估计低秩区域似然图

G. Csurka, Z. Kato, Andor Juhasz, M. Humenberger
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引用次数: 1

摘要

低秩区域捕获图像中具有几何意义的结构,这些结构包含典型的局部特征,如边缘、角落和各种规则、对称、经常重复的图案,这些特征通常在人造环境中发现。虽然这种模式对当前最先进的特征对应方法提出了挑战,但低秩纹理的恢复单应性很容易提供关于3D平面的3D结构,而无需事先了解该平面上的视觉信息。然而,对大量低秩区域的自动、高效检测一直是一个未解决的问题。在此,我们提出了一种新的自监督低秩区域检测深度网络,从图像中预测低秩似然图。我们的方法在真实世界数据集上的评估表明,它不仅可以可靠地预测图像中的低秩区域,类似于我们的基线方法,而且由于在训练阶段使用的数据增强,它可以很好地推广到基线预测失败的困难情况(例如白天/夜间照明,低对比度,曝光不足)。
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Estimating Low-Rank Region Likelihood Maps
Low-rank regions capture geometrically meaningful structures in an image which encompass typical local features such as edges, corners and all kinds of regular, symmetric, often repetitive patterns, that are commonly found in man-made environment. While such patterns are challenging current state-of-the-art feature correspondence methods, the recovered homography of a low-rank texture readily provides 3D structure with respect to a 3D plane, without any prior knowledge of the visual information on that plane. However, the automatic and efficient detection of the broad class of low-rank regions is unsolved. Herein, we propose a novel self-supervised low-rank region detection deep network that predicts a low-rank likelihood map from an image. The evaluation of our method on real-world datasets shows not only that it reliably predicts low-rank regions in the image similarly to our baseline method, but thanks to the data augmentations used in the training phase it generalizes well to difficult cases (e.g. day/night lighting, low contrast, underexposure) where the baseline prediction fails.
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