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Single Frame Super-Resolution: A New Learning Based Approach and Use of IGMRF Prior

机译:单帧超分辨率:一种基于学习的新方法以及IGMRF的使用

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In this paper, we propose a new learning based approach for super-resolving an image captured at low spatial resolution. Given the low spatial resolution test image and a training set consisting of low and high spatial resolution images, all captured using the same camera, we obtain super-resolution for the test image. We propose a new wavelet based learning technique that learns the high frequency details for the test image from the training set and thus obtain an initial high resolution estimate. Since super-resolution is an ill-posed problem we solve it using regularization framework. We model the low resolution imageas the aliased and noisy version of the corresponding high resolution image and estimate the aliasing matrix using the test image and the initial high resolution (HR) estimate.The super-resolved image is modeled as an inhomogeneous Gaussian Markov Random Field (IGMRF) and the IGMRF prior model parameters are estimated using the initial HR estimate. Finally, the cost function formed is minimized using simple gradient descent approach. We demonstrate the effectiveness of the proposed approach by conducting experiments on gray scale as well as on color images. The method is compared with another existing learning-based approach which uses training set consisting of HR images only and employs Autoregressive (AR) and wavelet priors. The advantage of the our approach when compared to motion-based methods is that there is no need of multiple observations and also registration. The proposed approach can be used in applications such as wildlife sensor network where memory, transmission bandwidth and camera costare main constraints.
机译:在本文中,我们提出了一种新的基于学习的方法,用于以超高分辨率解析低空间分辨率下捕获的图像。给定低空间分辨率测试图像以及由低空间分辨率图像和高空间分辨率图像组成的训练集(均使用同一相机捕获),我们获得了测试图像的超分辨率。我们提出了一种新的基于小波的学习技术,该技术从训练集中学习测试图像的高频细节,从而获得初始的高分辨率估计。由于超分辨率是一个不适定的问题,因此我们使用正则化框架来解决它。我们将低分辨率图像建模为相应高分辨率图像的混叠和嘈杂版本,并使用测试图像和初始高分辨率(HR)估计来估计混叠矩阵。超分辨图像被建模为不均匀的高斯马尔可夫随机场(IGMRF)和IGMRF先前模型参数是使用初始HR估算值估算的。最后,使用简单的梯度下降方法将形成的成本函数最小化。我们通过在灰度级和彩色图像上进行实验来证明所提出方法的有效性。该方法与另一种现有的基于学习的方法进行了比较,后者仅使用由HR图像组成的训练集,并采用自回归(AR)和小波先验。与基于运动的方法相比,我们的方法的优势在于,无需多次观察和注册。所提出的方法可用于诸如内存,传输带宽和相机成本为主要约束条件的野生生物传感器网络等应用。

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