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Feature based classification of computer graphics and real images

机译:基于特征的计算机图形和真实图像分类

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Photorealistic images can now be created using advanced techniques in computer graphics (CG). Synthesized elements could easily be mistaken for photographic (real) images. Therefore we need to differentiate between CG and real images. In our work, we propose and develop a new framework based on an aggregate of existing features. Our framework has a classification accuracy of 90% when tested on the de facto standard Columbia dataset, which is 4% better than the best results obtained by other prominent methods in this area. We further show that using feature selection it is possible to reduce the feature dimension of our framework from 557 to 80 without a significant loss in performance (Lt 1%). We also investigate different approaches that attackers can use to fool the classification system, including creation of hybrid images and histogram manipulations. We then propose and develop filters to effectively detect such attacks, thereby limiting the effect of such attacks to our classification system.
机译:现在可以使用计算机图形学(CG)中的高级技术创建逼真的图像。合成元素很容易被误认为摄影(真实)图像。因此,我们需要区分CG和真实图像。在我们的工作中,我们建议并开发基于现有功能汇总的新框架。在事实上的标准Columbia数据集上进行测试时,我们的框架的分类精度为90%,比该领域其他主要方法获得的最佳结果高4%。我们进一步证明,使用特征选择可以将框架的特征尺寸从557减少到80,而不会造成性能上的显着损失(Lt 1%)。我们还研究了攻击者可以用来欺骗分类系统的不同方法,包括创建混合图像和直方图操作。然后,我们提出并开发过滤器以有效检测此类攻击,从而将此类攻击的影响限制在我们的分类系统中。

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