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Conditional multichannel generative adversarial networks with an application to traffic signs representation learning

机译:有条件的多通道生成对抗网络,其应用于交通标志表示学习

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Generative adversarial networks (GANs) are known to produce photorealistic representations. However, we show in this study that this is only valid when the input channels come from a regular RGB camera sensor. In order to alleviate this shortcoming, we propose a general solution to which we refer to as multichannel GANs (MCGANs). In contrast to the existing approaches, MCGANs can process multiple channels with different textures and resolutions. This is achieved by using known concepts in deep learning such as weight sharing and specially separated convolutions. The proposed pipeline enables particular kernels to learn low-level characteristics from the different channels without the need for exhaustive hyper-parameter tuning. We demonstrate the improved representational ability of the framework on traffic sign samples that are captured by a camera with a so-called red-clear-clear-clear pixel topology. Furthermore, we extend our solution by applying the concept of conditions, that offers a whole spectrum of new features, especially for the generation of traffic signs. Throughout this paper, we further discuss relevant applications for the generated synthetic data.
机译:已知产生生成的对抗网络(GANS)产生光膜拟真的表示。但是,我们在本研究中展示,当输入通道来自常规RGB相机传感器时,这仅适用于。为了减轻这种缺点,我们提出了一般的解决方案,我们将其称为多通道GAN(MCGANS)。与现有方法相比,McGans可以处理具有不同纹理和分辨率的多个频道。这是通过在深度学习中使用的已知概念,例如重量共享和特殊分离的卷曲。所提出的管道使特定的内核能够从不同的信道中学习低级特征,而无需详尽的超参数调整。我们展示了通过带有所谓的红色清晰清晰的像素拓扑捕获的交通标志样本上的框架的提高能力。此外,我们通过应用条件的概念来扩展我们的解决方案,该方法提供了整个新功能,特别是对于交通标志的产生。在本文中,我们进一步讨论了生成的合成数据的相关申请。

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