Image retargeting using a bandelet-based similarity measure

A. Maalouf, M. Larabi
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引用次数: 5

Abstract

Media content retargeting aims to adapt images/ videos to displays of large or small sizes. In this work, we propose a bandelet-based image retargeting algorithm for summarizing image data into smaller sizes. First, we define a multi-scale bandelet-based perceptual similarity measure which measures the geometric and perceptual similarities between two images at different bandelet scales. Two images are said to be geometrically similar if they have approximately the same geometric flow and quadtree structure. After determining the geometric similarity, a perceptual similarity measure based on the properties of the human visual system is defined to assess the perceptual difference between the original image and the retargeted one. Then, the problem of image retargeting is considered as a geometric optimization problem based on the bandelet-based geometric and perceptual similarity measures. That is, for an image S we search for a retargeted image T that contains as much as possible of geometric and perceptual information from S and, consequently, preserves visual coherence. The proposed retargeting algorithm outperforms the state-of-the-art methods in terms of the visual quality of the retargeted image.
使用基于频带的相似度度量的图像重定位
媒体内容重定向的目的是使图像/视频适应大尺寸或小尺寸的显示。在这项工作中,我们提出了一种基于带宽的图像重定位算法,用于将图像数据汇总为更小的尺寸。首先,我们定义了一种基于多尺度小波的感知相似性度量,该度量在不同小波尺度下两幅图像之间的几何和感知相似性。如果两个图像具有大致相同的几何流和四叉树结构,则称为几何相似。在确定几何相似度之后,定义了基于人类视觉系统特性的感知相似度度量来评估原始图像与重定位图像之间的感知差异。然后,将图像重定位问题视为基于带波的几何相似度和感知相似度度量的几何优化问题。也就是说,对于图像S,我们搜索重定向图像T,它包含尽可能多的来自S的几何和感知信息,从而保持视觉一致性。所提出的重定位算法在重定位图像的视觉质量方面优于目前最先进的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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