Invention Grant
- Patent Title: Systems and methods for contrastive learning of visual representations
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Application No.: US17863070Application Date: 2022-07-12
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Publication No.: US11847571B2Publication Date: 2023-12-19
- Inventor: Ting Chen , Geoffrey Everest Hinton , Simon Kornblith , Mohammad Norouzi
- Applicant: Google LLC
- Applicant Address: US CA Mountain View
- Assignee: GOOGLE LLC
- Current Assignee: GOOGLE LLC
- Current Assignee Address: US CA Mountain View
- Agency: Dority & Manning, P.A.
- Main IPC: G06V10/00
- IPC: G06V10/00 ; G06N3/084 ; G06N3/08 ; G06F18/21 ; G06F18/241 ; G06F18/214 ; G06V10/764 ; G06V10/774 ; G06V10/778

Abstract:
Systems, methods, and computer program products for performing semi-supervised contrastive learning of visual representations are provided. For example, the present disclosure provides systems and methods that leverage particular data augmentation schemes and a learnable nonlinear transformation between the representation and the contrastive loss to provide improved visual representations. Further, the present disclosure also provides improvements for semi-supervised contrastive learning. For example, computer-implemented method may include performing semi-supervised contrastive learning based on a set of one or more unlabeled training data, generating an image classification model based on a portion of a plurality of layers in a projection head neural network used in performing the contrastive learning, performing fine-tuning of the image classification model based on a set of one or more labeled training data, and after performing the fine-tuning, distilling the image classification model to a student model comprising a relatively smaller number of parameters than the image classification model.
Public/Granted literature
- US20220374658A1 Systems and Methods for Contrastive Learning of Visual Representations Public/Granted day:2022-11-24
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