Radial correction distortion, applied by in-camera or out-camera software/firmware alters the supporting grid of the image so as to hamper PRNU-based camera attribution. Existing solutions to deal with this problem try to invert/estimate the correction using radial transformations parameterized with few variables in order to restrain the computational load; however, with ever more prevalent complex distortion corrections their performance is unsatisfactory. In this paper we propose an adaptive algorithm that by dividing the image into concentric annuli is able to deal with sophisticated corrections like those applied out-camera by third party software like Adobe Lightroom, Photoshop, Gimp and PT-Lens. We also introduce a statistic called cumulative peak of correlation energy (CPCE) that allows for an efficient early stopping strategy. Experiments on a large dataset of in-camera and out-camera radially corrected images show that our solution improves the state of the art in terms of both accuracy and computational cost.
翻译:由相机或相机外软件/硬件应用的辐射校正扭曲改变了图像的支撑网格,从而阻碍了基于 PPRNU 的相机归属。 解决这一问题的现有解决方案试图用用微小变量参数反转/估计校正,以限制计算负荷; 然而,由于日益普遍的复杂扭曲校正,它们的性能不尽如人意。 在本文中,我们提出了一个适应性算法,通过将图像分为同心绝迹,能够处理复杂的校正,如Adobe Lightroom、Photoshop、Gimp和PT-Lens等第三方软件在镜头外应用的校正。 我们还引入了一个称为相关能源累积峰值的统计数据(CPCE ), 以有效早期停用战略。 在相机内和外摄影机外校正图像的大规模数据集实验显示,我们的解决方案在准确性和计算成本方面都改善了艺术状态。</s>