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Learning-based tone mapping operator for image matching

机译:基于学习的色调映射运算符,用于图像匹配

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In this paper, we propose a new framework to optimally tone-map a high dynamic range (HDR) content for image matching under drastic illumination variations. This task is of fundamental importance for many computer vision applications. To design such a framework, we build a luminance invariant guidance model using a Support Vector Regressor (SVR) and learn it to facilitate the extraction of invariant descriptors from scenes subject to wide variety of appearance changes such as dayight transition. To this end, we initially generate appropriate training samples using a simple similarity-maximization mechanism. We then employ the learned model to predict optimal modulation maps that help to locally alter the intrinsic characteristics (such as shape, size) of the tone mapping function. We evaluate the proposed model performance in terms of matching score and mean average precision rate using state-of-the-art descriptor extraction schemes. We demonstrate that our tone mapping framework significantly outperforms the existing perceptually-driven state-of-the-art TMOs on the benchmark datasets.
机译:在本文中,我们提出了一个新的框架来优化色调映射高动态范围(HDR)内容,以便在剧烈的光照变化下进行图像匹配。对于许多计算机视觉应用程序而言,此任务至关重要。为了设计这样的框架,我们使用支持向量回归(SVR)构建亮度不变的指导模型,并学习该模型以促进从受各种外观变化(例如昼夜转换)的场景中提取不变描述符。为此,我们首先使用简单的相似度最大化机制生成适当的训练样本。然后,我们使用学习的模型来预测最佳调制映射,以帮助局部更改色调映射函数的固有特性(例如形状,大小)。我们使用最先进的描述符提取方案,根据匹配分数和平均平均准确率评估提出的模型性能。我们证明了我们的音调映射框架大大优于基准数据集上现有的感知驱动的最新TMO。

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