基于近最优可分自适应提升方案的HDR图像色调映射方法

B. Thai, Anissa Zergaïnoh-Mokraoui, Basarab Matei
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引用次数: 0

摘要

本文提出了一种色调映射(Tone Mapping, TM)方法,将高动态范围(HDR)图像转换为低动态范围(LDR)图像,同时尽可能多地保留HDR图像的信息,以保证良好的LDR图像视觉质量。该方法基于可分离的近最优提升方案,采用自适应强预测步长。后者依赖于依赖于相邻系数的线性加权组合,然后在每个分辨率级别提取HDR图像中相关的最细细节。根据每个子带的熵值对近似系数和细节系数进行了修正。然后使用分段线性函数根据相对于人类视觉系统的感知量化器调整粗重构LDR图像的像素分布。与现有的竞争性TM方法相比,仿真结果在视觉质量和TMQI度量方面都提供了良好的结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
HDR Image Tone Mapping Approach based on Near Optimal Separable Adaptive Lifting Scheme
This paper proposes a Tone Mapping (TM) approach converting a High Dynamic Range (HDR) image into a Low Dynamic Range (LDR) image while preserving as much information of the HDR image as possible to ensure a good LDR image visual quality. This approach is based on a separable near optimal lifting scheme using an adaptive powerful prediction step. The latter relies on a linear weighted combination depending on the neighboring coefficients extracting then the relevant finest details in the HDR image at each resolution level. Moreover the approximation and detail coefficients are modified according to the entropy of each subband. The pixel's distribution of the coarse reconstructed LDR image is then adjusted according to a perceptual quantizer with respect to the human visual system using a piecewise linear function. Simulation results provide good results, both in terms of visual quality and TMQI metric, compared to existing competitive TM approaches.
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