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Identifying Materials of Photographic Images and Photorealistic Computer Generated Graphics Based on Deep CNNs

机译:基于深CNN的识别摄影图像和光电温化计算机生成的图形材料

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摘要

Currently,some photorealistic computer graphics are very similar to photographic images.Photorealistic computer generated graphics can be forged as photographic images,causing serious security problems.The aim of this work is to use a deep neural network to detect photographic images(PI)versus computer generated graphics(CG).In existing approaches,image feature classification is computationally intensive and fails to achieve realtime analysis.This paper presents an effective approach to automatically identify PI and CG based on deep convolutional neural networks(DCNNs).Compared with some existing methods,the proposed method achieves real-time forensic tasks by deepening the network structure.Experimental results show that this approach can effectively identify PI and CG with average detection accuracy of 98%.
机译:目前,一些照片型计算机图形与摄影图像非常相似。光电图计算机生成的图形可以伪造为摄影图像,导致严重的安全问题。这项工作的目的是使用深神经网络来检测摄影图像(PI)与计算机相比生成的图形(CG)。在现有的方法中,图像特征分类是计算密集的,无法实现实时分析。本文提出了一种基于深度卷积神经网络(DCNNS)自动识别PI和CG的有效方法。与某些现有方法相比,所提出的方法通过深化网络结构来实现实时取证任务。实验结果表明,这种方法可以有效地识别PI和CG,平均检测精度为98%。

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