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Training Deep Networks with Synthetic Data: Bridging the Reality Gap by Domain Randomization

机译:用合成数据训练深层网络:通过域随机化弥合现实差距

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We present a system for training deep neural networks for object detection using synthetic images. To handle the variability in real-world data, the system relies upon the technique of domain randomization, in which the parameters of the simulator-such as lighting, pose, object textures, etc.-are randomized in non-realistic ways to force the neural network to learn the essential features of the object of interest. We explore the importance of these parameters, showing that it is possible to produce a network with compelling performance using only non-artistically-generated synthetic data. With additional fine-tuning on real data, the network yields better performance than using real data alone. This result opens up the possibility of using inexpensive synthetic data for training neural networks while avoiding the need to collect large amounts of hand-annotated real-world data or to generate high-fidelity synthetic worlds-both of which remain bottlenecks for many applications. The approach is evaluated on bounding box detection of cars on the KITTI dataset.
机译:我们提出了一种训练深度神经网络以使用合成图像进行目标检测的系统。为了处理现实世界数据中的可变性,系统依赖于域随机化技术,其中以非现实的方式随机化了模拟器的参数(例如照明,姿势,对象纹理等),以强制神经网络学习感兴趣对象的基本特征。我们探索了这些参数的重要性,表明仅使用非艺术性生成的合成数据就可以产生具有出色性能的网络。通过对真实数据进行额外的微调,与单独使用真实数据相比,网络可产生更好的性能。该结果提供了使用廉价的合成数据来训练神经网络的可能性,同时又避免了收集大量手工标注的真实世界数据或生成高保真合成世界的需要,而这两者仍然是许多应用程序的瓶颈。在KITTI数据集上对汽车的边界框检测进行了评估。

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