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Perception-based Image Similarity Metrics.

机译:基于感知的图像相似性指标。

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摘要

Image similarity metric is a traditional research field. Classical image processing techniques are used to design similarity metrics for all kinds of images, such as line drawings, gray or color image and even high-dynamic range (HDR) images. While existing metrics perform well for the tasks of comparing images in specified situations, few of them have systematically considered or examined the consistency with human perception required by practical applications. With the blooming of stereo devices, the similarity to be measured is not only the traditional visual difference between two images, but also the visual acceptance of two images when they are viewed simultaneously with 3D devices. This thesis presents two image similarity metrics motivated by perceptual principles, also with applications to demonstrate their novelty and practical values.;Alignment-Insensitive Shape Similarity Metric (AISS) measures shape similarity of line drawings. This metric can tolerate misalignment between two shapes and, simultaneously, accounts for the differences in transformation such as, position, orientation and scaling.;Binocular Viewing Comfort Predictor (BVCP) is another metric proposed to measure visual discomfort when human's two eyes view two different images simultaneously. According to a human vision phenomenon - binocular single vision, human vision is able to fuse two images with differences in detail, contrast and luminance, up to a certain limit. BVCP makes a first attempt in computer graphics to predict such visual comfort limit.;Applications are also proposed to evaluate AISS and BVCP. AISS is utilized in an application of Structure-based ASCII Art, which approximates line structure of the reference image content with the shapes of ASCII characters. BVCP is utilized in a novel framework - Binocular Tone Mapping which generates a binocular low-dynamic range (LDR) image pair from one HDR image. Such binocular LDR pair can be viewed with stereo devices and can preserve more human-perceivable visual content than traditional one single LDR image. Convincing results and user studies are also shown to demonstrate that both AISS and BVCP are consistent with human perception and effective in practical usage.
机译:图像相似性度量是传统的研究领域。经典的图像处理技术用于为各种图像(如线条图,灰度或彩色图像,甚至是高动态范围(HDR)图像)设计相似性度量。尽管现有指标在特定情况下比较图像的任务表现良好,但很少有系统地考虑或检查实际应用所需的与人类感知的一致性。随着立体声设备的蓬勃发展,要测量的相似度不仅是两个图像之间的传统视觉差异,而且是两个图像在3D设备中同时观看时的视觉接受度。本文提出了两种基于感知原理的图像相似性度量标准,并通过应用来证明它们的新颖性和实用价值。对准不敏感形状相似度度量标准(AISS)用于测量线条图的形状相似度。该度量标准可以容忍两种形状之间的不对齐,并同时说明了转换的差异,例如位置,方向和缩放比例。双眼观看舒适性预测器(BVCP)是另一种度量标准,旨在测量人的两只眼睛观看两只不同眼睛时的视觉不适图像同时。根据人类视觉现象-双目单视觉,人类视觉能够融合细节,对比度和亮度差异达到一定极限的两个图像。 BVCP首次尝试在计算机图形学中预测这种视觉舒适度极限。;还提出了评估AISS和BVCP的应用程序。 AISS用于基于结构的ASCII Art的应用程序中,该应用程序以ASCII字符的形状来近似参考图像内容的线结构。 BVCP用于一种新颖的框架-双眼色调映射,该映射从一个HDR图像生成双眼低动态范围(LDR)图像对。与传统的单个LDR图像相比,此类双目LDR对可以用立体声设备查看,并且可以保留更多的人类可感知的视觉内容。令人信服的结果和用户研究也表明,AISS和BVCP都符合人类的感知并且在实际使用中有效。

著录项

  • 作者

    Zhang, Linling.;

  • 作者单位

    The Chinese University of Hong Kong (Hong Kong).;

  • 授予单位 The Chinese University of Hong Kong (Hong Kong).;
  • 学科 Computer Science.
  • 学位 Ph.D.
  • 年度 2012
  • 页码 151 p.
  • 总页数 151
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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