。因此,我们提议为基于LRMA的HSI恢复采用一种事先免费的封闭式元素错误量化方法。我们的封闭式算法克服了传统LRMA进程中使用的滑动窗口战略造成的HSI补接合问题的难度。提议的方法只要求观察到的HSI的不确定性,并相对迅速地提供不确定性的结果,与LRMA技术相类似的计算复杂性。我们进行了广泛的实验,以验证拟议的封闭式定型不确定性方法的估计准确性。该方法坚固到至少10%的随机冲动噪音,费用为10-20 %的额外处理时间的费用。相对于可适用的LRMA的量化标准来说,拟议的模型将比可采用的升级标准更昂贵。