Patents by Inventor Suma Mani Kuriakose

Suma Mani Kuriakose has filed for patents to protect the following inventions. This listing includes patent applications that are pending as well as patents that have already been granted by the United States Patent and Trademark Office (USPTO).

  • Patent number: 11941771
    Abstract: Implementations are directed to processing a content object model through a ML model to provide a set of base content feature representations, processing a style object model through the ML model to provide sets of base style feature representations, executing iterations including: generating, by the ML model, sets of stylized feature representations for an initial stylized object model, the initial stylized object model having one or more adjusted parameters relative to a previous iteration, determining a total loss based on the sets of stylized feature representations, the set of base content feature representations, and the sets of base style feature representations, and determining that the total loss is non-optimized, and in response, initiating a next iteration, executing an iteration of the iterative process, the iteration including determining that the total loss is optimized, and in response providing the initial stylized object model as output of the iterative process.
    Type: Grant
    Filed: February 3, 2021
    Date of Patent: March 26, 2024
    Assignee: Accenture Global Solutions Limited
    Inventors: Kumar Abhinav, Alpana A. Dubey, Suma Mani Kuriakose, Devasish Mahato
  • Publication number: 20240091948
    Abstract: In some implementations, a robot host may receive a video associated with assembly using a plurality of sub-objects. The robot host may determine spatio-temporal features based on the video and may identify a plurality of actions represented in the video based on the spatio-temporal features. The robot host may map the plurality of actions to the plurality of sub-objects to generate an assembly plan and may combine output from a point cloud model and output from a color embedding model to generate a plurality of sets of coordinates corresponding to the plurality of sub-objects. The robot host may perform object segmentation to estimate a plurality of grip points and a plurality of widths corresponding to the plurality of sub-objects. Accordingly, the robot host may generate instructions, for robotic machines, based on the assembly plan, the plurality of sets of coordinates, the plurality of grip points, and the plurality of widths.
    Type: Application
    Filed: September 21, 2022
    Publication date: March 21, 2024
    Inventors: Kumar ABHINAV, Alpana DUBEY, Shubhashis SENGUPTA, Suma MANI KURIAKOSE, Priyanshu Abhijit BARUA, Piyush GOENKA
  • Patent number: 11704802
    Abstract: Implementations are directed to receiving a target object model representative of a target object, receiving a source object model representative of a source object, defining a set of target segments and a set of source segments using a segmentation machine learning (ML) model, for each target segment and source segment pair in a set of target segment and source segment pairs, generating a compatibility score representing a degree of similarity between a target segment and a source segment, the compatibility score calculated based on global feature representations of each of the target segment and the source segment, each global feature representation determined from a ML model, selecting a source segment for style transfer based on compatibility scores, and merging the source segment into the target object model to replace a respective target segment within the target object model and providing a stylized target object model.
    Type: Grant
    Filed: November 6, 2020
    Date of Patent: July 18, 2023
    Assignee: Accenture Global Solutions Limited
    Inventors: Kumar Abhinav, Suma Mani Kuriakose, Alpana A. Dubey
  • Publication number: 20230195088
    Abstract: Aspects of the present disclosure provide systems, methods, and computer-readable storage media that support mechanisms for generating a feasible assembly plan for a product based on data analytics. In aspects, information on components of a product is obtained from one or more product models (e.g., a three-dimensional (3D) computer aided design (CAD) model) that define the individual components of the product. The individual component information may be used to represent the assembly of the product as an assembly graph, in which each node of the assembly graph represents one of the components of the product to be assembled. The assembly graph is passed through a set of data analytics modules to generate the feasible assembly plan, or assembly sequence, as a series of sequential contact predictions, wherein each contact prediction identifies a component to be connected to one or more other components of the product.
    Type: Application
    Filed: December 20, 2021
    Publication date: June 22, 2023
    Inventors: Kumar Abhinav, Alpana Dubey, Suma Mani Kuriakose, Bharat Ladrecha
  • Publication number: 20220245908
    Abstract: Implementations are directed to processing a content object model through a ML model to provide a set of base content feature representations, processing a style object model through the ML model to provide sets of base style feature representations, executing iterations including: generating, by the ML model, sets of stylized feature representations for an initial stylized object model, the initial stylized object model having one or more adjusted parameters relative to a previous iteration, determining a total loss based on the sets of stylized feature representations, the set of base content feature representations, and the sets of base style feature representations, and determining that the total loss is non-optimized, and in response, initiating a next iteration, executing an iteration of the iterative process, the iteration including determining that the total loss is optimized, and in response providing the initial stylized object model as output of the iterative process.
    Type: Application
    Filed: February 3, 2021
    Publication date: August 4, 2022
    Inventors: Kumar Abhinav, Alpana A. Dubey, Suma Mani Kuriakose, Devasish Mahato
  • Publication number: 20220245510
    Abstract: Implementations are directed to processing a content object model through a ML model to provide a set of base content feature representations, processing a style object model through the ML model to provide a set of base style feature representations, executing iterations including: generating, by the ML model, a set of stylized feature representations for an initial stylized object model, the initial stylized object model having one or more adjusted parameters relative to a previous iteration, determining a total loss based on the set of stylized feature representations, the set of base content feature representations, and the sets of base style feature representations, and determining that the total loss is non-optimized, and in response, initiating a next iteration, executing an iteration including determining that the total loss is optimized, and in response providing the initial stylized object model as output of the iterative process.
    Type: Application
    Filed: February 3, 2021
    Publication date: August 4, 2022
    Inventors: Kumar Abhinav, Alpana A. Dubey, Suma Mani Kuriakose, Devasish Mahato
  • Patent number: 11321887
    Abstract: Examples of article designing are described herein. In an example, image data, margin data, and sales data corresponding to a plurality of articles may be obtained. The obtained data may be analyzed to identify a first article image of a first article and a second article image of a second article. The first article image is integrated with the second article image, based on an article attribute to generate a transformed article image. The article attribute may be an attribute having a maximum likelihood of making the article popular. The transformed article image may be filtered based on predefined filtering rules to obtain a curated article design image. The curated article design image is assessed to generate a design score indicative of a popularity and/or a sellability of an article, and a design of the article may be selected for a post design selection process, based on the design score.
    Type: Grant
    Filed: December 23, 2019
    Date of Patent: May 3, 2022
    Assignee: ACCENTURE GLOBAL SOLUTIONS LIMITED
    Inventors: Nitish Bhardwaj, Sakshi Jain, Kumar Abhinav, Suma Mani Kuriakose, Veenu Arora, Alpana Dubey, Dhruv Bajpai
  • Patent number: 11244484
    Abstract: Implementations of the present disclosure include generating, by a design generation assistant, a design image representing a design subject, the design subject having one or more regulations applicable thereto, querying, by a regulation assistant, an answer extractor to provide a query result based on a query, the answer extractor including at least one deep learning model that processes the query to provide the query result, the query being descriptive of at least a portion of the design subject, the query result being representative of at least one regulation applicable to the design subject, and displaying, within a graphical user interface (GUI), the query result.
    Type: Grant
    Filed: April 23, 2019
    Date of Patent: February 8, 2022
    Assignee: Accenture Global Solutions Limited
    Inventors: Alpana A. Dubey, Mary Elizabeth Hamilton, Manish Mehta, Suma Mani Kuriakose, Nitish A. Bhardwaj
  • Publication number: 20210142478
    Abstract: Implementations are directed to receiving a target object model representative of a target object, receiving a source object model representative of a source object, defining a set of target segments and a set of source segments using a segmentation machine learning (ML) model, for each target segment and source segment pair in a set of target segment and source segment pairs, generating a compatibility score representing a degree of similarity between a target segment and a source segment, the compatibility score calculated based on global feature representations of each of the target segment and the source segment, each global feature representation determined from a ML model, selecting a source segment for style transfer based on compatibility scores, and merging the source segment into the target object model to replace a respective target segment within the target object model and providing a stylized target object model.
    Type: Application
    Filed: November 6, 2020
    Publication date: May 13, 2021
    Inventors: Kumar Abhinav, Suma Mani Kuriakose, Alpana A. Dubey
  • Patent number: 10950021
    Abstract: Implementations of the present disclosure include receiving a content image depicting a first set of objects and a style image depicting a second set of objects and a collective style, processing, by the design generation assistant, the content image using one or more ML models to determine a first sub-set of objects, to which a style is to be transferred from the style image, the first sub-set of objects including fewer objects than the first set of objects, processing, by the design generation assistant, the style image using the ML models to determine a second sub-set of objects, from which the style is to be transferred, and generating, by the design generation assistant, an output image with stylized objects, each stylized object including an object in the first sub-set of objects having the style of the one or more objects in the second sub-set of objects.
    Type: Grant
    Filed: April 23, 2019
    Date of Patent: March 16, 2021
    Assignee: Accenture Global Solutions Limited
    Inventors: Alpana A. Dubey, Mary Elizabeth Hamilton, Manish Mehta, Suma Mani Kuriakose, Nitish A. Bhardwaj, Kumar Abhinav
  • Publication number: 20200202598
    Abstract: Examples of article designing are described herein. In an example, image data, margin data, and sales data corresponding to a plurality of articles may be obtained. The obtained data may be analyzed to identify a first article image of a first article and a second article image of a second article. The first article image is integrated with the second article image, based on an article attribute to generate a transformed article image. The article attribute may be an attribute having a maximum likelihood of making the article popular. The transformed article image may be filtered based on predefined filtering rules to obtain a curated article design image. The curated article design image is assessed to generate a design score indicative of a popularity and/or a sellability of an article, and a design of the article may be selected for a post design selection process, based on the design score.
    Type: Application
    Filed: December 23, 2019
    Publication date: June 25, 2020
    Applicant: ACCENTURE GLOBAL SOLUTIONS LIMITED
    Inventors: Nitish BHARDWAJ, Sakshi Jain, Kumar Abhinav, Suma Mani Kuriakose, Veenu Arora, Alpana Dubey, Dhruv Bajpai
  • Publication number: 20190325088
    Abstract: Implementations of the present disclosure include generating, by a design generation assistant, a design image representing a design subject, the design subject having one or more regulations applicable thereto, querying, by a regulation assistant, an answer extractor to provide a query result based on a query, the answer extractor including at least one deep learning model that processes the query to provide the query result, the query being descriptive of at least a portion of the design subject, the query result being representative of at least one regulation applicable to the design subject, and displaying, within a graphical user interface (GUI), the query result.
    Type: Application
    Filed: April 23, 2019
    Publication date: October 24, 2019
    Inventors: Alpana A. Dubey, Mary Elizabeth Hamilton, Manish Mehta, Suma Mani Kuriakose, Nitish A. Bhardwaj
  • Publication number: 20190325628
    Abstract: Implementations of the present disclosure include receiving a content image depicting a first set of objects and a style image depicting a second set of objects and a collective style, processing, by the design generation assistant, the content image using one or more ML models to determine a first sub-set of objects, to which a style is to be transferred from the style image, the first sub-set of objects including fewer objects than the first set of objects, processing, by the design generation assistant, the style image using the ML models to determine a second sub-set of objects, from which the style is to be transferred, and generating, by the design generation assistant, an output image with stylized objects, each stylized object including an object in the first sub-set of objects having the style of the one or more objects in the second sub-set of objects.
    Type: Application
    Filed: April 23, 2019
    Publication date: October 24, 2019
    Inventors: Alpana A. Dubey, Mary Elizabeth Hamilton, Manish Mehta, Suma Mani Kuriakose, Nitish A. Bhardwaj, Kumar Abhinav
  • Patent number: 10445671
    Abstract: A system may receive task information identifying tasks to be performed by workers of one or more crowds. The system may obtain worker information describing the workers. The system may determine task completion probabilities based on the task information and the worker information. A task completion probability may identify a likelihood that a particular crowd will complete a particular task. The system may determine crowd recommendation information based on the task completion probabilities, the task information, and/or the worker information. The crowd recommendation information may identify recommended crowds to which a task is recommended to be provided. The system may output the crowd recommendation information and/or the worker information to permit selection of the crowds to perform the task.
    Type: Grant
    Filed: October 21, 2015
    Date of Patent: October 15, 2019
    Assignee: Accenture Global Services Limited
    Inventors: Alpana Dubey, Gurdeep Virdi, Anurag Dwarakanath, Alex Kass, Sakshi Taneja, Suma Mani Kuriakose
  • Publication number: 20170061357
    Abstract: A system may receive task information identifying tasks to be performed by workers of one or more crowds. The system may obtain worker information describing the workers. The system may determine task completion probabilities based on the task information and the worker information. A task completion probability may identify a likelihood that a particular crowd will complete a particular task. The system may determine crowd recommendation information based on the task completion probabilities, the task information, and/or the worker information. The crowd recommendation information may identify recommended crowds to which a task is recommended to be provided. The system may output the crowd recommendation information and/or the worker information to permit selection of the crowds to perform the task.
    Type: Application
    Filed: October 21, 2015
    Publication date: March 2, 2017
    Inventors: Alpana DUBEY, Gurdeep Virdi, Anurag Dwarakanath, Alex Kass, Sakshi Taneja, Suma Mani Kuriakose