Optimizing tone mapping operators for keypoint detection under illumination changes

A. Rana, G. Valenzise, F. Dufaux
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引用次数: 11

Abstract

Tone mapping operators (TMO) have recently raised interest for their capability to handle illumination changes. However, these TMOs are optimized with respect to perception rather than image analysis tasks like key point detection. Moreover, no work has been done to analyze the factors affecting the optimization of TMOs for such tasks. In this paper, we investigate the influence of two factors-Correlation Coefficient (CC) and Repeatability Rate (RR) of the tone mapped images for the optimization of classical Retinex based models to enhance key point detection under illumination changes. CC-based optimized models aim at increasing the similarity of the tone mapped images. Conversely, RR-based optimized models quantify the optimal detection performance gains. By considering two simple Retinex based models, i.e., Gaussian and bilateral filtering, we show that estimating as precisely as possible the illumination, CC-based optimized models do not necessarily bring to optimal key point detection performance. We conclude that, instead, other criteria specific to RR-based optimized models should be taken into account. Moreover, large gains in performance with respect to existing popular TMOs motivate further research towards optimal tone mapping technique for computer vision applications.
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优化光照变化下关键点检测的音调映射算子
色调映射算子(TMO)最近因其处理光照变化的能力而引起了人们的兴趣。然而,这些tmo是针对感知而不是像关键点检测这样的图像分析任务进行优化的。此外,还没有对影响TMOs优化的因素进行分析。本文研究了色调映射图像的相关系数(correlation Coefficient, CC)和重复性率(Repeatability Rate, RR)两个因素对经典的基于Retinex的模型的影响,以增强光照变化下的关键点检测。基于cc的优化模型旨在提高色调映射图像的相似度。相反,基于rr的优化模型量化了最佳检测性能增益。通过考虑两种简单的基于Retinex的模型,即高斯滤波和双边滤波,我们表明,尽可能精确地估计照明,基于cc的优化模型不一定能带来最佳的关键点检测性能。我们的结论是,应该考虑其他特定于基于rr的优化模型的标准。此外,相对于现有流行的tmo,性能的大幅提高激发了对计算机视觉应用的最佳色调映射技术的进一步研究。
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