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首页> 外文期刊>IEEE transactions on systems, man, and cybernetics. Part B, Cybernetics >A learning-based method for image super-resolution from zoomed observations
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A learning-based method for image super-resolution from zoomed observations

机译:基于学习的缩放观测图像超分辨率方法

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摘要

We propose a technique for super-resolution imaging of a scene from observations at different camera zooms. Given a sequence of images with different zoom factors of a static scene, we obtain a picture of the entire scene at a resolution corresponding to the most zoomed observation. The high-resolution image is modeled through appropriate parameterization, and the parameters are learned from the most zoomed observation. Assuming a homogeneity of the high-resolution field, the learned model is used as a prior while super-resolving the scene. We suggest the use of either a Markov random field (MRF) or an simultaneous autoregressive (SAR) model to parameterize the field based on the computation one can afford. We substantiate the suitability of the proposed method through a large number of experimentations on both simulated and real data.
机译:我们提出了一种技术,可以根据不同相机变焦的观察结果对场景进行超分辨率成像。给定一系列具有静态场景的不同缩放因子的图像,我们以对应于最大缩放观察值的分辨率获得整个场景的图片。通过适当的参数化对高分辨率图像进行建模,然后从放大最大的观察值中学习参数。假定高分辨率场的均匀性,则在对场景进行超分辨率时,将学习的模型用作先验模型。我们建议使用马尔可夫随机场(MRF)或同时自回归(SAR)模型来基于可承受的计算参数化该场。通过大量的模拟和真实数据实验,我们证实了该方法的适用性。

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