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High-fidelity imaging : the computational models of the human visual system in high dynamic range video compression, visible difference prediction and image processing

机译:高保真成像:高动态范围视频压缩,可见差异预测和图像处理中人类视觉系统的计算模型

摘要

As new displays and cameras offer enhanced color capabilities, there is a need to extend the precision of digital content. High Dynamic Range (HDR) imaging encodes images and video with higher than normal bit-depth precision, enabling representation of the complete color gamut and the full visible range of luminance. This thesis addresses three problems of HDR imaging: the measurement of visible distortions in HDR images, lossy compression for HDR video, and artifact-free image processing. To measure distortions in HDR images, we develop a visual difference predictor for HDR images that is based on a computational model of the human visual system. To address the problem of HDR image encoding and compression, we derive a perceptually motivated color space for HDR pixels that can efficiently encode all perceivable colors and distinguishable shades of brightness. We use the derived color space to extend the MPEG-4 video compression standard for encoding HDR movie sequences. We also propose a backward-compatible HDR MPEG compression algorithm that encodes both a low-dynamic range and an HDR video sequence into a single MPEG stream. Finally, we propose a framework for image processing in the contrast domain. The framework transforms an image into multi-resolution physical contrast images (maps), which are then rescaled in just-noticeable-difference (JND) units. The application of the framework is demonstrated with a contrast-enhancing tone mapping and a color to gray conversion that preserves color saliency.
机译:由于新的显示器和照相机提供增强的色彩功能,因此需要扩展数字内容的精度。高动态范围(HDR)成像以比正常的位深度精度更高的精度对图像和视频进行编码,从而可以表示完整的色域和整个可见的亮度范围。本文解决了HDR成像的三个问题:HDR图像中可见失真的测量,HDR视频的有损压缩以及无伪像的图像处理。为了测量HDR图像中的失真,我们开发了基于人类视觉系统的计算模型的HDR图像视觉差异预测器。为了解决HDR图像编码和压缩的问题,我们为HDR像素导出了一种具有感知动机的色彩空间,该色彩空间可以有效地编码所有可感知的颜色和可区分的亮度阴影。我们使用派生的色彩空间扩展用于编码HDR电影序列的MPEG-4视频压缩标准。我们还提出了向后兼容的HDR MPEG压缩算法,该算法将低动态范围和HDR视频序列都编码为单个MPEG流。最后,我们提出了一个在对比域中进行图像处理的框架。该框架将图像转换为多分辨率物理对比图像(图),然后以恰到好处的差异(JND)单位重新缩放比例。框架的应用通过增强对比度的色调映射和保留颜色显着性的颜色到灰色转换来演示。

著录项

  • 作者

    Mantiuk Rafal;

  • 作者单位
  • 年度 2006
  • 总页数
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类

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