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Non-uniform Motion Deblurring for Bilayer Scenes

机译:双层场景的非均匀运动脱模

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We address the problem of estimating the latent image of a static bilayer scene (consisting of a foreground and a background at different depths) from motion blurred observations captured with a handheld camera. The camera motion is considered to be composed of in-plane rotations and translations. Since the blur at an image location depends both on camera motion and depth, deblurring becomes a difficult task. We initially propose a method to estimate the transformation spread function (TSF) corresponding to one of the depth layers. The estimated TSF (which reveals the camera motion during exposure) is used to segment the scene into the foreground and background layers and determine the relative depth value. The deblurred image of the scene is finally estimated within a regularization framework by accounting for blur variations due to camera motion as well as depth.
机译:我们解决了通过用手持式相机捕获的运动模糊的观测来估计静态双层场景(由前景和背景的背景和背景)的潜像的问题。相机运动被认为是面内旋转和翻译。由于图像位置处的模糊取决于相机运动和深度,因此DeBlurring成为困难的任务。我们最初提出一种方法来估计对应于深度层之一的变换扩展功能(TSF)。估计的TSF(在曝光期间显示相机运动)用于将场景分段为前景和背景层并确定相对深度值。最终通过对摄像机运动和深度的模糊变化计入模糊变化,最终估计场景的去束缚图像。

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