Impact of photometric transformations on PRNU estimation schemes: A case study using near infrared ocular images

Sudipta Banerjee, A. Ross
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引用次数: 7

Abstract

The principle of Photo Response Non Uniformity (PRNU) is often used to link a digital image with the sensor that produced it. In this regard, a number of schemes have been proposed in the literature to extract PRNU details from a given input image. In this work, we study the impact of photometric transformations applied to near-infrared ocular images, on PRNU-based iris sensor identification accuracy. The contributions of this work are as follows: (a) Firstly, we evaluate the impact of 7 different photometric transformations on 4 different PRNU-based sensor identification schemes; (b) Secondly, we develop an explanatory model based on the Jensen-Shannon divergence measure to analyze the conditions under which these PRNU estimation schemes fail on photometrically transformed images. The analysis is conducted using 9,626 ocular images pertaining to 11 different iris sensors. Experiments suggest that (a) the Enhanced Sensor Pattern Noise and Maximum Likelihood Estimation based Sensor Pattern Noise techniques are more robust to photometric transformations than other PRNU-based schemes; (b) the application of photometric transformations actually improves the performance of the Phase Sensor Pattern Noise scheme; (c) the single-scale Self Quotient Image (SQI) and Difference of Gaussians (DoG) filtering transformations adversely impact all 4 PRNU-based schemes considered in this work; and (d) the Jensen-Shannon divergence measure is able to explain the degradation in performance of PRNU-based schemes as a function of the photometrically modified images.
光度变换对PRNU估计方案的影响:使用近红外眼图像的案例研究
光响应非均匀性(PRNU)的原理通常用于连接数字图像与产生它的传感器。在这方面,文献中提出了一些方案,从给定的输入图像中提取PRNU细节。在这项工作中,我们研究了应用于近红外眼图像的光度变换对基于prnu的虹膜传感器识别精度的影响。本工作的贡献如下:(a)首先,我们评估了7种不同的光度变换对4种基于prnu的传感器识别方案的影响;(b)其次,我们建立了一个基于Jensen-Shannon散度测度的解释模型,分析了这些PRNU估计方案在光度变换图像上失败的条件。分析使用了11种不同虹膜传感器的9626张眼部图像。实验表明:(a)增强传感器模式噪声和基于最大似然估计的传感器模式噪声技术比其他基于prnu的方案对光度变换具有更强的鲁棒性;(b)光度变换的应用实际上提高了相位传感器模式噪声方案的性能;(c)单尺度自商图像(SQI)和高斯差分(DoG)滤波变换对本研究中考虑的所有4种基于prnu的方案都有不利影响;(d) Jensen-Shannon散度度量能够解释基于prnu的方案的性能下降作为光度修改图像的函数。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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