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Blind Separation of Superimposed Moving Images Using Image Statistics

机译:利用图像统计技术对运动图像进行盲分离

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We address the problem of blind separation of multiple source layers from their linear mixtures with unknown mixing coefficients and unknown layer motions. Such mixtures can occur when one takes photos through a transparent medium, like a window glass, and the camera or the medium moves between snapshots. To understand how to achieve correct separation, we study the statistics of natural images in the Labelme data set. We not only confirm the well-known sparsity of image gradients, but also discover new joint behavior patterns of image gradients. Based on these statistical properties, we develop a sparse blind separation algorithm to estimate both layer motions and linear mixing coefficients and then recover all layers. This method can handle general parameterized motions, including translations, scalings, rotations, and other transformations. In addition, the number of layers is automatically identified, and all layers can be recovered, even in the underdetermined case where mixtures are fewer than layers. The effectiveness of this technology is shown in experiments on both simulated and real superimposed images.
机译:我们解决了混合系数未知和层运动未知的多个源层与其线性混合物的盲分离问题。当人们通过诸如窗玻璃之类的透明介质拍照,并且相机或介质在快照之间移动时,会发生这种混合。为了了解如何实现正确的分离,我们研究了Labelme数据集中的自然图像统计信息。我们不仅确认众所周知的图像梯度稀疏性,而且发现图像梯度的新联合行为模式。基于这些统计属性,我们开发了一种稀疏盲分离算法来估计层运动和线性混合系数,然后恢复所有层。此方法可以处理一般的参数化运动,包括平移,缩放,旋转和其他变换。此外,即使在混合物少于层的不确定情况下,也可以自动识别层数,并且可以恢复所有层。在模拟的和真实的叠加图像上的实验中都显示了该技术的有效性。

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