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Robust fusion algorithms for unsupervised change detection between multi-band optical images - A comprehensive case study

机译:多频段光学图像之间无监督变化检测的鲁棒融合算法 - 全面的案例研究

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摘要

Unsupervised change detection techniques are generally constrained to two multi-band optical images acquired at different times through sensors sharing the same spatial and spectral resolution. In the case of the optical modality, largely studied in the remote sensing community, a straight comparison of homologous pixels such as pixel-wise differencing is suitable. However, in some specific cases such as emergency situations, punctual missions, defense and security, the only available images may be those acquired through different kinds of sensors with different resolutions. Recently some change detection techniques, dealing with images with different spatial and spectral resolutions, have been proposed. Nevertheless, they are focused on a specific scenario where one image has a high spatial and low spectral resolution while the other has a low spatial and high spectral resolution. This paper addresses the problem of detecting changes between any two multi-band optical images disregarding their spatial and spectral resolution disparities. To overcome resolution disparity, state-of-the art methods apply conventional change detection methods after preprocessing steps applied independently on the two images, e.g. resampling operations intended to reach the same spatial and spectral resolutions. Nevertheless, these preprocessing steps may waste relevant information since they do not take into account the strong interplay existing between the two images. Conversely, in this paper, we propose a method that more effectively uses the available information by modeling the two observed images as spatially and spectrally degraded versions of two (unobserved) latent images characterized by the same high spatial and high spectral resolutions. Covering the same scene, the latent images are expected to be globally similar except for possible changes in spatially sparse locations. Thus, the change detection task is envisioned through a robust fusion task which enforces the differences between the estimated latent images to be spatially sparse. We show that this robust fusion can be formulated as an inverse problem which is iteratively solved using an alternating minimization strategy. The proposed framework is implemented for an exhaustive list of applicative scenarios and applied to real multi-band optical images. A comparison with state-of-the-art change detection methods evidences the accuracy and the versatility of the proposed robust fusion-based strategy.
机译:无监督的改变检测技术通常受到在共享相同空间和光谱分辨率的不同时间获取的两个多频带光学图像。在光学模态的情况下,在很大程度上在遥感群落中研究,在诸如像素 - 明显差异的同源像素的直线比较是合适的。然而,在一些具体情况下,如紧急情况,准时的任务,防御和安全性,唯一可用的图像可能是通过不同分辨率的不同类型传感器获取的图像。最近,已经提出了一些改变检测技术,处理具有不同空间和光谱分辨率的图像。然而,它们专注于一种特定场景,其中一个图像具有高空间和低频分辨率,而另一个图像具有低空间和高光谱分辨率。本文解决了忽视其空间和光谱分辨率差异的任何两个多频带光学图像之间的检测问题的问题。为了克服解决差异,最先进的方法在预处理步骤上独立于两个图像上施加的预处理步骤后应用常规变化检测方法。重新采样操作旨在达到相同的空间和光谱分辨率。尽管如此,这些预处理步骤可能会浪费相关信息,因为他们没有考虑到两个图像之间存在的强大相互作用。相反,在本文中,我们提出了一种方法,通过将两个观察到的图像(不观察)潜在图像的空间和光谱劣化版本的图像建模更有效地使用所述可用信息的方法,所述两种(未观察)潜在的图像具有相同的高空间和高光谱分辨率。覆盖相同的场景,除了在空间稀疏位置的可能变化之外,潜伏图像预计将存在于全球相似。因此,通过强大的融合任务设想改变检测任务,该任务能够强制估计的潜像之间的差异在空间稀疏。我们表明,这种稳健的融合可以作为使用交替的最小化策略迭代地解决的逆问题。所提出的框架是用于穷举的应用场景列表,并应用于真实的多频带光学图像。与最先进的变更检测方法的比较证明了所提出的稳健融合策略的准确性和多功能性。

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