DeepGAN: Utilizing generative adversarial networks for improved deep learning

IF 0.6 Q4 COMPUTER SCIENCE, ARTIFICIAL INTELLIGENCE
E. V, Jenefa A, Thiyagu T.M, Lincy A, Antony Taurshia
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引用次数: 0

Abstract

In the realm of deep learning, Generative Adversarial Networks (GANs) have emerged as a topic of significant interest for their potential to enhance model performance and enable effective data augmentation. This paper addresses the existing challenges in synthesizing high-quality data and harnessing the capabilities of GANs for improved deep learning outcomes. Unlike traditional approaches that heavily rely on manually engineered data augmentation techniques, our work introduces a novel framework that leverages DeepGANs to autonomously generate diverse and high-fidelity data. Our experiments encompass a diverse spectrum of datasets, including images, text, and time series data. In the context of image classification tasks, we conduct experiments on the widely recognized CIFAR-10 dataset, which consists of 50,000 image samples. Our results demonstrate the remarkable efficacy of DeepGANs in enhancing model performance across various data domains. Notably, in image classification using the CIFAR-10 dataset, our innovative approach achieves an impressive accuracy of 97.2%. This represents a substantial advancement beyond conventional CNN models, underscoring the profound impact of DeepGANs in the realm of deep learning. In summary, this research sheds light on DeepGANs as a fundamental component in the pursuit of enhanced deep learning performance. Our framework not only overcomes existing limitations but also heralds a new era of data augmentation, with generative adversarial networks leading the way. The attainment of an accuracy rate of 97.2% on CIFAR-10 serves as a compelling testament to the transformative potential of DeepGANs, solidifying their pivotal role in the future of deep learning. This promises the development of more robust, adaptive, and accurate models across a myriad of applications, marking a significant contribution to the field.
DeepGAN:利用生成对抗网络改进深度学习
在深度学习领域,生成对抗网络(GANs)因其在提高模型性能和实现有效数据增强方面的潜力而成为备受关注的话题。本文探讨了在合成高质量数据和利用 GANs 的能力以提高深度学习成果方面存在的挑战。与严重依赖人工设计的数据增强技术的传统方法不同,我们的工作引入了一个新颖的框架,利用 DeepGANs 自主生成多样化的高保真数据。我们的实验涵盖了各种数据集,包括图像、文本和时间序列数据。在图像分类任务方面,我们在广受认可的 CIFAR-10 数据集上进行了实验,该数据集由 50,000 个图像样本组成。我们的结果表明,DeepGANs 在提高各种数据领域的模型性能方面具有显著功效。值得注意的是,在使用 CIFAR-10 数据集进行图像分类时,我们的创新方法达到了令人印象深刻的 97.2% 的准确率。这代表了超越传统 CNN 模型的重大进步,凸显了 DeepGAN 在深度学习领域的深远影响。总之,这项研究揭示了 DeepGANs 作为追求增强深度学习性能的基本组成部分的意义。我们的框架不仅克服了现有的局限性,还预示着以生成式对抗网络为主导的数据增强新时代的到来。在 CIFAR-10 上达到 97.2% 的准确率有力地证明了 DeepGANs 的变革潜力,巩固了其在未来深度学习中举足轻重的地位。这有望在众多应用中开发出更强大、更自适应、更准确的模型,为该领域做出重大贡献。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
CiteScore
2.10
自引率
0.00%
发文量
22
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