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公开(公告)号:US11481617B2
公开(公告)日:2022-10-25
申请号:US16253561
申请日:2019-01-22
Applicant: Adobe Inc.
Inventor: Mayank Singh , Nupur Kumari , Dhruv Khattar , Balaji Krishnamurthy , Abhishek Sinha
Abstract: The present disclosure relates to systems, methods, and non-transitory computer readable media for generating trained neural network with increased robustness against adversarial attacks by utilizing a dynamic dropout routine and/or a cyclic learning rate routine. For example, the disclosed systems can determine a dynamic dropout probability distribution associated with neurons of a neural network. The disclosed systems can further drop neurons from a neural network based on the dynamic dropout probability distribution to help neurons learn distinguishable features. In addition, the disclosed systems can utilize a cyclic learning rate routine to force copy weights of a copy neural network away from weights of an original neural network without decreasing prediction accuracy to ensure that the decision boundaries learned are different.
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公开(公告)号:US20200234110A1
公开(公告)日:2020-07-23
申请号:US16253561
申请日:2019-01-22
Applicant: Adobe Inc.
Inventor: Mayank Singh , Nupur Kumari , Dhruv Khattar , Balaji Krishnamurthy , Abhishek Sinha
Abstract: The present disclosure relates to systems, methods, and non-transitory computer readable media for generating trained neural network with increased robustness against adversarial attacks by utilizing a dynamic dropout routine and/or a cyclic learning rate routine. For example, the disclosed systems can determine a dynamic dropout probability distribution associated with neurons of a neural network. The disclosed systems can further drop neurons from a neural network based on the dynamic dropout probability distribution to help neurons learn distinguishable features. In addition, the disclosed systems can utilize a cyclic learning rate routine to force copy weights of a copy neural network away from weights of an original neural network without decreasing prediction accuracy to ensure that the decision boundaries learned are different.
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公开(公告)号:US20220138897A1
公开(公告)日:2022-05-05
申请号:US17088120
申请日:2020-11-03
Applicant: ADOBE INC.
Inventor: Mayank Singh , Parth Patel , Nupur Kumari , Balaji Krishnamurthy
Abstract: This disclosure includes technologies for image processing, particularly for image generation and editing in a configurable semantic direction. A generative adversarial network is trained with an auxiliary network with an auxiliary task that is designed to disentangle the latent space of the generative adversarial network. Resultantly, a new type of GAN is created to improve image generation or editing in both conditional and unconditional settings.
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公开(公告)号:US11107115B2
公开(公告)日:2021-08-31
申请号:US16057743
申请日:2018-08-07
Applicant: Adobe Inc.
Inventor: Pankhri Singhai , Sundeep Parsa , Piyush Gupta , Nupur Kumari , Nikaash Puri , Mayank Singh , Eshita Shah , Balaji Krishnamurthy , Akash Rupela
IPC: G06Q30/00 , G06Q30/02 , G06N20/00 , G05B19/418
Abstract: Machine-learning based multi-step engagement strategy modification is described. Rather than rely heavily on human involvement to manage content delivery over the course of a campaign, the described learning-based engagement system modifies a multi-step engagement strategy, originally created by an engagement-system user, by leveraging machine-learning models. In particular, these leveraged machine-learning models are trained using data describing user interactions with delivered content as those interactions occur over the course of the campaign. Initially, the learning-based engagement system obtains a multi-step engagement strategy created by an engagement-system user. As the multi-step engagement strategy is deployed, the learning-based engagement system randomly adjusts aspects of the sequence of deliveries for some users. Based on data describing the interactions of recipients with deliveries served according to both the user-created and random multi-step engagement strategies, the machine-learning models generate a modified multi-step engagement strategy.
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公开(公告)号:US20210124993A1
公开(公告)日:2021-04-29
申请号:US16661617
申请日:2019-10-23
Applicant: Adobe Inc.
Inventor: Mayank Singh , Puneet Mangla , Nupur Kumari , Balaji Krishnamurthy , Abhishek Sinha
Abstract: The present disclosure relates to systems, methods, and non-transitory computer readable media for training a classification neural network to classify digital images in few-shot tasks based on self-supervision and manifold mixup. For example, the disclosed systems can train a feature extractor as part of a base neural network utilizing self-supervision and manifold mixup. Indeed, the disclosed systems can apply manifold mixup regularization over a feature manifold learned via self-supervised training such as rotation training or exemplar training. Based on training the feature extractor, the disclosed systems can also train a classifier to classify digital images into novel classes not present within the base classes used to train the feature extractor.
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公开(公告)号:US10609434B2
公开(公告)日:2020-03-31
申请号:US16057729
申请日:2018-08-07
Applicant: Adobe Inc.
Inventor: Pankhri Singhai , Sundeep Parsa , Piyush Gupta , Nikaash Puri , Eshita Shah , Balaji Krishnamurthy , Nupur Kumari , Mayank Singh , Akash Rupela
IPC: H04N21/25 , H04N21/2668 , H04N21/258 , H04N21/475 , G06N20/00 , H04N21/81 , G06Q30/02
Abstract: Machine-learning based multi-step engagement strategy generation and visualization is described. Rather than rely heavily on human involvement to create delivery strategies, the described learning-based engagement system generates multi-step engagement strategies by leveraging machine-learning models trained using data describing historical user interactions with content delivered in connection with historical campaigns. Initially, the learning-based engagement system obtains data describing an entry condition and an exit condition for a campaign. Based on the entry and exit condition, the learning-based engagement system utilizes the machine-learning models to generate a multi-step engagement strategy, which describes a sequence of content deliveries that are to be served to a particular client device user (or segment of client device users). Once the multi-step engagement strategies are generated, the learning-based engagement system may also generate visualizations of the strategies that can be output for display.
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公开(公告)号:US20200092593A1
公开(公告)日:2020-03-19
申请号:US16694612
申请日:2019-11-25
Applicant: Adobe Inc.
Inventor: Pankhri Singhai , Sundeep Parsa , Piyush Gupta , Nikaash Puri , Eshita Shah , Balaji Krishnamurthy , Nupur Kumari , Mayank Singh , Akash Rupela
IPC: H04N21/25 , H04N21/258 , G06Q30/02 , H04N21/475 , H04N21/81 , G06N20/00 , H04N21/2668
Abstract: Machine-learning based multi-step engagement strategy generation and visualization is described. Rather than rely heavily on human involvement to create delivery strategies, the described learning-based engagement system generates multi-step engagement strategies by leveraging machine-learning models trained using data describing historical user interactions with content delivered in connection with historical campaigns. Initially, the learning-based engagement system obtains data describing an entry condition and an exit condition for a campaign. Based on the entry and exit condition, the learning-based engagement system utilizes the machine-learning models to generate a multi-step engagement strategy, which describes a sequence of content deliveries that are to be served to a particular client device user (or segment of client device users). Once the multi-step engagement strategies are generated, the learning-based engagement system may also generate visualizations of the strategies that can be output for display.
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公开(公告)号:US11875512B2
公开(公告)日:2024-01-16
申请号:US18148256
申请日:2022-12-29
Applicant: Adobe Inc.
Inventor: Mayank Singh , Balaji Krishnamurthy , Nupur Kumari , Puneet Mangla
IPC: G06T7/00 , G06T7/11 , G06N3/08 , G06N3/04 , G06F18/214 , G06F18/21 , G06V10/774 , G06V10/82
CPC classification number: G06T7/11 , G06F18/214 , G06F18/217 , G06N3/04 , G06N3/08 , G06V10/774 , G06V10/82 , G06T2207/20081 , G06T2207/20084
Abstract: Embodiments are disclosed for training a neural network classifier to learn to more closely align an input image with its attribution map. In particular, in one or more embodiments, the disclosed systems and methods comprise receiving a training image comprising a representation of one or more objects, the training image associated with at least one label for the representation of the one or more objects, generating a perturbed training image based on the training image using a neural network, and training the neural network using the perturbed training image by minimizing a combination of classification loss and attribution loss to learn to align an image with its corresponding attribution map.
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公开(公告)号:US11829880B2
公开(公告)日:2023-11-28
申请号:US18049209
申请日:2022-10-24
Applicant: Adobe Inc.
Inventor: Mayank Singh , Nupur Kumari , Dhruv Khattar , Balaji Krishnamurthy , Abhishek Sinha
CPC classification number: G06N3/08 , G06N20/00 , H04L63/1441
Abstract: The present disclosure relates to systems, methods, and non-transitory computer readable media for generating trained neural network with increased robustness against adversarial attacks by utilizing a dynamic dropout routine and/or a cyclic learning rate routine. For example, the disclosed systems can determine a dynamic dropout probability distribution associated with neurons of a neural network. The disclosed systems can further drop neurons from a neural network based on the dynamic dropout probability distribution to help neurons learn distinguishable features. In addition, the disclosed systems can utilize a cyclic learning rate routine to force copy weights of a copy neural network away from weights of an original neural network without decreasing prediction accuracy to ensure that the decision boundaries learned are different.
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公开(公告)号:US11816696B2
公开(公告)日:2023-11-14
申请号:US17355907
申请日:2021-06-23
Applicant: Adobe Inc.
Inventor: Pankhri Singhai , Sundeep Parsa , Piyush Gupta , Nupur Kumari , Nikaash Puri , Mayank Singh , Eshita Shah , Balaji Krishnamurthy , Akash Rupela
IPC: G06Q30/00 , G06Q30/0242 , G06Q30/0251 , G06N20/00 , G06N5/00 , G05B19/418
CPC classification number: G06Q30/0244 , G06N5/00 , G06N20/00 , G06Q30/0242 , G06Q30/0254 , G06Q30/0255 , G06Q30/0264
Abstract: Machine-learning based multi-step engagement strategy modification is described. Rather than rely heavily on human involvement to manage content delivery over the course of a campaign, the described learning-based engagement system modifies a multi-step engagement strategy, originally created by an engagement-system user, by leveraging machine-learning models. In particular, these leveraged machine-learning models are trained using data describing user interactions with delivered content as those interactions occur over the course of the campaign. Initially, the learning-based engagement system obtains a multi-step engagement strategy created by an engagement-system user. As the multi-step engagement strategy is deployed, the learning-based engagement system randomly adjusts aspects of the sequence of deliveries for some users. Based on data describing the interactions of recipients with deliveries served according to both the user-created and random multi-step engagement strategies, the machine-learning models generate a modified multi-step engagement strategy.
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