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Learning-Based Tone Mapping Operator for Efficient Image Matching

机译:基于学习的色调映射运算符,用于高效的图像匹配

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摘要

In this paper, we propose a new framework to optimally tone map the high dynamic range (HDR) content for image matching under drastic illumination variations. Since tone mapping operators (TMO) have traditionally been used for displaying HDR scenes, their design is suboptimal when used for computer vision tasks, such as image matching. We address this suboptimality by proposing a two-step framework, consisting of: first, a luminance-invariant guidance model based on a support vector regressor (SVR) to optimally adapt the tone mapping function for image matching; and second, an energy maximization model to generate appropriate training samples for learning the SVR. At each step, we collectively address both stages of keypoint detection and descriptor extraction in the feature matching framework. By locally altering the intrinsic characteristics of the tone mapping function, the learned guidance model facilitates the extraction of local invariant features in the presence of illumination variations. We demonstrate that the proposed TMO significantly outperforms perceptually driven state-of-the-art TMOs on a dataset of HDR scenes characterized by challenging lighting variations, such as dayight transitions.
机译:在本文中,我们提出了一个新的框架来优化色调映射,以适应剧烈变化下的图像匹配的高动态范围(HDR)内容。由于传统上已使用色调映射运算符(TMO)来显示HDR场景,因此在用于计算机视觉任务(例如图像匹配)时,其设计是次优的。我们通过提出一个两步框架来解决这种次优问题,该框架包括:首先,基于支持向量回归(SVR)的亮度不变指导模型,以最佳地调整色调映射函数以进行图像匹配;第二,一个能量最大化模型,以生成适当的训练样本以学习SVR。在每个步骤中,我们共同解决特征匹配框架中关键点检测和描述符提取的两个阶段。通过局部改变色调映射函数的固有特性,学习的指导模型可在存在光照变化的情况下促进局部不变特征的提取。我们证明,在以挑战性的照明变化(例如昼夜转换)为特征的HDR场景数据集上,拟议的TMO明显优于感知驱动的最新TMO。

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