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A System For Identifying Synthetic Images Using Lstm: A Deep Learning Approach

机译:使用LSTM识别合成图像的系统:深入学习方法

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In the current scenario Generative Adversarial Network (GAN) is generating more exhilaration in various fields with an amazing growth of it can be seen over a few years. It is very much successful in generating synthetic images over natural images. These are unsupervised neural networks that are capable of creating new image samples based on the training process they have adapted from the information that has been fed to them. On the other hand, Long Short Term Memory (LSTM) is one type of Recurrent Neural Network (RNN) mainly used in the domain facing sequence prediction issues. In this paper, the GAN is considered a Generator, and the LSTM is considered a Discriminator. The work of the generator is to produce synthetic images out of random samples. Based on the finetune training, it can produce a perfect fake image that is difficult to identify as a real one. The same is fed to the LSTM network along with the real images, and the finetune training is performed to get more perfect synthetic images. Both facial datasets, as well as abstract art dataset available opensource, is taken for training and testing. From this research, it is proven that Generative Adversarial Network (GAN) and Long ShortTerm Memory (LSTM) are the networks utilized, and the accuracies were found to be 58.53% and 72.68%, respectively, which explicitly proves that synthetic images are more clearly identified by the LSTM over GANs.
机译:在目前的情景生成的对策网络(GaN)在几年内可以看到各种领域的各个领域产生更多兴奋。在自然图像上产生合成图像非常成功。这些是无监督的神经网络,其能够基于从已从已馈送到它们的信息的培训过程创建新的图像样本。另一方面,长短短期内存(LSTM)是一种类型的复发性神经网络(RNN),主要用于面向序列预测问题。在本文中,GaN被认为是发电机,LSTM被认为是鉴别器。发电机的工作是从随机样品中产生合成图像。基于Finetune培训,它可以产生一个完美的假图像,这很难识别真实的图像。与实际图像一起向LSTM网络馈送到相同的内容,并且执行Finetune训练以获得更完美的合成图像。面部数据集以及抽象的Art DataSet可用OpenSource,用于培训和测试。据证明,生成的对抗性网络(GaN)和长期的短路记忆(LSTM)是利用的网络,发现精度分别为58.53%和72.68%,明确证明了合成图像更清楚由GANS的LSTM确定。

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