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Recent Trends in Deep Generative Models: a Review

机译:深度生成型号的最新趋势:综述

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With the recent improvements in computation power and high scale datasets, many interesting studies have been presented based on discriminative models such as Convolutional Neural Network (CNN) and Recurrent Neural Network (RNN) for various classification problems. These models have achieved current state-of-the-art results in almost all applications of computer vision but not sufficient sampling out-of-data, understanding of data distribution. By pioneers of the deep learning community, generative adversarial training is defined as the most exciting topic of computer vision field nowadays. With the influence of these views and potential usages of generative models, many kinds of researches were conducted using generative models especially Generative Adversarial Network (GAN) and Autoencoder (AE) based models with an increasing trend. In this study, a comprehensive review of generative models with defining relations among them is presented for a better understanding of GANs and AEs by pointing the importance of generative models.
机译:随着最近计算能力和大规模数据集的改进,基于诸如卷积神经网络(CNN)和经常性神经网络(RNN)的鉴别型模型,已经提出了许多有趣的研究,用于各种分类问题。这些模型在计算机视觉的几乎所有应用中实现了当前的最先进,而是没有足够的采样超出数据,对数据分布的理解。通过深入学习界的先驱,生成的对抗性培训被定义为现在的计算机视野最令人兴奋的话题。随着这些观点和生成模型的潜在用途的影响,使用生成模型特别是生成的对抗网络(GaN)和基于AutoEncoder(AE)的模型进行了许多研究,其趋势越来越多。在这项研究中,通过指出生成模型的重要性,提出了对其中界定关系定义关系的综合审查,以便更好地了解GANS和AES。

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