-
公开(公告)号:US12229399B2
公开(公告)日:2025-02-18
申请号:US18420444
申请日:2024-01-23
Applicant: Adobe Inc.
Inventor: Christopher Alan Tensmeyer , Rajiv Jain , Curtis Michael Wigington , Brian Lynn Price , Brian Lafayette Davis
IPC: G06F3/048 , G06F3/04883 , G06N3/045 , G06N3/08 , G06V10/44 , G06V10/82 , G06V30/226 , G06V30/228 , G06V30/32
Abstract: Techniques are provided for generating a digital image of simulated handwriting using an encoder-decoder neural network trained on images of natural handwriting samples. The simulated handwriting image can be generated based on a style of a handwriting sample and a variable length coded text input. The style represents visually distinctive characteristics of the handwriting sample, such as the shape, size, slope, and spacing of the letters, characters, or other markings in the handwriting sample. The resulting simulated handwriting image can include the text input rendered in the style of the handwriting sample. The distinctive visual appearance of the letters or words in the simulated handwriting image mimics the visual appearance of the letters or words in the handwriting sample image, whether the letters or words in the simulated handwriting image are the same as in the handwriting sample image or different from those in the handwriting sample image.
-
公开(公告)号:US20240168625A1
公开(公告)日:2024-05-23
申请号:US18420444
申请日:2024-01-23
Applicant: Adobe Inc.
Inventor: Christopher Alan Tensmeyer , Rajiv Jain , Curtis Michael Wigington , Brian Lynn Price , Brian Lafayette Davis
IPC: G06F3/04883 , G06N3/045 , G06N3/08 , G06V10/44 , G06V10/82 , G06V30/226 , G06V30/228 , G06V30/32
CPC classification number: G06F3/04883 , G06N3/045 , G06N3/08 , G06V10/454 , G06V10/82 , G06V30/2264 , G06V30/2276 , G06V30/228 , G06V30/347
Abstract: Techniques are provided for generating a digital image of simulated handwriting using an encoder-decoder neural network trained on images of natural handwriting samples. The simulated handwriting image can be generated based on a style of a handwriting sample and a variable length coded text input. The style represents visually distinctive characteristics of the handwriting sample, such as the shape, size, slope, and spacing of the letters, characters, or other markings in the handwriting sample. The resulting simulated handwriting image can include the text input rendered in the style of the handwriting sample. The distinctive visual appearance of the letters or words in the simulated handwriting image mimics the visual appearance of the letters or words in the handwriting sample image, whether the letters or words in the simulated handwriting image are the same as in the handwriting sample image or different from those in the handwriting sample image.
-
公开(公告)号:US20210166013A1
公开(公告)日:2021-06-03
申请号:US16701586
申请日:2019-12-03
Applicant: ADOBE INC.
Inventor: Christopher Alan Tensmeyer , Rajiv Jain , Curtis Michael Wigington , Brian Lynn Price , Brian Lafayette Davis
IPC: G06K9/00 , G06F3/0488 , G06N3/04 , G06N3/08 , G06K9/22
Abstract: Techniques are provided for generating a digital image of simulated handwriting using an encoder-decoder neural network trained on images of natural handwriting samples. The simulated handwriting image can be generated based on a style of a handwriting sample and a variable length coded text input. The style represents visually distinctive characteristics of the handwriting sample, such as the shape, size, slope, and spacing of the letters, characters, or other markings in the handwriting sample. The resulting simulated handwriting image can include the text input rendered in the style of the handwriting sample. The distinctive visual appearance of the letters or words in the simulated handwriting image mimics the visual appearance of the letters or words in the handwriting sample image, whether the letters or words in the simulated handwriting image are the same as in the handwriting sample image or different from those in the handwriting sample image.
-
公开(公告)号:US20200151444A1
公开(公告)日:2020-05-14
申请号:US16191158
申请日:2018-11-14
Applicant: Adobe Inc.
Inventor: Brian Lynn Price , Vlad Ion Morariu , Scott David Cohen , Christopher Alan Tensmeyer
Abstract: A table layout determination system implemented on a computing device obtains an image of a table having multiple cells. The table layout determination system includes a row prediction machine learning system that generates, for each of multiple rows of pixels in the image of the table, a probability of the row being a row separator, and a column prediction machine learning system generates, for each of multiple columns of pixels in the image of the table, a probability of the column being a column separator. An inference system uses these probabilities of the rows being row separators and the columns being column separators to identify the row separators and column separators for the table. These row separators and column separators are the layout of the table.
-
公开(公告)号:US11978272B2
公开(公告)日:2024-05-07
申请号:US17883811
申请日:2022-08-09
Applicant: Adobe Inc.
Inventor: Kai Li , Christopher Alan Tensmeyer , Curtis Michael Wigington , Handong Zhao , Nikolaos Barmpalios , Tong Sun , Varun Manjunatha , Vlad Ion Morariu
IPC: G06V30/413 , G06F17/18 , G06F18/213 , G06F18/2415 , G06N3/047 , G06N3/084 , G06N20/00 , G06N20/10 , G06V10/25 , G06V10/82 , G06V20/20 , G06V30/19 , G06V30/414
CPC classification number: G06V30/413 , G06F17/18 , G06F18/213 , G06F18/2415 , G06N3/047 , G06N3/084 , G06N20/00 , G06N20/10 , G06V10/25 , G06V10/82 , G06V20/20 , G06V30/19173 , G06V30/414
Abstract: Adapting a machine learning model to process data that differs from training data used to configure the model for a specified objective is described. A domain adaptation system trains the model to process new domain data that differs from a training data domain by using the model to generate a feature representation for the new domain data, which describes different content types included in the new domain data. The domain adaptation system then generates a probability distribution for each discrete region of the new domain data, which describes a likelihood of the region including different content described by the feature representation. The probability distribution is compared to ground truth information for the new domain data to determine a loss function, which is used to refine model parameters. After determining that model outputs achieve a threshold similarity to the ground truth information, the model is output as a domain-agnostic model.
-
公开(公告)号:US11922110B2
公开(公告)日:2024-03-05
申请号:US17535067
申请日:2021-11-24
Applicant: Adobe Inc.
Inventor: Vlad Ion Morariu , Yuexi Chen , Christopher Alan Tensmeyer , Zhicheng Liu , Lars Niklas Emanuel Elmqvist
IPC: G06F40/00 , G06F40/106 , G06F40/117 , G06F40/166
CPC classification number: G06F40/106 , G06F40/117 , G06F40/166
Abstract: Systems and techniques for generating responsive documents are described. Digital content is organized into a structure that defines how content is presented when a document is displayed by a computing device. To generate the responsive document, relationships are defined among different digital content objects, such as groups of content objects to be presented together and content objects that are to be presented as alternatives of one another. Responsive patterns are assigned to grouped content objects, where each responsive pattern defines different layout configurations for displaying grouped content objects based on computing device display characteristics. In some implementations, multiple responsive patterns are assigned to a single content group and individual responsive patterns are associated with activation ranges for display characteristics that activate the responsive pattern. For groups of digital content objects that are assigned multiple responsive patterns, responsive patterns are prioritized to create a hierarchy dictating display of the responsive document.
-
公开(公告)号:US11899927B2
公开(公告)日:2024-02-13
申请号:US17648718
申请日:2022-01-24
Applicant: Adobe Inc.
Inventor: Christopher Alan Tensmeyer , Rajiv Jain , Curtis Michael Wigington , Brian Lynn Price , Brian Lafayette Davis
IPC: G06K9/00 , G06F3/04883 , G06N3/08 , G06V30/32 , G06V30/228 , G06V30/226 , G06N3/045 , G06V10/82 , G06V10/44
CPC classification number: G06F3/04883 , G06N3/045 , G06N3/08 , G06V10/454 , G06V10/82 , G06V30/228 , G06V30/2264 , G06V30/2276 , G06V30/347
Abstract: Techniques are provided for generating a digital image of simulated handwriting using an encoder-decoder neural network trained on images of natural handwriting samples. The simulated handwriting image can be generated based on a style of a handwriting sample and a variable length coded text input. The style represents visually distinctive characteristics of the handwriting sample, such as the shape, size, slope, and spacing of the letters, characters, or other markings in the handwriting sample. The resulting simulated handwriting image can include the text input rendered in the style of the handwriting sample. The distinctive visual appearance of the letters or words in the simulated handwriting image mimics the visual appearance of the letters or words in the handwriting sample image, whether the letters or words in the simulated handwriting image are the same as in the handwriting sample image or different from those in the handwriting sample image.
-
公开(公告)号:US11443193B2
公开(公告)日:2022-09-13
申请号:US16865605
申请日:2020-05-04
Applicant: Adobe Inc.
Inventor: Kai Li , Christopher Alan Tensmeyer , Curtis Michael Wigington , Handong Zhao , Nikolaos Barmpalios , Tong Sun , Varun Manjunatha , Vlad Ion Morariu
IPC: G06K9/00 , G06N3/08 , G06N20/10 , G06K9/62 , G06F17/18 , G06V10/75 , G06V20/20 , G06V30/413 , G06V30/414
Abstract: Adapting a machine learning model to process data that differs from training data used to configure the model for a specified objective is described. A domain adaptation system trains the model to process new domain data that differs from a training data domain by using the model to generate a feature representation for the new domain data, which describes different content types included in the new domain data. The domain adaptation system then generates a probability distribution for each discrete region of the new domain data, which describes a likelihood of the region including different content described by the feature representation. The probability distribution is compared to ground truth information for the new domain data to determine a loss function, which is used to refine model parameters. After determining that model outputs achieve a threshold similarity to the ground truth information, the model is output as a domain-agnostic model.
-
公开(公告)号:US20240386621A1
公开(公告)日:2024-11-21
申请号:US18318921
申请日:2023-05-17
Applicant: Adobe Inc.
Inventor: Ruiyi Zhang , Yufan Zhou , Tong Yu , Tong Sun , Rajiv Jain , Jiuxiang Gu , Christopher Alan Tensmeyer
IPC: G06T11/00 , G06F40/40 , G06V10/74 , G06V10/774 , G06V10/82
Abstract: Techniques and systems for training and/or implementing a text-to-image generation model are provided. A pre-trained multimodal model is leveraged for avoiding slower and more labor-intensive methodologies for training a text-to-image generation model. Accordingly, images without associated text (i.e., bare images) are provided to the pre-trained multimodal model so that it can produce generated text-image pairs. The generated text-image pairs are provided to the text-to-image generation model for training and/or implementing the text-to-image generation model.
-
公开(公告)号:US20230230406A1
公开(公告)日:2023-07-20
申请号:US17577605
申请日:2022-01-18
Applicant: ADOBE INC.
Inventor: Ashutosh Mehra , Christopher Alan Tensmeyer , Vlad Ion Morariu , Jiuxiang Gu
IPC: G06V30/412 , G06N20/20 , G06F40/174
CPC classification number: G06V30/412 , G06N20/20 , G06F40/174
Abstract: Methods and systems are provided for facilitating identification of fillable regions and/or data associated therewith. In embodiments, a candidate fillable region indicating a region in a form that is a candidate for being fillable is obtained. Textual context indicating text from the form and spatial context indicating positions of the text within the form are also obtained. Fillable region data associated with the candidate fillable region is generated, via a machine learning model, using the candidate fillable region, the textual context, and the spatial context. Thereafter, a fillable form is generated using the fillable region data, the fillable form having one or more fillable regions for accepting input.
-
-
-
-
-
-
-
-
-