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Learning-based adaptive tone mapping for keypoint detection

机译:基于学习的KeyPoint检测的自适应色调映射

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The goal of tone mapping operators (TMOs) has traditionally been to display high dynamic range (HDR) pictures in a perceptually favorable way. However, when tone-mapped images are to be used for computer vision tasks such as keypoint detection, these design approaches are suboptimal. In this paper, we propose a new learning-based adaptive tone mapping framework which aims at enhancing keypoint stability under drastic illumination variations. To this end, we design a pixel-wise adaptive TMO which is modulated based on a model derived by Support Vector Regression (SVR) using local higher order characteristics. To circumvent the difficulty to train SVR in this context, we further propose a simple detection-similarity-maximization model to generate appropriate training samples using multiple images undergoing illumination transformations. We evaluate the performance of our proposed framework in terms of keypoint repeatability for state-of-the-art keypoint detectors. Experimental results show that our proposed learning-based adaptive TMO yields higher keypoint stability when compared to existing perceptually-driven state-of-the-art TMOs.
机译:音调映射运营商(TMOS)的目标传统上是以感知的是有利的方式显示高动态范围(HDR)图片。但是,当音调映射的图像用于计算机视觉任务(如Keypoint检测)时,这些设计方法是次优。在本文中,我们提出了一种新的基于学习的自适应色调映射框架,其旨在在激烈的照明变化下提高关键点稳定性。为此,我们设计了一种像素-Wise自适应TMO,其基于使用本地高阶特征的支持向量回归(SVR)导出的模型进行调制。为了在这种情况下避免急动训练SVR,我们进一步提出了一种简单的检测相似性 - 最大化模型,以使用经历照明变换的多个图像产生适当的训练样本。我们在最先进的Keypoint探测器的关键点重复性方面评估我们提出的框架的表现。实验结果表明,与现有感知驱动的最先进的TMOS相比,我们所提出的基于学习的自适应TMO产生更高的关键点稳定性。

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