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Zoom Based Super-Resolution: A Fast Approach Using Particle Swarm Optimization

机译:基于缩放的超分辨率:使用粒子群优化的快速方法

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Given a set of images captured using different integer zoom settings of a camera, we propose a fast approach to obtain super-resolution (SR) for the least zoomed image at a resolution of the most zoomed image. We first obtain SR approximation to the super-resolved image using a learning based approach that uses training database consisting of low-resolution (LR) and their high-resolution (HR) images. We model the LR observations as the aliased and noisy versions of their HR parts and estimate the decimation using the learned SR approximation and the available least zoomed observation. A discontinuity preserving Markov random field (MRF) is used as a prior and its parameters are estimated using the SR approximation. Finally Maximum a posteriori (MAP)-MRF formulation is used and the final cost function is optimized using particle swarm optimization (PSO) technique which is computationally efficient compared to simulated annealing, The proposed method can be used in multiresolution fusion for remotely sensed images where the available HR panchromatic image can be used to obtain HR multispectral images, Another interesting application is in immersive navigation for walk through application. Here one can change zoom setting without compromising on the spatial resolution.
机译:给定一组使用相机的不同整数变焦设置拍摄的图像,我们提出了一个快速的方法在最大缩小图像的分辨率来获得超分辨率(SR),以最少的放大图像。我们首先获得SR近似使用基于学习的方法,使用训练数据库由低分辨率(LR)和他们的高分辨率(HR)图像的超分辨图像。我们建模LR意见作为他们的人力资源零件的别名和嘈杂的版本,并使用学习SR逼近和可用至少放大观察估计抽取。的不连续性保持马尔可夫随机场(MRF)被用作事先和它的参数是使用SR近似估计。最后,使用最大后验(MAP)-MRF配方和最终成本函数是利用粒子群优化(PSO)技术相比,模拟退火是计算有效的优化,所提出的方法可以在多分辨率融合用于遥感图像,其中可用HR全色图像可以被用来获得HR多光谱图像,另一个有趣的应用是在用于通过应用步行身临其境的导航。在这里,人们可以改变变焦在不影响空间分辨率设置。

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