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US Patent 11605168 Learning copy space using regression and segmentation neural networks

Patent 11605168 was granted and assigned to Adobe Inc. on March, 2023 by the United States Patent and Trademark Office.

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Is a
Patent
Patent

Patent attributes

Patent Applicant
Adobe Inc.
Adobe Inc.
Current Assignee
Adobe Inc.
Adobe Inc.
Patent Jurisdiction
United States Patent and Trademark Office
United States Patent and Trademark Office
Patent Number
11605168
Date of Patent
March 14, 2023
Patent Application Number
17215067
Date Filed
March 29, 2021
Patent Citations
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US Patent 10402685 Recursive feature elimination method using support vector machines
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US Patent 10430876 Image analysis and identification using machine learning with output estimation
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US Patent 10437878 Identification of a salient portion of an image
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US Patent 10593043 Utilizing deep learning for boundary-aware image segmentation
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US Patent 10679046 Machine learning systems and methods of estimating body shape from images
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US Patent 11361225 Neural network architecture for attention based efficient model adaptation
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US Patent 10977524 Classification with segmentation neural network for image-based content capture
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US Patent 10007863 Logo recognition in images and videos
...
Patent Primary Examiner
‌
Gregory M Desire
CPC Code
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G06T 7/143
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G06T 7/174
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G06K 9/6257
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G06N 3/0454
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G06T 2207/20081
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G06T 7/136

Techniques are disclosed for characterizing and defining the location of a copy space in an image. A methodology implementing the techniques according to an embodiment includes applying a regression convolutional neural network (CNN) to an image. The regression CNN is configured to predict properties of the copy space such as size and type (natural or manufactured). The prediction is conditioned on a determination of the presence of the copy space in the image. The method further includes applying a segmentation CNN to the image. The segmentation CNN is configured to generate one or more pixel-level masks to define the location of copy spaces in the image, whether natural or manufactured, or to define the location of a background region of the image. The segmentation CNN may include a first stage comprising convolutional layers and a second stage comprising pairs of boundary refinement layers and bilinear up-sampling layers.

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