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DCNN Augmentation via Synthetic Data from Variational Autoencoders and Generative Adversarial Networks

机译:DCNN通过来自变形自动泊车和生成对抗网络的合成数据的增强

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Deep convolutional neural networks have recently demonstrated incredible capabilities in areas such as image classification and object detection, but they require large datasets of quality pre-labeled data to achieve high levels of performance. Almost all data is not properly labeled when it is captured, and the process of manually labeling large enough datasets for effective learning is impractical in many real-world applications. New studies have shown that synthetic data, generated from a simulated environment, can be effective training data for DCNNs. However, synthetic data is only as effective as the simulation from which it is gathered, and there is often a significant trade-off between designing a simulation that properly models real-world conditions and simply gathering better real-world data. Using generative network architectures, such as Generative Adversarial Networks (GANs) and Variational Autoencoders (VAEs), it is possible to produce new synthetic samples based on the features of real-world data. This data can be used to augment small datasets to increase DCNN performance, similar to traditional augmentation methods such as scaling, translation, rotation, and adding noise. In this paper, we compare the advantages of synthetic data from GANs and VAEs to traditional data augmentation techniques. Initial results are promising, indicating that using synthetic data for augmentation can improve the accuracy of DCNN classifiers.
机译:深度卷积神经网络最近在图像分类和对象检测等领域中展示了令人难以置信的能力,但它们需要大量的质量预标记数据数据来实现高水平的性能。当捕获时,几乎所有数据都没有正确标记,并且在许多现实世界应用程序中手动标记足够大的数据集以进行有效学习的过程是不切实际的。新的研究表明,从模拟环境中产生的合成数据可以是DCNN的有效培训数据。然而,合成数据只有与收集的模拟一样有效,并且在设计模拟之间通常有一个重要的权衡,以便正确模拟现实世界的条件,并且只需收集更好的现实数据。使用生成网络架构,例如生成的对抗网络(GANS)和变形自动置换器(VAES),可以基于现实数据的特征来产生新的合成样本。该数据可用于增强小型数据集以增加DCNN性能,类似于传统的增强方法,例如缩放,转换,旋转和添加噪声。在本文中,我们将合成数据从GAN和VAE的合成数据与传统数据增强技术进行比较。初始结果很有希望,表明使用用于增强的合成数据可以提高DCNN分类器的准确性。

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