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Style-transfer GANs for bridging the domain gap in synthetic pose estimator training

机译:用于桥接合成姿态估算器培训的域间隙的风格传输GAN

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Given the dependency of current CNN architectures on a large training set, the possibility of using synthetic data is alluring as it allows generating a virtually infinite amount of labeled training data. However, producing such data is a nontrivial task as current CNN architectures are sensitive to the domain gap between real and synthetic data.We propose to adopt general-purpose GAN models for pixel-level image translation, allowing to formulate the domain gap itself as a learning problem. The obtained models are then used either during training or inference to bridge the domain gap. Here, we focus on training the single-stage YOLO6D [20] object pose estimator on synthetic CAD geometry only, where not even approximate surface information is available. When employing paired GAN models, we use an edge-based intermediate domain and introduce different mappings to represent the unknown surface properties.Our evaluation shows a considerable improvement in model performance when compared to a model trained with the same degree of domain randomization, while requiring only very little additional effort.
机译:鉴于当前CNN架构对大型训练集的依赖性,使用合成数据的可能性是诱使的,因为它允许产生几乎无限的标记训练数据。但是,由于目前的CNN架构对实际和合成数据之间的域间隙敏感,因此产生这种数据是一个非活动任务。我们建议采用通用GAN模型进行像素级图像转换,允许将域间隙本身制定为一个学习问题。然后在训练期间使用所获得的模型,以推动域间隙。在这里,我们专注于训练单阶段Yolo6d [20]对象姿势估计在合成CAD几何上,其中甚至没有近似表面信息。在使用配对的GaN模型时,我们使用基于边缘的中间域并引入不同的映射以表示未知的表面属性。您的评估显示模型性能的相当大的改进,与在需要相同程度的域随机化的模型时,模型性能相当大的改进只是很少的额外努力。

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