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引用次数: 0

摘要

源摄像机识别是一个用于图像认证的取证问题。识别目标是通过数字图像确定相机的模型。目前,最成功的源摄像机识别方法是利用神经网络对摄像机模型进行分类。在我的研究中,我对hawiger和Riess提出的基于effentnetb5神经网络的源摄像机识别方法进行了验证和修改。该方法实现简单,在相机模型分类中具有很高的效率。然而,我证明了原始方法的性能被高估了。因此,我提出了使用BagNet9网络对原有方法进行修改。在Forcheim图像数据集上的实验结果表明,改进后的方法比原方法具有明显的相机识别精度。因此,BagNet9在相机识别方面比EfficientNetB5更有效。
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Source Camera Identification Using Neural Networks
Source camera identification is a forensic problem used for image authentication. The identification goal is to determine the camera model by digital image. At present, the most prosperous approach to source camera identification applies neural networks to classify camera models. In my research, I provide verification and modification of the source camera identification method based on the EfficientNetB5 neural network proposed by Hadwiger and Riess. The original method is very simple in implementation and it is reported to be very efficient in camera model classification. However, I demonstrate that the original method’s performance was overestimated. Therefore, I proposed a modification of the original method using the BagNet9 network. The experimental results with Forcheim Image Dataset show that modified method gives significantly better camera identification accuracy than the original method. Thus, BagNet9 is more effective in terms of camera identification than EfficientNetB5.
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