Invention Grant
- Patent Title: Image-to-image translation using unpaired data for supervised learning
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Application No.: US17096774Application Date: 2020-11-12
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Publication No.: US11615516B2Publication Date: 2023-03-28
- Inventor: Eric Elmoznino , Irina Kezele , Parham Aarabi
- Applicant: L'OREAL
- Applicant Address: FR Paris
- Assignee: L'OREAL
- Current Assignee: L'OREAL
- Current Assignee Address: FR Paris
- Agency: Oblon, McClelland, Maier & Neustadt, L.L.P.
- Main IPC: G06T5/50
- IPC: G06T5/50 ; G06N20/00 ; G06Q30/0601 ; G06K9/62

Abstract:
Techniques are provided for computing systems, methods and computer program products to produce efficient image-to-image translation by adapting unpaired datasets for supervised learning. A first model (a powerful model) may be defined and conditioned using unsupervised learning to produce a synthetic paired dataset from the unpaired dataset, translating images from a first domain to a second domain and images from the second domain to the first domain. The synthetic data generated is useful as ground truths in supervised learning. The first model may be conditioned to overfit the unpaired dataset to enhance the quality of the paired dataset (e.g. the synthetic data generated). A run-time model such as for a target device is trained using the synthetic paired dataset and supervised learning. The run-time model is small and fast to meet the processing resources of the target device (e.g. a personal user device such as a smart phone, tablet, etc.)
Public/Granted literature
- US20210150684A1 IMAGE-TO-IMAGE TRANSLATION USING UNPAIRED DATA FOR SUPERVISED LEARNING Public/Granted day:2021-05-20
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