Apart from In-field Sensor Defects, are there Additional Age Traces Hidden in a Digital Image?

Robert Jöchl, A. Uhl
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引用次数: 2

Abstract

Approximating the age of a digital image based on traces left during the acquisition pipeline is at the core of temporal image forensics. Well-known and investigated traces are those caused by in-field sensor defects. The presence of these defects is exploited in two available age approximation methods. A very recent approach in this context, however, trains a Convolutional Neural Network for age approximation. A Convolutional Neural Network independently learns the classification features used. In this context, the following questions arise: how relevant is the presence of strong in-field sensor defects, or does the Convolutional Neural Network learn other age-related features (apart from strong in-field sensor defects)? We investigate these questions systematically on the basis of several experiments in this paper. Furthermore, we analyse whether the learned features are position invariant. This is important since selecting the right input patches is crucial for training a Convolutional Neural Network.
除了现场传感器缺陷外,数字图像中是否隐藏着额外的年龄痕迹?
基于采集过程中留下的痕迹来近似数字图像的年龄是时间图像取证的核心。众所周知和研究的痕迹是由现场传感器缺陷引起的。这些缺陷的存在是利用两种可用的年龄近似方法。然而,在这种情况下,最近的一种方法是训练卷积神经网络来近似年龄。卷积神经网络独立学习所使用的分类特征。在这种情况下,出现了以下问题:强场内传感器缺陷的存在有多相关,或者卷积神经网络是否学习其他与年龄相关的特征(除了强场内传感器缺陷)?本文在几个实验的基础上对这些问题进行了系统的探讨。进一步,我们分析了学习到的特征是否位置不变。这很重要,因为选择正确的输入补丁对于训练卷积神经网络至关重要。
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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