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Localized forgery detection in hyperspectral document images

机译:高光谱文档图像中的局部伪造检测

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Hyperspectral imaging is emerging as a promising technology to discover patterns that are otherwise hard to identify with regular cameras. Recent research has shown the potential of hyperspectral image analysis to automatically distinguish visually similar inks. However, a major limitation of prior work is that automatic distinction only works when the number of inks to be distinguished is known a priori and their relative proportions in the inspected image are roughly equal. This research work aims at addressing these two problems. We show how anomaly detection combined with unsupervised clustering can be used to handle cases where the proportions of pixels belonging to the two inks are highly unbalanced. We have performed experiments on the publicly available UWA Hyperspectral Documents dataset. Our results show that INFLO anomaly detection algorithm is able to best distinguish inks for highly unbalanced ink proportions.
机译:高光谱成像正在成为一种有前途的技术,可以发现常规摄像机难以识别的图像。最近的研究表明,高光谱图像分析具有潜力,可以自动区分视觉上相似的墨水。但是,现有技术的主要局限在于,只有在先验地知道待区分的墨水数量并且它们在被检图像中的相对比例大致相等时,自动区分才起作用。这项研究工作旨在解决这两个问题。我们展示了异常检测与无监督聚类相结合可以如何处理属于两种墨水的像素比例高度不平衡的情况。我们已经对可公开获取的西澳大学高光谱文档数据集进行了实验。我们的结果表明,INFLO异常检测算法能够最好地区分高度不平衡的墨水比例的墨水。

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