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Identifying natural images and computer-generated graphics based on convolutional neural network

机译:基于卷积神经网络识别自然图像和计算机生成的图形

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摘要

Aiming at the identification of natural images and computer-generated graphics, an image source pipeline forensics method based on convolutional neural network (CNN) is proposed. In this method, Inception-v3 is used as the basic network, and the pre-trained model parameters in ImageNet are adopted. The top-level classification layer of Inception-v3 is replaced by two fully-connected Softmax classifiers. With the transfer learning, a new network model is constructed. The network is fine-tuned by a database with 10,000 images to identify natural images and computer-generated graphics. Experimental results and analysis show that it can effectively identify natural images and computer-generated graphics, and it is robustness against JPEG compression, scaling, rotation, noise and other post-processing operations. Furthermore, the effect of Softmax classifier and SVM classifier on the experimental results are analysed.
机译:旨在识别自然图像和计算机产生的图形,提出了一种基于卷积神经网络(CNN)的图像源管道取证方法。 在此方法中,Inception-V3用作基本网络,采用预先训练的模型参数。 Inception-V3的顶级分类层由两个完全连接的SoftMax分类器代替。 随着转移学习,构建了一种新的网络模型。 网络由具有10,000个图像的数据库进行微调,以识别自然图像和计算机生成的图形。 实验结果和分析表明它可以有效地识别自然图像和计算机生成的图形,并且对JPEG压缩,缩放,旋转,噪声和其他后处理操作具有鲁棒性。 此外,分析了Softmax分类器和SVM分类器对实验结果的影响。

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