Patents by Inventor Dylan Stark

Dylan Stark 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: 12475513
    Abstract: Intelligent prediction systems and methods of use to analyze one or more uploaded images to generate one or more processed images via a data analytics module, determine by a neural network model a point of view and angle of view determination for each processed image, retrieve a claim identifier and associated total loss score, and generate an automated predicted total loss determination based on the total loss score and the one or more processed images from the data analytics module.
    Type: Grant
    Filed: February 18, 2021
    Date of Patent: November 18, 2025
    Assignee: Allstate Insurance Company
    Inventors: Dylan Stark, Jean Utke, Michael Bradley Henry, Patrick Figliozzi, Yusuf Mansour, Ann Rebecca Wei, Anna Varentsova, Chris Jonas, Cory Campagna
  • Publication number: 20250166155
    Abstract: Aspects of the disclosure relate to using computer vision methods for asset evaluation. A computing platform may receive historical images of a plurality of properties and corresponding historical inspection results. Using the historical images and historical inspection results, the computing platform may train a roof waiver model (which may be a computer vision model) to output inspection prediction information directly from an image. The computing platform may receive a new image corresponding to a particular residential property. Using the roof waiver model, the computing platform may analyze the new image to output of a likelihood of passing inspection. The computing platform may send, to a user device and based on the likelihood of passing inspection, inspection information indicating whether or not a physical inspection should be performed and directing the user device to display the inspection information, which may cause the user device to display the inspection information.
    Type: Application
    Filed: August 27, 2024
    Publication date: May 22, 2025
    Applicant: Allstate Insurance Company
    Inventors: Deborah-Anna Reznek, Adam Sturt, Jeremy Werner, Adam Austin, Amber Parsons, Xiaolan Wu, Ryan Rosenberg, Lizette Lemus Gonzalez, Weizhou Wang, Stephanie Wong, Charles Cox, Jean Utke, Yusuf Mansour, Tia Miceli, Lakshmi Prabha Nattamai Sekar, Meg G. Walters, Dylan Stark, Emily Pavey
  • Patent number: 12106462
    Abstract: Aspects of the disclosure relate to using computer vision methods for asset evaluation. A computing platform may receive historical images of a plurality of properties and corresponding historical inspection results. Using the historical images and historical inspection results, the computing platform may train a roof waiver model (which may be a computer vision model) to output inspection prediction information directly from an image. The computing platform may receive a new image corresponding to a particular residential property. Using the roof waiver model, the computing platform may analyze the new image to output of a likelihood of passing inspection. The computing platform may send, to a user device and based on the likelihood of passing inspection, inspection information indicating whether or not a physical inspection should be performed and directing the user device to display the inspection information, which may cause the user device to display the inspection information.
    Type: Grant
    Filed: April 1, 2021
    Date of Patent: October 1, 2024
    Assignee: Allstate Insurance Company
    Inventors: Deborah-Anna Reznek, Adam Sturt, Jeremy Werner, Adam Austin, Amber Parsons, Xiaolan Wu, Ryan Rosenberg, Lizette Lemus Gonzalez, Weizhou Wang, Stephanie Wong, Charles Cox, Jean Utke, Yusuf Mansour, Tia Miceli, Lakshmi Prabha Nattamai Sekar, Meg G. Walters, Dylan Stark, Emily Pavey
  • Patent number: 12051114
    Abstract: Aspects of the disclosure relate to using computer vision methods to forecast damage. A computing platform may receive historical images comprising aerial images of residential properties and historical loss data corresponding to the residential properties. Using the historical images and the historical loss data, the computing platform may train a computer vision model, which may configure the computer vision model to output loss prediction information directly from an image. The computing platform may receive a new image corresponding to a particular residential property, and may analyze the new image, using the computer vision model, which may directly result in a likelihood of damage score. Based on the likelihood of damage score, the computing platform may send likelihood of damage information and one or more commands directing a user device to display the likelihood of damage information, which may cause the user device to display the likelihood of damage information.
    Type: Grant
    Filed: April 1, 2021
    Date of Patent: July 30, 2024
    Assignee: Allstate Insurance Company
    Inventors: Deborah-Anna Reznek, Adam Sturt, Jeremy Werner, Adam Austin, Amber Parsons, Xiaolan Wu, Ryan Rosenberg, Lizette Lemus Gonzalez, Weizhou Wang, Stephanie Wong, Charles Cox, Jean Utke, Yusuf Mansour, Tia Miceli, Lakshmi Prabha Nattamai Sekar, Meg G. Walters, Dylan Stark, Emily Pavey
  • Publication number: 20220318980
    Abstract: Aspects of the disclosure relate to using computer vision methods for asset evaluation. A computing platform may receive historical images of a plurality of properties and corresponding historical inspection results. Using the historical images and historical inspection results, the computing platform may train a roof waiver model (which may be a computer vision model) to output inspection prediction information directly from an image. The computing platform may receive a new image corresponding to a particular residential property. Using the roof waiver model, the computing platform may analyze the new image to output of a likelihood of passing inspection. The computing platform may send, to a user device and based on the likelihood of passing inspection, inspection information indicating whether or not a physical inspection should be performed and directing the user device to display the inspection information, which may cause the user device to display the inspection information.
    Type: Application
    Filed: April 1, 2021
    Publication date: October 6, 2022
    Inventors: Deborah-Anna Reznek, Adam Sturt, Jeremy Werner, Adam Austin, Amber Parsons, Xiaolan Wu, Ryan Rosenberg, Lizette Lemus Gonzalez, Weizhou Wang, Stephanie Wong, Charles Cox, Jean Utke, Yusuf Mansour, Tia Miceli, Lakshmi Prabha Nattamai Sekar, Meg G. Walters, Dylan Stark, Emily Pavey
  • Publication number: 20220318916
    Abstract: Aspects of the disclosure relate to using computer vision methods to forecast damage. A computing platform may receive historical images comprising aerial images of residential properties and historical loss data corresponding to the residential properties. Using the historical images and the historical loss data, the computing platform may train a computer vision model, which may configure the computer vision model to output loss prediction information directly from an image. The computing platform may receive a new image corresponding to a particular residential property, and may analyze the new image, using the computer vision model, which may directly result in a likelihood of damage score. Based on the likelihood of damage score, the computing platform may send likelihood of damage information and one or more commands directing a user device to display the likelihood of damage information, which may cause the user device to display the likelihood of damage information.
    Type: Application
    Filed: April 1, 2021
    Publication date: October 6, 2022
    Inventors: Deborah-Anna Reznek, Adam Sturt, Jeremy Werner, Adam Austin, Amber Parsons, Xiaolan Wu, Ryan Rosenberg, Lizette Lemus Gonzalez, Weizhou Wang, Stephanie Wong, Charles Cox, Jean Utke, Yusuf Mansour, Tia Miceli, Lakshmi Prabha Nattamai Sekar, Meg G. Walters, Dylan Stark, Emily Pavey