Patents by Inventor Shubh Gupta
Shubh Gupta 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).
-
Publication number: 20230112471Abstract: A system for providing a gaming platform for a shared ride hail trip includes a processor programmed to determine a user game objective for a user requesting the shared ride hail trip, determine a ride hail provider objective associated with the shared ride hail trip, generate a ride hail route option based on the user game objective and the ride hail provider objective, and award game points based on user actions such as selecting routes that use transportation modes that mitigate deviation from faster roads or longer routes, or reduce need for operation of a larger vehicle during peak demand times. The system also awards points for user route choices that supports other passengers’ needs and goals such as time constraints, physical limitations, or conservation of time or vehicle emissions. The system may encourage user behaviors that enrich user experience, and achieve user physical fitness and societal goals.Type: ApplicationFiled: October 8, 2021Publication date: April 13, 2023Applicant: Ford Global Technologies, LLCInventors: Dominique Meroux, Sandhya Bhaskar, Zhilai Shen, Divya Juneja, Shubh Gupta, Feng Jin
-
Patent number: 11263470Abstract: A content saliency network is a machine-learned neural network that predicts the saliency of elements of a content item. The content saliency network may be used in a method that includes determining a set of elements in draft content and computing a first pixel-level vector for the content. The method may also include, for each element in the set of elements, computing a vector of simple features for the element, the simple features being computed from attributes of the element, computing a second pixel-level vector for the element, computing a third pixel-level vector for an intermediate context of the element, and providing the vectors to the content saliency network. The content saliency network provides a saliency score for the element. The method further includes generating an element-level saliency map of the content using the respective saliency scores for the set of elements and providing the saliency map to a requestor.Type: GrantFiled: November 15, 2017Date of Patent: March 1, 2022Assignee: ADOBE INC.Inventors: Prakhar Gupta, Shubh Gupta, Ritwik Sinha, Sourav Pal, Ajaykrishnan Jayagopal
-
Publication number: 20210264284Abstract: The present disclosure discloses a system and a method. In an example implantation, the system and the method can generate, at a discriminator, a plurality of image patches from an image, determine a plurality of routing coefficients within a capsule network based on the plurality of image patches, generate a prediction indicating whether the image is synthetic or sourced from a real distribution based on the plurality of routing coefficients, and update one or more weights of a generator based on the prediction, wherein the generator is connected to the discriminator.Type: ApplicationFiled: February 25, 2020Publication date: August 26, 2021Applicant: Ford Global Technologies, LLCInventors: Shubh Gupta, Nikita Jaipuria, Praveen Narayanan, Vidya Nariyambut Murali
-
Patent number: 11100372Abstract: The present disclosure discloses a system and a method. The system and the method generate, via a deep neural network, a first synthetic image based on a simulated image, generate a segmentation mask based on the synthetic image, compare the segmentation mask with a ground truth mask of the synthetic image, update the deep neural network based on the comparison, and generate, via the updated deep neural network, a second synthetic image based on the simulated image.Type: GrantFiled: November 8, 2019Date of Patent: August 24, 2021Assignee: Ford Global Technologies, LLCInventors: Nikita Jaipuria, Rohan Bhasin, Shubh Gupta, Gautham Sholingar
-
Publication number: 20210142116Abstract: The present disclosure discloses a system and a method. The system and the method generate, via a deep neural network, a first synthetic image based on a simulated image, generate a segmentation mask based on the synthetic image, compare the segmentation mask with a ground truth mask of the synthetic image, update the deep neural network based on the comparison, and generate, via the updated deep neural network, a second synthetic image based on the simulated image.Type: ApplicationFiled: November 8, 2019Publication date: May 13, 2021Applicant: Ford Global Technologies, LLCInventors: Nikita Jaipuria, Rohan Bhasin, Shubh Gupta, Gautham Sholingar
-
Patent number: 10664999Abstract: A content saliency network is a machine-learned neural network that predicts the saliency of elements of a content item. The content saliency network may be used in a method that includes determining a set of elements in a UI and computing a first context vector for the content. The method may also include, for each element in the set of elements, computing a vector of simple features for the element, the simple features being computed from attributes of the element, computing a second context vector for the element, computing a third context vector for an intermediate context of the element, and providing the vectors to the content saliency network. The content saliency network provides a saliency score for the element. The method further includes generating an element-level saliency map of the content using the respective saliency scores for the set of elements and providing the saliency map to a requestor.Type: GrantFiled: February 15, 2018Date of Patent: May 26, 2020Assignee: Adobe Inc.Inventors: Prakhar Gupta, Sourav Pal, Shubh Gupta, Ritwik Sinha, Ajaykrishnan Jayagopal
-
Publication number: 20190251707Abstract: A content saliency network is a machine-learned neural network that predicts the saliency of elements of a content item. The content saliency network may be used in a method that includes determining a set of elements in a UI and computing a first context vector for the content. The method may also include, for each element in the set of elements, computing a vector of simple features for the element, the simple features being computed from attributes of the element, computing a second context vector for the element, computing a third context vector for an intermediate context of the element, and providing the vectors to the content saliency network. The content saliency network provides a saliency score for the element. The method further includes generating an element-level saliency map of the content using the respective saliency scores for the set of elements and providing the saliency map to a requestor.Type: ApplicationFiled: February 15, 2018Publication date: August 15, 2019Inventors: Prakhar Gupta, Sourav Pal, Shubh Gupta, Ritwik Sinha, Ajaykrishnan Jayagopal
-
Publication number: 20190147288Abstract: A content saliency network is a machine-learned neural network that predicts the saliency of elements of a content item. The content saliency network may be used in a method that includes determining a set of elements in draft content and computing a first pixel-level vector for the content. The method may also include, for each element in the set of elements, computing a vector of simple features for the element, the simple features being computed from attributes of the element, computing a second pixel-level vector for the element, computing a third pixel-level vector for an intermediate context of the element, and providing the vectors to the content saliency network. The content saliency network provides a saliency score for the element. The method further includes generating an element-level saliency map of the content using the respective saliency scores for the set of elements and providing the saliency map to a requestor.Type: ApplicationFiled: November 15, 2017Publication date: May 16, 2019Inventors: Prakhar Gupta, Shubh Gupta, Ritwik Sinha, Sourav Pal, Ajaykrishnan Jayagopal