基于邻域嵌入的视觉基元流形图像幻觉

Wei-liang Fan, D. Yeung
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引用次数: 127

摘要

在本文中,我们提出了一种新的基于学习的图像幻觉方法,其中图像超分辨率是我们关注的一个具体应用。给定低分辨率图像,基于一组训练图像合成其底层高分辨率细节。为了建立一个紧凑的描述性训练集,我们研究了包含在大量小图像块中的特征局部结构。受流形学习研究进展的启发,我们假设低分辨率和高分辨率图像中的小图像块在相应的图像特征空间中形成具有相似局部几何形状的流形。这一假设导致了一种超分辨率方法,该方法通过特征空间中的邻域重构图像patch对应的特征向量。此外,还估计了重建图像块相关的残差,以补偿局部平均过程中的信息损失。实验结果表明,与其他方法相比,我们的幻觉方法可以合成更高质量的图像。
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Image Hallucination Using Neighbor Embedding over Visual Primitive Manifolds
In this paper, we propose a novel learning-based method for image hallucination, with image super-resolution being a specific application that we focus on here. Given a low-resolution image, its underlying higher-resolution details are synthesized based on a set of training images. In order to build a compact yet descriptive training set, we investigate the characteristic local structures contained in large volumes of small image patches. Inspired by progress in manifold learning research, we take the assumption that small image patches in the low-resolution and high-resolution images form manifolds with similar local geometry in the corresponding image feature spaces. This assumption leads to a super-resolution approach which reconstructs the feature vector corresponding to an image patch by its neighbors in the feature space. In addition, the residual errors associated with the reconstructed image patches are also estimated to compensate for the information loss in the local averaging process. Experimental results show that our hallucination method can synthesize higher-quality images compared with other methods.
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