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Simultaneous estimation of super-resolved intensity and depth maps from low resolution defocused observations of a scene

机译:从场景的低分辨率散焦观测值同时估算超分辨强度和深度图

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This paper presents a novel technique to simultaneously estimate the depth map and the focused image of a scene, both at a super-resolution, from its defocused observations. Given a sequence of low resolution, blurred and noisy observations of a static scene, the problem is to generate a dense depth map at a resolution higher than one that can be generated from the observations as well as to estimate the true focused, super-resolved image. Both the depth and the intensity maps are modeled as separate Markov random fields (MRF) and a maximum a posteriori estimation method is used to recover the high resolution fields. Since there is no relative motion between the scene and the camera, as is the case with most of the super-resolution and structure recovery techniques, we do away with the correspondence problem.
机译:本文提出了一种新颖的技术,可以根据其散焦观测值同时以超分辨率同时估计场景的深度图和聚焦图像。给定一系列静态场景的低分辨率,模糊和嘈杂的观测值,问题在于以比可以从观测值生成的分辨率更高的分辨率生成密集的深度图,并估计真正的聚焦,超分辨率图像。深度图和强度图都被建模为单独的马尔可夫随机场(MRF),并且使用最大后验估计方法来恢复高分辨率场。由于场景和相机之间没有相对运动,这与大多数超分辨率和结构恢复技术一样,因此我们消除了对应问题。

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