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Multi-view Separation of Background and Reflection by Coupled Low-Rank Decomposition

机译:低秩分解耦合的背景和反射多视图分离

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Images captured by a camera through glass often have reflection superimposed on the transmitted background. Among existing methods for reflection separation, multi-view methods are the most convenient to apply because they require the user to just take multiple images of a scene at varying viewing angles. Some of these methods are restricted to the simple case where the background scene and reflection scene are planar. The methods that handle non-planar scenes employ image feature flow to capture correspondence for image alignment, but they can overfit resulting in degraded performance. This paper proposes a multiple-view method for separating background and reflection based on robust principal component analysis. It models the background and reflection as rank-1 matrices, which are decomposed according to different transformations for aligning the background and reflection images. It can handle non-planar scenes and global reflection. Comprehensive test results show that our method is more accurate and robust than recent related methods.
机译:照相机通过玻璃拍摄的图像通常在反射的背景上叠加反射。在现有的用于反射分离的方法中,多视图方法是最方便应用的,因为它们要求用户仅以不同的视角拍摄场景的多个图像。这些方法中的某些方法仅限于背景场景和反射场景为平面的简单情况。处理非平面场景的方法使用图像特征流来捕获用于图像对齐的对应关系,但是它们可能过度拟合,从而导致性能下降。本文提出了一种基于鲁棒主成分分析的多视角分离背景和反射的方法。它将背景和反射建模为rank-1矩阵,根据不同的变换将其分解以对齐背景和反射图像。它可以处理非平面场景和全局反射。全面的测试结果表明,我们的方法比最近的相关方法更准确,更可靠。

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