Super Resolution Using Neural Network

V. Patil, D. Bormane, V. S. Pawar
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引用次数: 17

Abstract

Super resolution imaging refers to inferring the missing high resolution image from low resolution image(s). Super resolution methods are generally classified into reconstruction based and learning based methods. The learning based methods fully learn the intensity prior between all bands of images. For most of these, some fake information can be inevitably introduced into synthesized high resolution image though the image may offer visually good effects. For medical image analysis, it might deteriorate the image analysis and diagnosis performance. In this paper we propose a better learning using real image training set that enhances the high frequency information. The method exploits richness of real-world images. The training set is preprocessed images so as to extract the structural correlation. The technique learns the fine details that correspond to different image structures seen at a low-resolution and then uses those learned relationships to predict fine details in other images.
使用神经网络的超分辨率
超分辨率成像是指从低分辨率图像中推断出缺失的高分辨率图像。超分辨方法一般分为基于重建的方法和基于学习的方法。基于学习的方法充分学习了图像各波段之间的强度先验。在大多数情况下,合成的高分辨率图像虽然可以提供良好的视觉效果,但不可避免地会引入一些虚假信息。在医学图像分析中,它可能会降低图像分析和诊断的性能。本文提出了一种利用真实图像训练集增强高频信息的学习方法。该方法利用了真实世界图像的丰富性。训练集是经过预处理的图像,以提取结构相关性。该技术学习在低分辨率下看到的不同图像结构对应的精细细节,然后使用这些学习到的关系来预测其他图像中的精细细节。
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