Generation of synthetic images for training a neural network model

Training deep neural networks requires a large amount of labeled training data. Conventionally, labeled training data is generated by gathering real images that are manually labelled which is very time-consuming. Instead of manually labelling a training dataset, domain randomization technique is use...

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Bibliographische Detailangaben
Hauptverfasser: Brophy, Mark A, Jampani, Varun, Birchfield, Stanley Thomas, To, Thang Hong, Acuna Marrero, David Jesus, Anil, Cem, Prakash, Aayush, Tremblay, Jonathan
Format: Patent
Sprache:eng
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Zusammenfassung:Training deep neural networks requires a large amount of labeled training data. Conventionally, labeled training data is generated by gathering real images that are manually labelled which is very time-consuming. Instead of manually labelling a training dataset, domain randomization technique is used generate training data that is automatically labeled. The generated training data may be used to train neural networks for object detection and segmentation (labelling) tasks. In an embodiment, the generated training data includes synthetic input images generated by rendering three-dimensional (3D) objects of interest in a 3D scene. In an embodiment, the generated training data includes synthetic input images generated by rendering 3D objects of interest on a 2D background image. The 3D objects of interest are objects that a neural network is trained to detect and/or label.