LEARNING TO GENERATE SYNTHETIC DATASETS FOR TRAINING NEURAL NETWORKS

In various examples, a generative model is used to synthesize datasets for use in training a downstream machine learning model to perform an associated task. The synthesized datasets may be generated by sampling a scene graph from a scene grammar-such as a probabilistic grammar- and applying the sce...

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Bibliographische Detailangaben
Hauptverfasser: Liu, Ming-Yu, Kar, Amlan, Barriuso, Antonio Torralba, Fidler, Sanja, Acuna Marrero, David Jesus, Prakash, Aayush
Format: Patent
Sprache:eng
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Zusammenfassung:In various examples, a generative model is used to synthesize datasets for use in training a downstream machine learning model to perform an associated task. The synthesized datasets may be generated by sampling a scene graph from a scene grammar-such as a probabilistic grammar- and applying the scene graph to the generative model to compute updated scene graphs more representative of object attribute distributions of real-world datasets. The downstream machine learning model may be validated against a real-world validation dataset, and the performance of the model on the real-world validation dataset may be used as an additional factor in further training or fine-tuning the generative model for generating the synthesized datasets specific to the task of the downstream machine learning model.